281 results
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2. An evolutionary game-theoretic approach to study the technological transformation of the industrial sector toward renewable electricity procurement: A case study of Iran.
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Jamali, Mohammad-Bagher, Rasti-Barzoki, Morteza, Khosroshahi, Hossein, and Altmann, Jörn
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ELECTRICITY , *ELECTRIC power consumption , *DENTAL cements , *CEMENT industries , *PAPER industry , *MANUFACTURING industries - Abstract
[Display omitted] • We considered two strategies of electricity purchasing for industries: TB and NTB. • We applied an evolutionary game theory approach to examine industries' behavior. • We studied three real-world cases of Iran: cement, steel, and paper industries. • We mainly focused on finding the population ratio convergence to TB/NTB strategies. Electricity shortages severely affect the production chain and cause damage to manufacturing productivity. This study examines how the industrial sector can transform technological innovations toward renewable electricity procurement. We consider two strategies for manufacturers: purchasing electricity from a technology-based supplier (TB strategy) and purchasing it from a non-technology-based supplier (NTB strategy). Manufacturers need technological transformation, such as upgrading their electrical system toward digitalization to manage power outages. We examine manufacturers' pricing decisions and their long-term behavior to adopt the TB and NTB strategies using a one-population evolutionary game-theoretic approach. Also, we investigate the majority of manufacturers' population that eventually choose the best strategy. Moreover, we apply the present model to real-world cases of Iran's cement, steel, and paper industries. The results show that the evolutionary behavior of sectors with high annual electricity consumption, such as steel, converges to the TB strategy faster than cement and paper industries. In contrast, the cement and paper industries are more sensitive to subsidy allocation than the steel industry with respect to electricity procurement strategies. [ABSTRACT FROM AUTHOR]
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- 2022
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3. Effects of policy and functional (in)coherence on coordination – A comparative analysis of cross-sectoral water management problems.
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Dombrowsky, Ines, Lenschow, Andrea, Meergans, Franziska, Schütze, Nora, Lukat, Evelyn, Stein, Ulf, and Yousefi, Ali
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WATER management ,WATER analysis ,COMPARATIVE studies ,WATERSHEDS ,SUSTAINABLE development - Abstract
Coherence and coordination among interdependent policy sectors are considered key for the implementation of the 2030 Agenda for Sustainable Development. Literature on policy coherence argues that a lack of coordination may lead to policy incoherence; however, literature on coordination also sometimes points to the reversed causality that incoherencies in policies or in governance functions (functional incoherence) may hinder coordinated policy outcomes; in fact, these assumptions have rarely been further theorized or tested empirically. In this paper, we hypothesize the higher functional or policy coherence, the higher coordination at process level and the higher the likelihood that coordination at process level is translated into coordination at outcome level. We test this hypothesis for cross-sectoral coordination challenges among different water using sectors in six different basins located in Germany, Iran, Mongolia, Spain, and South Africa. At first glance, four cases seem to confirm the first part of the hypothesis for functional coherence and three for policy coherence. It remains difficult to establish causality. Whether functional and policy coherence translate into coordination at process level seems to depend on a functioning coordination body. We further find that functional and policy incoherencies may either lead to coordination problems (in view of conflicts of interest) or even go along with a high level of coordination at the process level, possibly to compensate for incoherencies. Neither functional nor policy coherence change the relationship of coordination at process and outcome level. To explain coordination at the outcome level, other factors need to be considered. • The paper explores how (in)coherence in policies and responsibilities affects coordination at process and outcome level. • It presents a rigorous comparative study of cross-sectoral coordination in six river basins worldwide. • Coherence may be conducive towards coordination at process level, but it remains difficult to establish causality. • Incoherencies may both hinder or stimulate coordination at process level. • Coherence in policies and responsibilities does not change the relationship of coordination at process and outcome level. [ABSTRACT FROM AUTHOR]
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- 2022
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4. Modeling of precipitable water vapor from GPS observations using machine learning and tomography methods.
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Ghaffari Razin, Mir-Reza and Voosoghi, Behzad
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PRECIPITABLE water , *MACHINE learning , *ARTIFICIAL neural networks , *TOMOGRAPHY , *METEOROLOGICAL stations , *HUMIDITY - Abstract
This paper studies the application of two machine learning methods to model precipitable water vapor (PWV) using observations of 23 GPS stations from the local GPS network of north-west of Iran in 2011. In a first step, the zenith tropospheric delay (ZTD) and zenith hydrostatic delay (ZHD) is calculated with the Bernese GNSS software and Saastamoinen model as revised by Davis, respectively. Then, by subtracting the ZHD from the ZTD, the zenith wet delay (ZWD) is obtained at each GPS station, for all times. In a second step, ZWD is modeled by two different machine learning methods, based on the latitude, longitude, DOY, time, relative humidity, temperature and pressure. After training a Support Vector Machine (SVM) and an Artificial Neural Network (ANN), ZWD temporal and spatial variations are estimated. Using the formula by Bevis, the ZWD can be converted to PWV at any time and space, for each machine learning method. The accuracy of the two new models is evaluated using control stations, exterior and radiosonde station, whose observations were not used in the training step. Also, all the results of the SVM and ANN are compared with a voxel-based tomography (VBT) model. In the control and exterior stations, ZWD estimated by the SVM (ZWD SVM) and ANN (ZWD ANN) is compared with the ZWD obtained from the GPS (ZWD GPS). Also, in the control and exterior stations, precise point positioning (PPP) is used to evaluate the accuracy of the new models. In the radiosonde station, the PWV of the new models (PWV SVM , PWV ANN) is compared with the radiosonde PWV (PWV radiosonde) and voxel-based PWV (PWV VBT). The averaged relative error of the SVM, ANN and VBT models in the control stations is 10.50%, 12.71% and 12.91%, respectively. For SVM, ANN and VBT models, the averaged RMSE at the control stations is 1.87 (mm), 2.22 (mm) and 2.29 (mm), respectively. Analysis of the results of PWV estimated by the SVM, ANN and VBT, as well as the surface precipitation obtained from meteorological stations, indicate the high accuracy of the SVM in comparison with the ANN and VBT model. In the results shown in this paper, the SVM has the best ability to accurately estimate ZWD and PWV, using local GPS network observations. [ABSTRACT FROM AUTHOR]
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- 2022
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5. Ocher deposit prospecting using object-based image analysis of WorldView-3 VNIR data: A case study in Hormuz Island, southern Iran.
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Shayeganpour, Samira, Tangestani, Majid H., Homayouni, Saeid, and Gorsevski, Pece V.
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IMAGE analysis , *MOLECULAR vibration , *IMAGE recognition (Computer vision) , *FEATURE extraction , *PROSPECTING , *INTRAMOLECULAR proton transfer reactions - Abstract
Mapping lithological units and conducting mineral exploration in a relatively short time and at a reduced cost, requires high-resolution satellite data and state-of-the-art image processing approaches and methods. In this regard, the current paper aims to test an integration of visible-near infrared imagery from WorldView-3 (WV-3) and object-based classification for mapping potential deposits of ocher in Hormuz Island, southern Iran. A combination of field observations, spectroscopy, microscopic mineralogy, and geochemical-based XRD and XRF analyses were conducted on the samples collected throughout the study area. The reflectance and absorption features of the ocher were extracted from spectroscopic measurements of samples from well-known ocher mines at the area, and were then convolved to the WV-3 bands. Results showed that the spectral characteristics of ocher are governed by iron oxides and clay minerals with a presence of distinct strong absorption and high reflectance features in the 510–625 nm and 630–745 nm wavelength regions, respectively. These features are complemented by molecular vibration processes of water O–H intramolecular stretching and H–O–H bending that generate absorption features in the 1440–1940 nm region. Additional absorption features in the 2210–2300 nm are most likely due to the Al-OH and CO3−2 vibrations. The absorptions centered at 480 nm, 540 nm, and 820 nm correspond to bands 2, 3, and 7 of the WV-3, respectively, whereas the high reflectance feature centered near 700 nm corresponds to band 6. These four bands, which were considered as index bands of ocher in this study, were used to assign the segmentation weights and to create the thresholds during image processing. Brightness, density, compactness, and homogeneity features were the primary factors for selecting the training areas in the index bands. The ocher-rich areas were enhanced by using a two-stepapproach of object-based image analysis (OBIA) and image classification, for suitable threshold selection. The information about the feature variables of the ocher within the image and lithological object hierarchy were obtained to evaluate the features of ocher deposits. Information extracted from the index bands provided an important description of the object features, including mean, standard deviation, minimum and maximum pixel values, hue, saturation, and intensity, while the training areas obtained information from the three known ocher mines. Considering the fixed numerical range of ocher mines as a reference, the fixed numerical range of general and specific features of ocher in index bands of WV-3 were achieved. The numerical ranges of pixels were used for creating threshold conditions when applying the "assign class" algorithm in bands 2, 3, and 7 are 815–975 nm, 930–1052 nm, and 1721–1904 nm, respectively. The presented OBIA approach shows a high potential with an overall accuracy of 88 % to discriminate deposits of ocher based on compatibility between ocher mines and identified ocher-bearing pixels. [ABSTRACT FROM AUTHOR]
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- 2023
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6. Regional modeling and forecasting of precipitable water vapor using least square support vector regression.
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Ghaffari-Razin, Seyyed Reza, Davari Majd, Reza, and Hooshangi, Navid
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PRECIPITABLE water , *LEAST squares , *WATER use , *SPATIO-temporal variation , *FORECASTING - Abstract
• A novel approach for regional modeling and forecasting of PWV using LS-SVR is suggested. • The results of the new model are analyzed at control and radiosonde stations. • A comparative analysis between the results of new model, GPS and VBT is made. We propose a new model for spatio-temporal modeling and forecasting of precipitable water vapor (PWV) using least square support vector regression (LS-SVR) method. The LS-SVR uses simple linear equations. As a result, the complexity of the computational algorithm is reduced. In addition, the convergence speed and accuracy of the results increase. The evaluation of the new method has been done with the observations of the GPS networks at north-west and central Alborz in Iran. In the north-west GPS network, observations of 23 GPS stations in the period of 27 October to 10 November 2011 are used. However, in central Alborz network, the observations of 11 GPS stations in the period of 10 to 24 June 2016 have been used. The north-west GPS network is in the mountainous region and its observations are for the winter season. But, the second network is near the coastal area and summer season measurements are used. The latitude, longitude and height of GPS stations, DOY, time, relative humidity, temperature and pressure are considered as an input of the LS-SVR model. The output of the new model is the PWV (LS-SVR PWV). After the training step, the new model is used to estimate the spatio-temporal variation of PWV. The results of the LS-SVR model are compared and evaluated with the standard neural network (SNN), adaptive neuro-fuzzy inference system (ANFIS), support vector regression (SVR), Saastamoinen, global pressure and temperature 3 (GPT3), voxel-based tomography (VBT) models, as well as with radiosonde measurements. Error evaluation of models has been done in control stations as well as by precise point positioning (PPP) method. For LS-SVR model, the averaged RMSE in the control stations of the north-west GPS network is 1.69 mm, while for the central Alborz GPS network, 1.88 mm is calculated. Also, the averaged relative error of LS-SVR model calculated in the Tabriz and Tehran radiosonde stations are 4.66 % and 6.12 %, respectively. The results of this paper show that the LS-SVR model has a very high capability in forecasting the spatio-temporal variation of PWV at the GPS network territory. The new model can be used for accurate estimation of PWV, meteorological applications and flood forecasting. [ABSTRACT FROM AUTHOR]
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- 2023
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7. Differences in perception of the importance of process safety indicators between experts in Iran and the West.
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Omidi, Leila, Dolatabad, Khadijeh Mostafaee, and Pilbeam, Colin
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ALARMS , *CHEMICAL processes , *ECONOMIC indicators ,WESTERN countries ,DEVELOPED countries - Abstract
• Identification of important indicators for process safety. • A comparative study of process safety indicators in developing and developed countries. • Measuring the relative importance of the indicators using the Fuzzy Best Worst Method. Introduction: The importance of safety in high-risk industries such as oil and gas facilities has been reported previously. Process safety performance indicators can provide insight into improving the safety of process industries. This paper aims to rank the process safety indicators (metrics) by Fuzzy Best-Worst Method (FBWM) using the data gathered through a survey. Method: The study uses a structured approach considering the UK Health and Safety Executive (HSE), the Center for Chemical Process Safety (CCPS), and the IOGP (International Association of Oil and Gas Producers) recommendations and guidelines to generate an aggregate set of indicators. It calculates the level of importance of each indicator based on the opinions of experts from Iran and some Western countries. Results: The findings of the study demonstrate that some lagging indicators such as the number of times processes do not proceed as planned due to insufficient staff competence and the number of unexpected disruptions of the process due to failure in instrumentation and alarms are important in process industries in both Iran and Western countries. Western experts identified process safety incident severity rate as an important lagging indicator, whereas Iranian experts considered this as relatively unimportant. In addition, leading indicators such as sufficient process safety training and competency, the desired function of instrumentation and alarms, and proper management of fatigue risk play an important role in enhancing the safety performance of process industries. Experts in Iran viewed permit to work as an important leading indicator, while experts in the West focused on fatigue risk management. Practical Applications: The methodology used in the current study gives a good view to managers and safety professionals in regard to the most important indicators of process safety and allows them to focus more on important process safety indicators. [ABSTRACT FROM AUTHOR]
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- 2023
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8. Logistic growth modelling of COVID-19 proliferation in China and its international implications.
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Shen, Christopher Y.
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COVID-19 , *COVID-19 pandemic , *NULL hypothesis , *HEALTH policy , *COMMUNICABLE diseases - Abstract
• This study applied a logistic growth model with parameters estimated by a non-linear least squares (NLS) method to daily new COVID-19 cases. • The model fitted time-series data exceedingly well for the whole of China, eleven selected Chinese provinces and municipalities, South Korea and Iran. • This study provided key estimates and a 95% confidence interval for parameters K , r, and P 0. • This study found that the growth rates of outbreaks differed between provinces in China and between South Korea and Iran. • As of March 13, 2020, this study's model suggested that countries such as the U.S.A., France, Italy, and Spain were still in the early stages of outbreaks. As the coronavirus disease 2019 (COVID-19) pandemic continues to proliferate globally, this paper shares the findings of modelling the outbreak in China at both provincial and national levels. This paper examines the applicability of the logistic growth model, with implications for the study of the COVID-19 pandemic and other infectious diseases. An NLS (Non-Linear Least Squares) method was employed to estimate the parameters of a differentiated logistic growth function using new daily COVID-19 cases in multiple regions in China and in other selected countries. The estimation was based upon training data from January 20, 2020 to March 13, 2020. A restriction test was subsequently implemented to examine whether a designated parameter was identical among regions or countries, and the diagnosis of residuals was also conducted. The model's goodness of fit was checked using testing data from March 14, 2020 to April 18, 2020. The model presented in this paper fitted time-series data exceedingly well for the whole of China, its eleven selected provinces and municipalities, and two other countries - South Korea and Iran - and provided estimates of key parameters. This study rejected the null hypothesis that the growth rates of outbreaks were the same among ten selected non-Hubei provinces in China, as well as between South Korea and Iran. The study found that the model did not provide reliable estimates for countries that were in the early stages of outbreaks. Furthermore, this study concured that the R 2 values might vary and mislead when compared between different portions of the same non-linear curve. In addition, the study identified the existence of heteroskedasticity and positive serial correlation within residuals in some provinces and countries. The findings suggest that there is potential for this model to contribute to better public health policy in combatting COVID-19. The model does so by providing a simple logistic framework for retrospectively analyzing outbreaks in regions that have already experienced a maximal proliferation in cases. Based upon statistical findings, this study also outlines certain challenges in modelling and their implications for the results. [ABSTRACT FROM AUTHOR]
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- 2020
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9. Regional modeling of the ionosphere using adaptive neuro-fuzzy inference system in Iran.
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Feizi, Rasoul, Voosoghi, Behzad, and Ghaffari Razin, Mir Reza
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ATMOSPHERIC physics , *IONOSPHERE , *GLOBAL Positioning System , *ARTIFICIAL neural networks , *FUZZY systems - Abstract
In recent years, new techniques and algorithms such as Artificial Neural Networks (ANNs), Fuzzy Inference Systems (FIS) and Genetic Algorithm (GA) have been used as alternative statistical tools in modeling and forecasting issues. These methods have been extensively used in the field of geosciences and atmospheric physics. The main purpose of this paper is to combine FIS and ANNs for local modeling of the ionosphere Total Electron Content (TEC) in Iran. An Adaptive Neuro-Fuzzy Inference System (ANFIS) is developed for TEC modeling. Also, Multi-Layer Perceptron ANN (MLP-ANN) and ANN based on Radial Base Functions (RBF) have been designed for analyzing ANFIS results. Observations of 29 Global Positioning System (GPS) stations from the Iranian Permanent GPS Network (IPGN) have been used in 3 different seasons in 2015 and 2016. These stations are located at geomagnetic low latitudes region. Out of these 29 stations, 24 stations for training and 5 stations for testing and validating were selected. The relative and absolute errors have been used to evaluate the accuracy of the proposed model. Also, the results of this paper are compared with the International Reference Ionosphere model (IRI2016). The maximum values of the average relative error for RBF, MLP-ANN, ANFIS and IRI2016 methods are 13.88%, 11.79%, 10.06%, and 18.34%, respectively. Also, the maximum values of the average absolute error for these methods are 2.38, 2.21, 1.5 and 3.36 TECU, respectively. Comparison of diurnal predicted TEC from the ANFIS, RBF, MLP-ANN and IRI2016 models with GPS-TEC revealed that the ANFIS provides more accurate predictions than the other methods in the test area. [ABSTRACT FROM AUTHOR]
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- 2020
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10. Beyond the binary of trapped populations and voluntary immobility: A people-centered perspective on environmental change and human immobility at Lake Urmia, Iran.
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Transiskus, Sebastian Fernand and Gholamzadeh Bazarbash, Monir
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PLACE attachment (Psychology) ,ENVIRONMENTAL degradation ,LAKES ,PSYCHOLOGICAL distress ,FOCUS groups - Abstract
• The water crisis at Lake Urmia (Iran) represents a severe socio-economic disaster. • In-depth interviews reveal the multicausality of immobility in times of crisis. • Individuals may aspire to migrate and stay simultaneously ('ambivalent immobility'). • The most vulnerable may have no (im)mobility aspirations ('precarious immobility'). • Generalizing about 'trapped populations' masks the full spectrum of immobility. Empirical research on the links between environmental change and human (im)mobility has made considerable progress in the last decade. However, most attention is given to migration rather than understanding immobility, where human-centered perspectives are scarce and various regions remain critically understudied. This paper seeks to address these deficits. Methodologically based on 75 qualitative in-depth interviews and 8 focus group sessions with rural residents around desiccating Lake Urmia (Iran), the study takes individual perceptions of environmental degradation and lived experiences of immobility as its fundamental starting point. It investigates what (in)tangible losses occur and analyses what matters most in shaping the aspirations and capabilities to migrate or stay. The findings provide unique empirical evidence of the multifaceted dimensions along the spectrum of immobility, moving beyond the prevailing binary views of voluntary immobility and trapped populations. A key finding of this study is the elucidation of 'ambivalent immobility', comprising individuals whose (im)mobility aspirations are complex and contradictory: they want to stay, but also leave, constantly weighing their growing local dissatisfaction against their attachments to place and the psychological/economic costs of migration. Another novel contribution concerns 'precarious immobility', expanding our knowledge of how individuals understand themselves as trapped. Grounded in capability constraints and emotional distress exacerbated by environmental change, individuals from this group did not voice any (im)mobility aspirations. This distinguished them from the involuntary or acquiescent immobile residents in the study, who despite capability constraints either aspired to migrate or expressed a preference to stay. Thus, this paper highlights the complexity of aspirations in contexts of environmental degradation and underscores the need for more qualitative research to complement quantitative efforts to foster a more nuanced understanding of the diverse causes, dimensions, and consequences of immobility. [ABSTRACT FROM AUTHOR]
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- 2024
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11. Integration of Landsat-8 and Sentinel-1 dataset to extract geological lineaments in complex formations of Tepal mountain area, Shahrood, north Iran.
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Ranjbari, Mohammad Reza, Vagheei, Ramazan, and Salehi, Hossein
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GEOLOGICAL maps , *LANDSAT satellites , *REMOTE sensing , *IMAGE intensifiers , *GEOLOGICAL mapping , *MOUNTAINS , *HYDROGEOLOGY - Abstract
Recently, the detection and extraction of geological lineaments have become an essential analytical technique to find relationships between the characteristics and occurrence of hydrogeology, and tectonic studies. The use of remote sensing, with the progressive development of image enhancement techniques, provides an opportunity to produce more reliable and comprehensive lineament maps. In this paper, semi-automatic approach based on Landsat 8 and Sentinel 1 radar data is proposed for lineaments extraction and validation. The combined method of linear filtering and automatic line module ensures a high degree of accuracy resulting in a lineament map. Based on identified lineaments, Sentinel1 is more capable of detecting edges than Landsat8, but the primary orientation lineaments extracted from Landsat8 and Sentinel1 were different. So, by combining band6 of Landsat8, and VV and VH polarization of Sentinel1, the area lineaments were extracted with high accuracy. Rose diagram showed the extracted lineaments' orientation is in good compliance with the region's existing faults. Also, the formations' lineament length density has good consistent with the density of the faults in the geological map. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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12. Improving the socio-ecological fit in water governance by enhancing coordination of ecosystem services used.
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Pahl-Wostl, Claudia, Lukat, Evelyn, Stein, Ulf, Tröltzsch, Jenny, and Yousefi, Ali
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ECOSYSTEM services ,WATER management ,FACTOR analysis - Abstract
Water governance systems have evolved around the exploitation of provisioning ecosystem services. The overexploitation of provisioning and the degradation of regulating services have led to a decline in the capacity of ecosystems to provide any services at all. Decisions affecting water-related ecosystem services are often not made in the water sector. Governance that does not take into account ecological interdependencies lead to unsustainable use of resources. In such situations, one can speak of a misfit between interdependencies of ecosystem services and coordination processes that would allow addressing them. The article introduces an approach to identify such misfits and potential solutions to overcome them and applies the approach to case studies in Germany, South Africa and Iran. The context-sensitive analyses highlight factors that contribute to or even determine prevailing practices in water management. The fit with the pattern of ecosystem service uses was found to be higher for governance processes in practice (formal and informal) than for formal coordination instruments on paper. Actors may not lack opportunities to exchange but these are not translated into tangible coordination outcomes. To reduce trade-offs between the uses of ecosystem service, improved synergies are needed between formal and informal institutional settings. Instruments need to be tailored to local circumstances. Scope and effectiveness of local action may be limited by higher governance levels. The analyses have demonstrated that the path from improving social-ecological fit to achieving sustainability is long. Addressing institutional deficits requires transformational change rather than short-term measures for addressing isolated problems or crisis situations. • New approach to identify misfits between ecosystem services uses and coordination and potential solutions to overcome them. • Results from case studies in Germany, South Africa and Iran. • Synergies needed between formal and informal institutional at local level to reduce trade-offs between ecosystem services. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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13. Air-gap eccentricity fault detection, isolation, and estimation for synchronous generators based on eigenvalues analysis.
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Masoumi, Zahra, Moaveni, Bijan, Mousavi Gazafrudi, Sayed Mohammad, and Faiz, Jawad
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SYNCHRONOUS generators ,FAULT diagnosis ,EIGENVALUES ,DIESEL locomotives ,DIAGNOSIS methods - Abstract
Air-gap eccentricity fault causes rotor–stator rub and consequently damage to Synchronous Generators (SGs). In this paper, a fault diagnosis approach to diagnose the eccentricity fault for SGs is presented. In this approach, the state matrix eigenvalues based on the subspace identification are estimated, and those are used for fault diagnosis. Two dq models of SGs in faulty and healthy conditions are employed to present the theoretical foundation of the method. As the main advantage, the introduced fault diagnosis method is working properly for either linear or nonlinear loads of SGs. The stator and field currents and voltages, and rotor rotational speed are required signals in the introduced approach. The method is validated using experimental data of SGs in Iran-Safir (ER24) diesel–electric locomotives. [Display omitted] • Air-gap eccentricity fault diagnosis in synchronous generators. • Fault diagnosis using the estimated eigenvalues of the state-space model of the synchronous generators based on the subspace identification. • The introduced fault diagnosis method works properly for linear and nonlinear loads. • The introduced fault diagnosis has been validated using experimental data of synchronous generators in Iran-Safir (ER24) diesel–electric locomotives. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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14. Exploring the potential of deep learning for streamflow forecasting: A comparative study with hydrological models for seasonal and perennial rivers.
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Izadi, Ardalan, Zarei, Nastaran, Reza Nikoo, Mohammad, Al-Wardy, Malik, and Yazdandoost, Farhad
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HYDROLOGIC models , *DEEP learning , *WATERSHEDS , *SEASONS , *COMPARATIVE studies , *PERENNIALS - Abstract
[Display omitted] Improving streamflow prediction plays a significant role in flood warning, mitigation and development purposes. Therefore, this paper aims to compare the prediction capability of a useful conceptual hydrologic model hydrologiska byråns vattenbalansavdelning (HBV) enhanced and equipped with an automatic calibration procedure (Genetic Algorithm) along with two well-known deep learning (DL) algorithms, including Long-Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU). This study was concentrated on the daily streamflow of two river basins with diverse climatic and hydrological conditions, namely the Halilrood River with fragmented and intermittent flows (located in Iran) and the Tweed River with a permanent stream flow (Located across the border of Scotland and northern England). These were particularly selected to address both seasonal and perennial riverine cases. For reproducing the streamflow, 10-year records of the daily discharge, precipitation, and temperature (from satellite and ground resources), and evapotranspiration were used as the main input data. The accuracy of the implemented models was assessed using several indices. The findings show that 1) the LSTM and GRU show better accuracy than the employed hydrologic model for estimating daily discharges (especially in the seasonal river basin); 2) the DL approaches need only meteorological data inputs (precipitation and temperature) and are independent of involved uncertainties in hydrological modeling such as physical characteristics of basins; and 3) best streamflow simulations were achieved by the LSTM (best agreement with the observations). In general, LSTM has the highest priority to be connected with online hydrological rainfall-runoff simulations and dynamical forecast models. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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15. A new evaluation method for customer outage costs using long-term outage data and Monte Carlo simulation.
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Najafi-Shad, Sajad, Mollashahi, Mozhdeh, and Sadr, Seyyed Mohsen
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CONSUMERS , *EVALUATION methodology , *ALGEBRAIC functions , *MONTE Carlo method , *CURVE fitting , *VEHICLE routing problem - Abstract
• Monte Carlo simulation has been employed to assess the long-term outage data. • The CCDFs are converted into algebraic functions using the high-accuracy regression. • Outage costs are calculated through the estimated outage duration and designed CDFs. • The annual outage duration of distribution feeders is predicted using Monte Carlo. This paper introduces an effective evaluation method for customer outage costs and durations based on defining customer damage functions (CDFs) and processing the long-term interruption data. The proposed approach sorts and processes interruption data, utilizing the Monte Carlo technique to assess outage durations. Then, by weighting sector customer damage functions in each load point, composite customer damage functions (CCDF) are defined. The determined CCDFs are transformed into algebraic functions through curve fitting for any substation. Then, using the estimated outage duration and designed CCDF, the customer outage costs are calculated at any load center. The methodology introduced enhances the predicting accuracy of outage duration and cost by reducing the influence of rare lengthy outages and amplifying that of recurring events. Furthermore, this study defines fixed CCDFs independent of outage durations and could be employed for future time intervals of the proposed load points. Moreover, sorting data based on outage durations improves the accuracy of Monte Carlo outage estimation. The proposed method validation is evaluated on the sub-transmission system of Sistan and Baluchestan, Iran. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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16. Anomalous seismo-LAI variations potentially associated with the 2017 Mw = 7.3 Sarpol-e Zahab (Iran) earthquake from Swarm satellites, GPS-TEC and climatological data.
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Akhoondzadeh, Mehdi, De Santis, Angelo, Marchetti, Dedalo, Piscini, Alessandro, and Jin, Shuanggen
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EARTHQUAKE swarms , *TIME series analysis , *GEOMAGNETISM , *SEISMIC event location , *KALMAN filtering , *ELECTRON density - Abstract
• The M w = 7.3 earthquake near the Iran-Iraq border in west Iran occurred in 12.11.2017. • Median, Kalman filter and NN were implemented to investigate TEC measurements. • Swarm data analysis identifies anomalies 8–11 days prior to the earthquake. • Climatological data analysis identifies anomalies that precede ionospheric anomalies. • The sequence of different anomalies confirms a bottom-up LAIC process. The M w = 7.3 earthquake near the Iran-Iraq border in west Iran (34.911°N, 45.959°E) occurred at 18:18:17 UTC (LT = UTC + 03:30), November 12, 2017 as the result of oblique-thrust faulting at mid-crustal depth (∼19 km). Median, Kalman filter and Neural Network, as three standard, classical and intelligent methods, have been implemented to investigate three months of GPS Total Electron Content (TEC) measurements and to detect the striking anomalous variations around the time and location of the mentioned earthquake. The first method detects unusual variations, 9 days before the event, between 21:00 and 22:00 UTC. The other two methods of Kalman filter and Neural Network detect another clear anomaly on 11 days preceding the earthquake at 16:00 UTC. These findings are two of the outstanding results of GPS-TEC precursor analysis. This paper also presents the results of Swarm satellites (Alpha, Bravo and Charlie) data analysis inside the Dobrovolsky area around the Iran earthquake epicenter during the period from 1 August to 30 November 2017. The time series and orbital analysis of six measured parameters including electron density, electron temperature, magnetic scalar and vectors (X, Y, Z) components indicate irregular variations between 8 and 11 days prior to the occurrence of the earthquake. Since the variations of the solar and geomagnetic indices follow a normal behaviour during the whole period of the observed ionospheric anomalies between 8 and 11 days before the earthquake, it can be concluded that multi-precursors analysis has an important role to acknowledge the seismo-LAI (Lithospheric-Atmospheric-Ionospheric) anomalies associated to strong earthquakes such as this case. Furthermore, some physical and chemical atmospheric parameters from a climatological database are investigated and some interesting anomalies above two standard deviations prior to the earthquake are found. This paper shows not only anomalies in atmosphere and ionosphere but also a contemporary analysis of different data sources to detect the possible Lithosphere Atmosphere Ionosphere Coupling (LAIC) effects. [ABSTRACT FROM AUTHOR]
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- 2019
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17. Evaluation of the environmental impact assessment system in Iran.
- Author
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Khosravi, Fatemeh, Jha-Thakur, Urmila, and Fischer, Thomas B.
- Subjects
ENVIRONMENTAL impact analysis ,PLANT development ,LITERATURE reviews - Abstract
Abstract EIA in Iran was formally introduced in 1994, but to date little EIA-related research has been undertaken in the country. In this paper, the authors provide an evaluation of the Iranian EIA system, focusing on EIA legislation, administration and process. Data was collected on the basis of a literature review, document analysis and semi-structured interviews. This involved some translation from Persian into English. Evaluation of the findings indicate that Iran has adopted the democratic tools of EIA and SEA, which considering its political context is encouraging. However, currently the Iranian EIA system does suffer from weaknesses such as inadequate screening and scoping, lack of alternative consideration, public participation, EIA implementation and follow-up. The paper proposes some initial recommendations based on international experiences and sets out the direction for future research. Highlights • Iranian EIA legislation is a part of the National Development Plant (NDP). • The existing EIA legal basis is not strong enough for effective action against EIA offenders. • Iran's development of EIA is still at a low level in terms of understanding EIA procedure. • Capacity building is a premier factor to improve EIA in Iran. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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18. A new interval meta-goal programming for sustainable planning of agricultural water-land use nexus.
- Author
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Mardani Najafabadi, Mostafa, Magazzino, Cosimo, Valente, Donatella, Mirzaei, Abbas, and Petrosillo, Irene
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FARM management , *CROPPING systems , *NATURAL resources , *WATER supply , *AGRICULTURAL water supply , *LAND degradation - Abstract
• This paper proposes an Indexed Meta-Goal Planning Model to solve imprecision in data. • This integrated model is a novelty and has been applied to sustainable optimal cropping patterns. • It has been tested in Iran to solve conflicting uses of natural resources. • The results compared with Sen and Pal show no variation in land allocation for each crop. • the least variation in all problems is for wheat and barley production. Meta-Goal Programming (MGP) is a simultaneous cognitive evaluation of the degree of achievements for original decision goals considered in a GP model. However, in most real-world situations, environmental coefficients and related parameters are not easily available. In such a situation, the decision-maker must consider various conflicting targets in a framework of uncertain aspiration levels at the same time. On the other side, Interval Programming (IP) is a method used to increase the range of available decision-maker preference structures in GP. In the perspective of solving the conflicts between agriculture and water use towards sustainability, this paper proposes an Interval Meta-Goal Programming Model (IMGPM) dealing with imprecision in data that covers interval coefficients, target intervals, and interval bounds of meta-goals. This novel methodology has been tested in a study area in Iran to validate its added value in solving conflicting uses of natural resources by economic sectors. This integration together with its application for sustainable optimal cropping patterns (agroecosystem planning) represents a novelty in the field of ecological modeling. The management solutions of our method in terms of land allocation are different from those in Sen and Pal (2013) model. In the case of Iran, many socio-ecological-economic strategies and policies should be necessary for improving the agricultural sector. More specifically, on the basis of rainfall amounts and spatial patterns, this approach can represent a decision-support system able to define strategies for additional water storage useful to support crop production. Furthermore, the availability of water together with the sustainable use of fertilizers can mitigate the risk of land degradation, guaranteeing people employment, food security, and economic profits. Although the present methodology seems to solve the problem of multi-goals decision-making, the inclusion of spatial relationships is able to introduce dependencies between the management of land use in adjacent areas, making the present approach nearer to real-world functioning. [Display omitted] [ABSTRACT FROM AUTHOR]
- Published
- 2023
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19. Designing a sustainable-resilient-responsive supply chain network considering uncertainty in the COVID-19 era.
- Author
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Moadab, Amirhossein, Kordi, Ghazale, Paydar, Mohammad Mahdi, Divsalar, Ali, and Hajiaghaei-Keshteli, Mostafa
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- *
COVID-19 pandemic , *STOCHASTIC programming , *GOAL programming , *SUPPLY chains , *SUPPLY chain management , *COVID-19 testing , *DIAGNOSTIC use of polymerase chain reaction - Abstract
Effective supply chain management is crucial for economic growth, and sustainability is becoming a key consideration for large companies. COVID-19 has presented significant challenges to supply chains, making PCR testing a vital product during the pandemic. It detects the presence of the virus if you are infected at the time and detects fragments of the virus even after you are no longer infected. This paper proposes a multi-objective mathematical linear model to optimize a sustainable, resilient, and responsive supply chain for PCR diagnostic tests. The model aims to minimize costs, negative societal impact caused by shortages, and environmental impact, using a scenario-based approach with stochastic programming. The model is validated by investigating a real-life case study in one of Iran's high-risk supply chain areas. The proposed model is solved using the revised multi-choice goal programming method. Lastly, sensitivity analyses based on effective parameters are conducted to analyze the behavior of the developed Mixed-Integer Linear Programming. According to the results, not only is the model capable of balancing three objective functions, but it is also capable of providing resilient and responsive networks. To enhance the design of the supply chain network, this paper has considered various COVID-19 variants and their infectious rates, in contrast to prior studies that did not consider the variations in demand and societal impact exhibited by different virus variants. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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20. On the fractional SIRD mathematical model and control for the transmission of COVID-19: The first and the second waves of the disease in Iran and Japan.
- Author
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Mohammadi, Hakimeh, Rezapour, Shahram, and Jajarmi, Amin
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MATHEMATICAL models ,COVID-19 ,EULER method ,DISPLAY systems - Abstract
In this paper, a fractional-order SIRD mathematical model is presented with Caputo derivative for the transmission of COVID-19 between humans. We calculate the steady-states of the system and discuss their stability. We also discuss the existence and uniqueness of a non-negative solution for the system under study. Additionally, we obtain an approximate response by implementing the fractional Euler method. Next, we investigate the first and the second waves of the disease in Iran and Japan; then we give a prediction concerning the second wave of the disease. We display the numerical simulations for different derivative orders in order to evaluate the efficacy of the fractional concept on the system behaviors. We also calculate the optimal control of the system and display its numerical simulations. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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21. Robust kernel extreme learning machines with weighted mean of vectors and variational mode decomposition for forecasting total dissolved solids.
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Chen, Huiling, Ahmadianfar, Iman, Liang, Guoxi, and Heidari, Ali Asghar
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GREY Wolf Optimizer algorithm , *SUSTAINABILITY , *FEATURE selection , *FORECASTING , *WATER quality , *SUSTAINABLE architecture - Abstract
A stable and accurate forecast of water quality parameters is crucial for planning and managing future investment programs. A well-known water quality indicator is the total dissolved solids (TDS), which measures the number of metals, minerals, and salts dissolved in a particular volume of water. This paper introduces an innovative approach, which combines the kernel extreme learning machine (KELM) with the robust weight mean of vectors (INFO) algorithm. The proposed technique stands out for its strategic integration of Boruta-XGBoost (B-XGB) as an exceptional feature selection method, along with variational mode decomposition (VMD) to decompose the input variables and enhance the accuracy of forecasting. The integrated model is termed V-KELM-INFO. INFO is an essential component that incorporates a complex exploration process. It utilizes a weighted mean of vectors, a vector combining operator to enhance population variety, and a localized search operator to expedite convergence. INFO, a potent tool, is included in the V-KELM training stage. It efficiently extracts optimum parameters and dramatically improves the accuracy of monthly TDS predictions at the Idenak station in southwest Iran. Also, the multi-criteria decision-making (MCDM) approach of weighted aggregated sum product assessment (WASPAS) is used to rank models. The V-KELM-INFO model was chosen based on the WASPAS results and statistical metrics (R = 0.962, RMSE = 57.84, WHD = 7.01, and U95 = 160.74) as the best model to forecast the TDS. In addition, the superiority of the proposed model was assessed against the metaheuristic-based V-KELM models, comprising the V-KELM grey wolf optimizer (V-KELM-GWO), V-KELM slime mold algorithm (V-KELM-SMA), and V-KELM equilibrium optimizer (V-KELM-EO). This work provided insight into improving the accuracy of modeling-based methodologies and spurred water quality modeling technology to develop sustainable and clean practices. • A novel machine learning (KELM-INFO) approach for forecasting TDS is created. • The KELM-INFO is validated by four well-known machine learning methods. • The V-KELM-INFO model is assessed against the metaheuristic-based V-KELM models. • This work provides insight into improving the accuracy of model-based methods. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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22. On the integration of inspection data with seismic resilience assessment of corroded reinforced concrete structures.
- Author
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Rezaie, Sahar, Khalighi, Masoud, Bahrami, Jamil, and Mirzaei, Zanyar
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REINFORCED concrete , *DISTRIBUTION (Probability theory) , *LIFE cycles (Biology) , *REINFORCED concrete testing - Abstract
This research aims to improve the traditional statistical approach to evaluate the seismic resilience of concrete structures exposed to chloride attack. In the mentioned approach, the uncertain parameters are modeled using certain probability distribution functions (PDFs) selected from some standards such as fib. However, the mentioned PDFs should contain the actual conditions of the desired structure. This paper introduces a Bayesian framework for updating PDFs used in deterioration analysis, which is an important part of the life-cycle seismic resilience assessment process of corroded concrete structures. The proposed methodology was applied to a two-story reinforced concrete school in Iran that suffered from chloride corrosion for twenty years. The seismic resilience of the structure was investigated for a 50-year life cycle. The results showed that the updated model can significantly reduce the uncertainty of the influencing parameters in the seismic resilience evaluation process. Using the updated model resulted in a conservative seismic resilience index compared to the non-updated model. This research shows that the role of inspection data in periodically updating the seismic-resistance calculations of corroded concrete structures is not only necessary but also possible and beneficial. • A new methodology for assessing seismic resilience of corroded reinforced concrete systems. • The proposed algorithm integrates the structural inspection data with the seismic resistance assessment process. • The uncertainty of results is reduced using Bayesian framework. • The efficiency of the methodology is evaluated using a real-world case study. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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23. Vulnerability assessment of wetland landscape ecosystem services using driver-pressure-state-impact-response (DPSIR) model.
- Author
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Malekmohammadi, B. and Jahanishakib, F.
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- *
WETLAND ecology , *ECOSYSTEM management , *ECOSYSTEM services , *SOCIAL ecology , *RANGE ecology , *WETLANDS - Abstract
Wetlands exist in complex ecological conditions that are changeable in time and space in terms of function and structural diversity. In recent decades, wetlands have been exposed to a wide range of threats. Assessment of these threats is essential to develop an understanding of the state of a wetland ecosystem and to develop a suitable management strategy. This paper discusses wetland vulnerability in terms of analysis of human and environmental systems from application of the driver-pressure-state-impact-response (DPSIR) framework. This assessment presented a systematic methodology for assessment of wetland vulnerability in a social-ecological approach applying broad-scale ecosystem services and vulnerability functions. The method combined the hydro-geomorphic approach with estimations of vulnerability indicators and DPSIR analysis. The aim of this paper was to assess vulnerability of wetland ecosystem services and to characterize the threat indicators according to importance, severity, and probability of occurrence. Quantitative and qualitative methods were applied to characterize values for these three indicators. The Multi Criteria Decision Making (MCDM) method was used to prioritize threats and impacts of the wetland on the basis of experts’ opinions. The proposed methodology was applied to the Choghakhor international wetland landscape in south-western Iran. Vulnerability assessment revealed that water requirement of the lowland and the water transfer system were the most important factors threatening the wetland. Agricultural activities, settlements and urban areas, drought, tourism, population growth, and mining activities in the upland were the next most important priorities, in that order. Hydrological balance was determined as the most vulnerable function and was considered as the most important function in the Choghakhor wetland. The DPSIR model was used to determine a management strategy to reduce vulnerability of ecosystem services in response to drivers, pressures, states and impacts indicated by modelling. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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24. On evaluating the collaborative research areas: A case study.
- Author
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Moradi, Mona, Rahmanimanesh, Mohammad, and Shahzadi, Ali
- Subjects
FUZZY algorithms ,DEVELOPING countries ,SOCIAL networks ,PROBABILITY density function - Abstract
The growth of social networks is ever-increasing. Many available scientific publications evidence the interest of researchers in this area. Within a time span of eight years from 2011 to 2018, approximately 2600, 230, 150, and 110 scientific articles were published from the USA, Iran, Saudi Arabia, and Turkey, respectively around this area of research. To comprehensively survey all the sub-fields and interests within this research area, the present paper proposes a novel density-based method for finding topic descriptors from academic articles. By employing a robust to noise fuzzy clustering algorithm, the terms are clustered, and by utilizing a modified Parzen window, k topic descriptors from each cluster are extracted. Besides, an optimization problem has been designed to detect the similarity between word pairs. By conducting the experiments, the research priorities for four countries within this time span have been found. Moreover, the closeness of the research in developing countries to the developed country have been measured. The experimental results show that for four years, the research topics in Turkey were close to the research topics in the USA on average, and the research topics in Saudi Arabia were close to the USA topics during the past two years. Additionally, the experimental comparison of the proposed method with two clustering baselines indicates the superiority of the proposed method in terms of precision, recall, and accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
25. Exploring socio-psychological factors affecting farmers' intention to choose a low-water-demand cropping pattern for water resources conservation: Application of the health belief model.
- Author
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Nasiri, Amir Reza, Shahangian, Seyyed Ahmadreza, Kerachian, Reza, and Zobeidi, Tahereh
- Subjects
- *
HEALTH Belief Model , *CROPPING systems , *WATER conservation , *WATER supply , *GREEN behavior , *CONSERVATION tillage - Abstract
Water scarcity threatens food security and leads to various economic, social, and environmental challenges, particularly in arid and semi-arid regions. As the agricultural sector consumes the most significant amount of water, conserving water resources in this sector is particularly important. Cultivation of low-water-demand (LWD) crops with high value-added is one of the effective measures to reduce agricultural water demand and improve farmers' livelihoods. However, changing water-intensive crops to LWD crops (e.g., medicinal plants) is voluntary pro-environmental behavior. Considering the role of psychological theories in understanding and explaining human behaviors, the main purpose of the current paper is to explore the socio-psychological determinants underlying farmers' intention to adopt an LWD cropping pattern using the Health Belief Model (HBM). In this regard, data were collected using face-to-face interviews with 184 farmers living in Zanjan province, Iran to examine their intention to cultivate LWD medicinal plants. Using structural equation modeling for data analysis, the HBM explained 49% of the variance in farmers' behavioral intentions. The structural equation modeling outcomes also revealed that self-efficacy, perceived barriers, cues to action, and perceived benefits are significantly related to farmers' intention to choose medicinal plants. Overall, the findings indicated the effectiveness and applicability of the HBM in illustrating farmers' intention to change their cropping pattern. Applying some strategies such as providing the necessary facilities and training programs for farmers, as well as, advertisements aimed at promoting the cultivation of medicinal plants can significantly contribute to conserving water resources in the study area. • Evaluating farmers' intention to medicinal crops using the Health Belief Model. • The HBM accounted for 49% of the variance of the farmers' behavioral intentions. • Self-efficacy, perceived expectations, and cues to action affect farmers intentions. • Self-efficacy was identified as the main predictor of farmers behavioral intentions. • Cultivating medicinal crops help conserving water resources in the study area. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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26. Reliable and green road-rail routing using a hybrid procedure of DANP, COCOSO, and FMEA criticality methods: A case study of cement transportation network in Iran.
- Author
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Rashidian, Fateme, Eydi, Alireza, and Roghanian, Emad
- Subjects
- *
FAILURE mode & effects analysis , *ANALYTIC network process , *CONTAINERIZATION , *CEMENT , *CARBON emissions - Abstract
This paper addresses the issue of reliable and green routing in a road-rail multimodal transportation network. To enhance network reliability, types of disruptions occurring simultaneously in each node and arc are identified. Additionally, carbon emission is considered a risk caused by transportation process disruptions for achieving green routing. A combination of rating methods such as DEMATEL-based Analytic Network Process (DANP) and the Combined Compromise Solution (COCOSO), along with Failure mode and effects analysis (FMEA) Criticality reliability assignment method, is used to evaluate disruptions and select a safe route from origins to destinations. The DANP method produces a ranking of sub-criteria, and the COCOSO method produces a ranking of criteria in the network. The FMEA Criticality reliability assignment method is used to assign reliability to each option. Next, the route with the highest reliability from each origin to each destination is selected. The presented model investigates a cement road-rail transportation network in Iran. After analyzing the sensitivity of criteria and sub-criteria, the results provide best routes with increased reliability and reduced emissions risk. • Identifying risks in each node and arc in the transportation network. • Prioritizing criteria, sub-criteria, and options using a mix of DANP and COCOSO ranking methods. • Assessing the reliability of each option using the FMEA Criticality method. • Selecting the best path with the highest reliability and the less carbon emission risk in each O-D pair. • Considering a case study in the cement road-rail transportation network in Iran. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
27. Evolutionary multi-objective network optimization algorithm in trajectory planning.
- Author
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Borhani, Mostafa
- Subjects
TRAJECTORY optimization ,AIR traffic ,MATHEMATICAL optimization ,AIR traffic capacity ,AIRWAYS (Aeronautics) ,FLIGHT planning (Aeronautics) ,TRAFFIC patterns - Abstract
Flight network optimization, one of the airspace planning challenges, effectively manages airspace resources toward increasing airspace capacity and reducing air traffic congestion. In this paper, the structure of the air transport network is analyzed with a multi-objective genetic algorithm to reduce the number of airways and to aggregate the passengers and also to reduce route changes and the travel time fortravelers. The proposed topology model of this study is based on the combination of two topologies – point-to-point and hub-and-spoke – with multiple goals for decreasing in airways and travel length per passenger and also to reach the minimum number of air stops per passenger. Four state-of-the-art Multi-objective Genetic Algorithms (MOGAs) are considered for comparison studies and are tested and assessed in data of the Iran airline industry in 2018, as an experiment to real-world applications. Using the combination of point-to-point and hub-and-spoke topologies can improve the performance of the MOGA to solve a network-wide flight trajectory planning. Based on Iran airline traffic patterns in 2018, the proposed model successfully decreased 50.8% of air routes (184 air routes) compared to the current situations while the average travel length and the average changes in routes were increased up to 13.8% (about 100 km) and up to 18%, respectively. The proposed model also suggests that the current air routes of Iran can be decreased to 24.7% (89 airways) if the travel length and the number of changes increase up to 4.5% (32 km) and 5%, respectively. The simulation results show the potential benefits of the proposed model and the advantages of it. Optimizing the structure of the flight network can significantly reduce operational cost while ensuring the operation safety. According to the results, the multi-objective optimization model is successfully able to precisely design the efficiently optimized airline topologies. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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28. Extending a fuzzy network data envelopment analysis model to measure maturity levels of a performance based-budgeting system: A case study.
- Author
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Hatami-Marbini, Adel, Toloo, Mehdi, Reza Amini, Mohamad, and Azar, Adel
- Subjects
- *
DATA envelopment analysis , *FUZZY sets , *FINANCIAL stress , *FINANCIAL performance , *SET theory , *FUZZY logic - Abstract
• Propose a framework for measuring a maturity level of performance-based budgeting. • Develop a parallel network data envelopment analysis model. • Consider the hierarchical configuration of performance indicators. • Use fuzzy sets theory to deal with vagueness and ambiguity. • Present a case study to demonstrate the applicability of the developed framework. Performance-based budgeting (PBB) aims to formulate and manage public budgetary resources to improve managerial decisions based on actual performance measures of agencies. Although the PBB system has been overwhelmingly applied by various agencies, the progress and maturity of its implementation process are not satisfactory at large. Therefore, it warrants to find, evaluate and improve the performance of organisations in relation to implementing a PBB system. To do so, the composite indicators (CIs) have been proposed to aggregate multiple indicators associated with the PBB system, but their employment is contentious as they often lean on ad-hoc and troublesome assumptions. Data envelopment analysis (DEA) methods as a powerful and established tool help to contend with key limitations of CIs. Although the original DEA method ignores an internal production process, the knowledge of the internal structure of the PBB systems and indicators is of importance to provide further insights when assessing the performance of PBB systems. In this paper, we present a budget assessment framework by breaking a PBB system into two parallel stages including operations performance (OP) and financial performance enhancement (FPE) to open up the black-box structure of the system and consider the indicator hierarchy configuration of each stage. In situations of the hierarchical configuration of indicators, we develop a multilayer parallel network DEA-based CIs model to measure the PBB maturity levels of the system and its stages. It is shown that the discrimination power of the proposed multilayer model is better than the existing models with one layer and in situations of relatively small number of DMUs the model developed in this paper can be a good solution to the dimension reduction of indicators. Moreover, this research leverages fuzzy logic to surmount the subjective information that is often available in collecting indicators of the PBB systems. The major contribution of this research is to examine a case study of a PBB maturity award in Iran, as a developing country with a myriad of financial challenges, to adopt a PBB maturity model as well as point towards the efficacy and applicability of the proposed framework in practice. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
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29. A new robust-possibilistic reliable hub protection model with elastic demands and backup hubs under risk.
- Author
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Rahimi, Yaser, Torabi, S. Ali, and Tavakkoli-Moghaddam, Reza
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NETWORK hubs , *FAILURE mode & effects analysis , *TRANSPORTATION costs , *ELASTICITY (Economics) , *AUTOMOTIVE transportation - Abstract
This research considers a new reliable backup hub under the robust-possibilistic uncertainty. The considered multi-objective model aims to minimize the total transportation cost of a p -hub median protection model while maximizing the flow between each pair node and minimizing the total transportation time. Additionally, it considers the potential disruption risks in the hub links of the transportation network for which a failure mode and effect analysis (FMEA) method is used to measure the risk of network's arcs. Consequently, the demand is assumed to be dependent on the utility proposed by each hub. Thus, the demand elasticity is considered in this paper. As the exact values of some parameters are not known in advance, a fuzzy multi-objective decision making-based approach is proposed to optimally solve small-sized problems. Furthermore, a number of sensitivity analyses are done on a real case study in the Iranian Road Transportation Sector with useful managerial insights. • Designing a new reliable p -hub protection model with elastic demand. • Using financing tools for establishing hubs. • Measuring the risk level of arcs in the hub network. • Devising a two-phase solution method. • Considering a real-case study in the Road Transportation sector of Iran. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
30. A forty years scientometric investigation of artificial intelligence for fluid-flow and heat-transfer (AIFH) during 1982 and 2022.
- Author
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Ghalambaz, Sepideh, Abbaszadeh, Mohammad, Sadrehaghighi, Ideen, Younis, Obai, Ghalambaz, Mehdi, and Ghalambaz, Mohammad
- Subjects
- *
ARTIFICIAL intelligence , *BIBLIOMETRICS , *MEDICAL physics , *SUPPORT vector machines , *MASS transfer , *ELECTRONIC publications , *ELECTRONIC journals - Abstract
A scientometric approach is utilized to investigate the dynamic maps of relationships among researchers, institutes, and countries in the field of Artificial Intelligence for Fluid-flow and Heat-transfer (AIFH). The Web of Science database was searched for related publications during the last 40 years (1982 and 2022). A total of 6151 articles were discovered, which were analyzed in detail. Using a bibliometric analysis, the most relevant and most cited sources of publications were identified. The most active researchers, institutions, and countries leading AIFH were reported. Then, the worldwide dynamic collaboration maps and coupling maps of relationships were reported. The Islamic Azad University (1893 T.C.), the Chinese Academy of Sciences (1374 T.C.), and Beihang University (1266 T.C.) were the most influential institutes in AIFH. The most influential countries were China, the USA, and Iran. The dynamic map of collaborations shows a good worldwide collaboration distribution. The USA and China established the most connection with the rest of the world. ANNs are the most studied topic (19.5% of publications), followed by Machine Learning (17.9%) and Neural Networks (15.4%). Support Vector Machines lag behind at 1.4%. ANNs boast the highest total citations (17,064) and H-index (63). Most ANIF papers were published by Medical Physics (119 T.P.). Half of the articles in AIFH were published by five journals of Medical Physics, Neurocomputing, International Journal of Heat and Mass Transfer, International Journal of Radiation Oncology Biology Physics, and IEEE Access. The International Journal of Heat and Mass Transfer received the most citations in AIFH. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
31. Gasification potential of municipal solid waste in Iran: Application of life cycle assessment, risk analysis, and machine learning.
- Author
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Khoshgoftar Manesh, Mohammad Hasan, Davadgaran, Soheil, and Mousavi Rabeti, Seyed Alireza
- Subjects
- *
PRODUCT life cycle assessment , *SOLID waste , *MACHINE learning , *RISK assessment , *ARTIFICIAL neural networks , *COAL gasification , *ENVIRONMENTAL risk , *FOOTPRINTS , *GENETIC programming - Abstract
This paper focuses on a comprehensive solution for dry municipal solid waste (MSW) management with describes the scenario of the gasification process. For this purpose, the potential of implementing the MSW gasification process in Southeast Asia (Iran) with three agents of air, steam, and air-steam is investigated. In order to manage the MSW gasification process as accurately as possible in the study area, a thermodynamic, exergy, economic, environmental, carbon footprint, water footprint, ecological emergy, and risk assessment for the three mentioned gasification agents were carried out in the most populated cities of Iran. In the capital of Iran (Tehran) with the largest population and as a result of largest MSW production, the potential of the gasification process has been investigated at different times (10 consecutive years and 12 months of a year). Finally, by combining artificial neural networks and genetic programming, comprehensive relationships have been established to predict the thermodynamic conditions of gasification with an air-steam agent. The general results of the survey indicate that gasification with air agents has good potential for most regions. The use of the steam agent has created worse economic, environmental, and risk conditions than the other two agents. Investigating the potential of the gasification process in Tehran shows that this city has a good potential to implement this process compared to other cities in Iran, and the most suitable location for establishing the gasification process is the 4th region of this city. [Display omitted] • Potential of municipal solid waste (MSW) gasification for all Iranian cities. • Comparison of using air, steam, and air-steam agents for MSW gasification. • The payback period of air agent MSW gasification is lower than other agents. • Machine Learning used for prediction of the behavior of MSW gasification. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
32. Energy-water-food security nexus in mung bean production in Iran: An LCA approach.
- Author
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Abad-González, J., Nadi, F., and Pérez-Neira, D.
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MUNG bean , *ECOLOGICAL impact , *ANIMAL products , *FOOD security , *ENERGY consumption , *WATER use - Abstract
[Display omitted] • Energy-Water-Food security nexus of mung bean production in Iran is analyzed. • Non-renewable cumulative energy demand is estimated at 27.4 MJ/kg of beans. • Total water footprint is estimated at 1.55 m3/kg of beans. • On-farm production concentrates the largest environmental impacts (40% to 96%). • Cooking accumulates over 50% of the carbon footprint. Mung bean is a very important crop in Iran in both socio-economic and nutritional terms. However, although discussions on food and food security increasingly include sustainability issues, there are no precedents in academic literature that analyze in depth the nexus between energy, water use and food security in relation to this crop in Iran from an agri-food system approach. Therefore, our main objective is to assess the energy-water-food security (EWFs) nexus and the environmental impact of mung bean production in Iran from a "cradle to fork" approach using different nutritional units (1 kg of beans, 1 kg of proteins, and 1000 kcal) and load allocation criteria. In addition, an economic analysis of the farms is carried out. The results show that the on-farm production of mung beans is the phase where the largest environmental impacts are concentrated (between 40 % and 96 % of them, including those related to water and energy use), while cooking accounts for more than 50 % of the carbon footprint. The non-renewable cumulative energy demand (NR CED) and total water footprint (TWF) per kilogram of beans ("cradle to fork") is estimated at 27.4 MJ and 1.55 m3 and the farm Net Margin (NM) is estimated at 3,677 USD per ha. The paper discusses whether mung bean is a low-impact option for protein production, especially when compared to animal products and the importance of using different functional units and load allocation criteria to address the issue of EWFs and sustainability. In this regard, further research is needed to improve the environmental efficiency of bean production, which is critical for promoting sustainable diets in line with food security goals. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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33. Real-time transient stability estimation of power system considering nonlinear limiters of excitation system using deep machine learning: An actual case study in Iran.
- Author
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Sedghi, Mahdi, Zolfaghari, Mahdi, Mohseni, Adel, and Nosratian-Ahour, Jafar
- Subjects
- *
ARTIFICIAL neural networks , *ELECTRIC transients , *CONVOLUTIONAL neural networks , *DEEP learning , *MACHINE learning , *NONLINEAR systems , *DATABASES - Abstract
One of the most important features of a reliable power system is its capability to supply the demand continuously. This continuous supply has been maintained by the transient stability of the system against large disturbances. The study of this type of stability is examined through different indicators. One of the common indicators to evaluate the transient stability of the power system is the well-known Critical Clearing Time (CCT) index. Conventional methods for calculating CCT have presented good accuracy, however, their computational cost is very high which makes them not suitable for real-time applications and real large-scale networks. Considering their ability to feature extraction of big data, deep neural networks can be utilized as reliable tools to cover these deficiencies. In this regard, to cover the shortcomings of the conventional methods, this paper proposes a method based on deep Convolutional Neural Networks (CNN) to estimate the CCT index in real-time power system applications. Moreover, to analyze a realistic case, nonlinear limiters of the excitation systems which have a considerable effect on transient stability index are considered in this study. Thanks to the using of several deep layers and the comprehensive established database, the accuracy of proposed method is appropriately high. Numerical studies on IEEE standard networks as well as a real case in Iran Power Grid (IPG) represents the advantages of the proposed method. • A deep-learning-based convolutional neural network is designed to estimate CCT index of power system. • Nonlinear limiters of the excitation system are taken into account. • A real case study in Iran grid is considered for simulation. • As a result, the transient stability of system is accurately determined in on-line manner. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
34. Reactivation of an old landslide in north–central Iran following reservoir impoundment: Results from multisensor satellite time-series analysis.
- Author
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Vassileva, Magdalena, Motagh, Mahdi, Roessner, Sigrid, and Xia, Zhuge
- Subjects
- *
LANDSLIDES , *DAM failures , *TIME series analysis , *DIGITAL image correlation , *RESERVOIR drawdown , *SYNTHETIC aperture radar , *LANDSAT satellites - Abstract
Water impoundment combined with more frequent precipitation extremes due to climate change increases landslide hazards on the slopes surrounding dam reservoirs. In situ monitoring systems in these potential landslide-prone areas are often unavailable, making landslide failures challenging to forecast. This paper describes a multisensor and multivariate remote sensing approach using data from Envisat, Sentinel-1, Landsat and PlanetScope satellites to reconstruct the spatiotemporal evolution of the mechanism and causes of the March 2019 landslide failure backside of the dam reservoir in Hoseynabad-e Kalpush village, north–central Iran. Statistical analysis and time series clustering are performed to derive the main landslide kinematic features from multitemporal interferometric synthetic aperture radar (MT-InSAR) analysis. We also exploit GIS and wavelet analysis to correlate potential external driving factors with landslide kinematics. Envisat and Sentinel-1 MT-InSAR analyses revealed that a previously stable old landslide was reactivated following reservoir impoundment in early 2013. As the reservoir water level rose during the following years up to 34 m in 2019, the landslide displacement rate gradually increased from 3.5 cm/yr to 8.4 cm/yr, and the destabilization gradually propagated upslope. At this stage, seasonal precipitation effects were detected only in the vertical component, indicating swelling and shrinkage movements of the shallower soil layer. The reactivated landslide accelerated and catastrophically failed following the exceptional precipitation in early 2019, producing a horizontal shift of >40 m, detected with optical image digital correlation. In the aftermath, the landslide continued to move with a decreasing trend until final stabilization in October 2021. Our study demonstrates how combined observations derived from multisensor satellite remote sensing data can be used to assess landslide precursors and kinematics, as well as the influence of climatic and anthropogenic factors on the instability of slopes surrounding water reservoirs. This is especially relevant in data-scarce areas. • Deep-seated landslide pre-, co- and post-failure analysis using satellite remote sensing. • Anthropogenic, environmental and climatic interaction in slope instability in Iran. • MT-InSAR shows landslide reactivation following impoundment in a nearby reservoir. • Slow-moving landslide failure following extreme precipitations detected using DIC. • Post-failure motion with negative quadratic decay trend linked to reservoir drawdown. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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- View/download PDF
35. Green and reliable medical device supply chain network design under deep dynamic uncertainty: A novel approach in the context of COVID-19 outbreak.
- Author
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Kalantari Khalil Abad, Amin Reza, Barzinpour, Farnaz, and Pishvaee, Mir Saman
- Subjects
COVID-19 pandemic ,MEDICAL supplies ,SUPPLY chains ,CARBON emissions ,STOCHASTIC programming ,PRECISION farming ,DRUG infusion pumps ,MEDICAL equipment - Abstract
Conditions governing industrial activities during and after global shocks with societal and economic transformations such as the COVID-19 pandemic have led to the loss of effectiveness of conventional approaches to dealing with uncertainties. The occurrence of sharp fluctuations in the essential parameters has left decision-makers in an unpredictable situation. Therefore, proactive efforts should be made to develop current approaches for adapting to new conditions. This paper establishes a strategic, tactical, and operational decision-making framework under the COVID-19 outbreak by developing a new uncertainty type called deep dynamic uncertainty. In the first step, a Mixed-Integer Linear Programming (MILP) model is proposed for the green and reliable closed-loop supply chain network design. The proposed model allows the decision-maker (DM) to manage and control co 2 emissions and e-waste generation. In the second step, a new three-step algorithm called Augmented Adjustable Column-Wise Robust Optimization (AACWRO) is first proposed. Then, by combining the proposed column-wise uncertainty with multi-stage stochastic programming (MSSP) approach, deep dynamic uncertainty is theorized for modeling the demand uncertainty under pandemic conditions. The model's performance under deep dynamic uncertainty has been carefully investigated based on the real ventilator and infusion pump supply chain network in Iran. The model under deep dynamic uncertainty, while maintaining tractability and adjustability, provides flexibility in entering data into the problem and significantly increases the coverage of modeling uncertainties. The results clearly demonstrate the efficiency of the proposed approach. The model under deep dynamic uncertainty at all levels of conservatism has on average 42.96% lower cost and 32% higher stability than the MSSP model. • Green and reliable closed-loop medical device supply chain network are studied. • A mechanism is proposed for the management of co 2 emission and e-waste generation. • Stochastic programming and novel robust optimization are considered simultaneously. • Deep dynamic uncertainty is introduced to deal with COVID-19 uncertainties. • The model efficiency is evaluated based on the ventilator and infusion pump industry. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
36. Linear LSA-NSGAII optimization: A case study in optimal switch placement in distribution network.
- Author
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Ghorbani Jouybari, Mohammad Zaher, Narm, Hossein Gholizadeh, Damchi, Yaser, and Esmaeili, Ali
- Subjects
SWITCHED reluctance motors ,METAHEURISTIC algorithms ,PARTICLE swarm optimization ,MULTICASTING (Computer networks) ,SEARCH algorithms ,DISTRIBUTED power generation ,GENETIC algorithms - Abstract
In this paper, a new hybrid of lightning search algorithm (LSA) and non-dominated sorting genetic algorithm II (NSGAII) is proposed in order to increase the accuracy and efficiency of the conventional multi-objective NSGAII. In the proposed method, the important parameters of the NSGAII are optimized using LSA. To verify the effectiveness of the proposed algorithm, it is applied to 19 well-known standard test functions, including unconstrained functions, UF1–UF7, constrained functions, CF1–CF7, Schaffer1, Schaffer2, ZDT1, ZDT2, and ZDT3. The inverted generational distance (IGD) is used to check the efficiency of the proposed algorithm. Accordingly, the proposed algorithm is compared with the most used multi-objective algorithms. Besides, the proposed algorithm is applied to a practical case study of optimal switch, including reclosers and disconnectors, placement in the presence of distributed generation (DG) sources. The distribution networks are the Roy-Billinton test system (RBTS) and a part of the real network in Mazandaran province, in Iran. The simulation results confirm the superiority of the proposed method. For example, in practical case studies, the proposed algorithm for optimal recloser placement in the real network shows 47.09% and 4.691% cost improvement compared with multi-objective particle swarm optimization (MOPSO) and NSGAII, respectively. These improvements for RBTS-BUS2 are 3.725% and 3.502%, respectively. Also, for the RBTS-BUS2, the proposed algorithm result shows 1% and 0.732% reliability improvement compared with MOPSO and NSGAII, respectively. • A new hybrid meta-heuristic multi-objective algorithm is proposed. • Lightning search algorithm, optimizes the important parameters of NSGAII. • The proposed algorithm is validated by using of 19 test problems. • The proposed method is applied on two practical optimization problem. • Optimal recloser placement is done by using the proposed HLSA-NSGAII. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
37. Analysis of social network effects on water trade in an informal water market.
- Author
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Matinju, Mohammad Hossein, Alizadeh, Hosein, Loch, Adam, and Aghaie, Vahid
- Subjects
- *
SOCIAL network analysis , *SOCIAL networks , *FREE trade , *RAINFALL , *WATER use - Abstract
This paper proposes a novel agent-based model (ABM) to assess actual informal water market (IWM) trade—a highly common form of reallocating water globally, but where analysis is challenging due to data paucity. Because, typically, there is not an integrated or centralized institution coordinating transactions in IWMs, social networks and communications between farmers play a key role. This makes applications of ABMs in the informal space appealing and useful. Survey and interview data are used for the model development via a sample of farmers in Mojen Area, Iran. Also, in the final model, some critical human behaviors (e.g. adaptability and self-interest) are described in the form of parameters and formulas, with optimum values calibrated based on the Mojen sample as well as making possible a detailed assessment of the effects on water transaction and farmers' profit margins. The result of the simulation reveals that IWM trade frees up water for use by other farmers in the Mojen area, especially when stronger social networks are in place where the average number of water transactions will be increased—about 50%. The presence of IWMs also contributes to a more stable cultivation area in dry years, where water trading helps protect perennial crops that have become an increased production system choice in recent years. Further, informal water markets help farmers to optimally use water supply in order to deal with lower rainfall years and fulfil water needs during higher rainfall years due to increasing cultivation areas. [Display omitted] • An agent-based social network model for informal water market (IWM) simulation is developed. • A method of trades and an updating rule for simulating profit margins are proposed. • Experience, prior knowledge, and land area are three factors affecting water exchanges. • IWM can greatly improve the situation of water scarcity. • IWM stimulates farmers to use water in the best way in both trading and irrigation. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
38. Optimized design of water-saving system in-slab cooling plant of Mobarakeh steel complex.
- Author
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Beni, Mahdi Hashemi, Bazofti, Milad Morad, Golkar, Babak, Saboohi, Yadollah, Mokhtari, Hamid, and Milani, Bahar
- Subjects
- *
COOLING systems , *STEEL mills , *WATER consumption , *COOLING towers , *HYBRID systems - Abstract
The aim of this paper is to provide a solution to decrease water consumption in the slab-cooling unit of Mobarakeh Steel Complex in Iran. The plan should give an hourly decline in water consumption during a one-year operation period to calculate the annual reduction in water consumption of the proposed process. Recommended solutions for the conversion scheme of an existing wet cooling tower to a dry or hybrid cooling system require modeling of the slab cooling process. The curves of temperature drop in slabs are extracted in this paper by modeling the transient heat transfer of the slabs in the cooling process. This will reduce the computational volume. Then, the design and optimization of the hybrid cooling system done by the Genetic Algorithm (GA) is investigated. Accordingly, the objective function (reducing the costs of construction, operation, waste of water during the year) is chosen by single-objective method, and the modeling of the series hybrid system is done for the off-design mode during one year. The present design is for different scenarios and various savings of water consumption. The results demonstrate that if the control system is fitted with the sensitivities of the ambient temperature and also is based on the water consumption reduction and equipment design according to reliable standards, then the annual water consumption will be reduced by 88.3% (1.89 million m3). The payback period will be 3.63 years for the proposed system. • Numerical modeling of slab cooling process in transient cooling. • Extraction of the outlet water performance map to model the hybrid in off-design. • Modeling of off design air cooler control system and wet cooling tower. • An overview of hybrid system during the year based on an optimized design. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
39. The application of a mathematical model of sustainability to the results of a semi-quantitative Environmental Impact Assessment of two iron ore opencast mines in Iran.
- Author
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Phillips, Jason
- Subjects
- *
IRON ores , *IRON mining , *MATHEMATICAL models , *QUANTITATIVE research , *ENVIRONMENTAL impact analysis - Abstract
Abstract: The paper outlines the application of a mathematical model of sustainability to an Environmental Impact Assessment (EIA) of two opencast iron ore mines in Iran. The model’s application to the EIA, which used the Folchi method, was undertaken for the purpose of indicating the potential level and nature of sustainability (if appropriate) of the two mines. The results indicated that both Chogart and Gol-e-Gohar iron ore mine were deemed to be potentially unsustainable. The results suggests the delicate balance and failure of achieving some form of sustainability in regards to mining in Iran, due to the impacts it has upon the local environment and community affected. The paper concludes as to the potential significance of the model’s application in the attainment of the goal of sustainable mining. [Copyright &y& Elsevier]
- Published
- 2013
- Full Text
- View/download PDF
40. Solving a periodic single-track train timetabling problem by an efficient hybrid algorithm
- Author
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Jamili, A., Shafia, M.A., Sadjadi, S.J., and Tavakkoli-Moghaddam, R.
- Subjects
- *
HEURISTIC algorithms , *RAILROAD tracks , *SCHEDULING software , *ARTIFICIAL intelligence , *PARTICLE swarm optimization , *SIMULATED annealing - Abstract
Abstract: Train timetabling with minimum delays is the most important operating problem in any railway industry. This problem is considered to be one of the most interesting research topics in railway optimization problems. This paper deals with scheduling different types of trains in a single railway track. The primary focus of this paper is on the periodic aspects of produced timetables and the proposed modeling is based on the periodic event scheduling problem (PESP). To solve large-scale problems, a hybrid meta-heuristic algorithm based on simulated annealing (SA) and particle swarm optimization (PSO) is proposed and validated using some numerical examples and an Iranian case study that covers the railway line between two cities of Isfahan and Tehran. [Copyright &y& Elsevier]
- Published
- 2012
- Full Text
- View/download PDF
41. The Role of Roof Shapes in Design of Green Building Systems (Case Study: Iran, BandarAbbas).
- Author
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Ghaedi, Abdolkarim, Ghaedi, Hojat, and Ghaedi, Hamed
- Subjects
SUSTAINABLE architecture ,CASE studies ,FOSSIL fuels ,PHOTOVOLTAIC cells ,ENERGY consumption - Abstract
Abstract: Iran is recognized as one of the largest fossil fuels reserves resources in the world, but it is also suffer from mismanaged consumption. The consequences of this mismanagement have been considered in Iran during recent years and authorities have raised concerns about it. Identification of the optimized orientation and tilt angle for roofs in Bandarabbas -South of Iran- in order to achieve the maximum daytime heat gain by photovoltaic cells and minimum energy loss at night in winter is the main purpose of this paper. So this paper make a comparison in three type of roofs in Bandarabbas (slab, 30-60 and 45). The results show that 30 -60 roof is the most efficient roof in order to saving energy in Bandarabbas. [Copyright &y& Elsevier]
- Published
- 2012
- Full Text
- View/download PDF
42. A multi-objective mathematical model to redesign of global sustainable bioenergy supply network.
- Author
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Razm, Sobhan, Nickel, Stefan, and Sahebi, Hadi
- Subjects
- *
GEOGRAPHIC information systems , *MATHEMATICAL models , *GEOGRAPHIC information system software , *FOREST biomass , *DISTRIBUTION planning , *AUGMENTED reality , *FOSSIL fuels - Abstract
• Developing a multi-objective optimization model to redesign of GSBE-SNR considering incoterms. • Integrating social objectives into multi-objective model. • Greenhouse gas emission savings are maximized in the global sustainable bioenergy network. • Using GIS software to draw precise maps of the studied countries before and after redesigning. • Iran-o-Armenia case study with taking the sustainability conditions of each country into account. In today's industrial world, depletion of fossil resources and the adverse environmental effects of consuming fossil fuels have become one of the serious challenges in sustainable development of the societies. In recent years, substantial attention has been paid to using biomass for producing bioenergy in order to increase economic performance, reduce environmental effects, and providing new opportunities in different societies in pursuit of sustainable development. The complexities related to procurement, logistics, technology selection, raw material management (biomass), and product distribution planning are the main causes of using the optimization models to design the bioenergy supply chains. On the other hand, the globalization of economy and industry increased the significance of the subjects related to global logistics and the ecological and social objectives of the countries have undeniable influences on each other. Hence, in this paper, a mathematical model has been developed to redesign a global bioenergy supply network. This model has simultaneously studied the economic, environmental, and social objectives and the environmental coefficients of the model were calculated using SimaPro software. The multi-objective model was solved by augmented ɛ-constraint method and the decision makers were informed of the obtained Pareto solutions. Data taken from the study on Iran and Armenia was used to validate the model and the Geographic information system (GIS) software was used with the goal of studying the geographical map of each country more accurately. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
43. Variable fleet size and mix VRP with fleet heterogeneity in Integrated Solid Waste Management.
- Author
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Asefi, Hossein, Shahparvari, Shahrooz, Chhetri, Prem, and Lim, Samsung
- Subjects
- *
INTEGRATED solid waste management , *VEHICLE routing problem , *INTEGRATED waste management , *WASTE management , *SOLID waste management , *TRANSPORTATION costs - Abstract
The Integrated Solid Waste Management (ISWM) is a recent effective tool to manage with the growing challenge of Municipal Solid Waste (MSW). The ISWM integrates all the system components (i.e. transfer, treatment, recycling and disposal of wastes) to enhance the sustainable waste management whilst reducing operational costs. In this paper, we investigate an integrated framework of the Fleet Size and Mix Vehicle Routing Problem (VRP) to optimize the cost-effective ISWM system. A novel bi-objective Mixed-Integer Linear Programming (MILP) model is developed to concurrently minimize the transportation cost in the entire waste management system and total deviation from the fair load allocation to transfer stations. A complete ISWM system with all interdependent facilities and multiple technologies, is developed to address a tri-echelon Fleet Size and Mix VRP with a heterogeneous fleet of vehicles under multiple technologies and waste compatibility constraints. The model was solved for both the Preemptive and Non-Preemptive conditions using Lexicographic and Goal Programming optimization approaches. The model was tested on a case of ISWM in the Southern part of Tehran, Iran. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
44. A novel optimization model for dynamic power grid design and expansion planning considering renewable resources.
- Author
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Bayatloo, Fatemeh and Bozorgi-Amiri, Ali
- Subjects
- *
ELECTRIC power distribution grids , *RENEWABLE energy sources , *RENEWABLE natural resources , *ELECTRIC power consumption , *DYNAMIC models , *NET present value , *ELECTRICITY pricing - Abstract
Growing demand for electricity has made power grid design and expansion planning one of the main challenges in power industry management. In recent years, reconfiguration of existing power grid along with the adoption of renewable power generation leads to a significant reduction in expansion costs and GHG emissions. This paper offered a novel optimization model to address the design and planning of power grid expansion in a dynamic environment. Besides capacity planning, the model also determines location and time to construct new facilities. This research aims to satisfy demand by considering reduction in net present value of costs and increase in network efficiency. Electricity tariff and cost of load shedding differ according to different power consumers (i.e., residential, commercial, industrial and agricultural). Due to inherent intermittency in renewable energy resources and their subsequent impact on the entire power grid, different scenarios are generated, and the model is solved using the sample average approximation method. Eventually, validation of the proposed model and sensitivity analysis is carried out through a real case study in Iran. Computational results demonstrate the practicality of the stochastic model and show integration of renewable power plants would decrease the transmission and sub-transmission network costs. • A novel optimization model is developed to determine the power grid's design parameters and expansion mode. • Discretization of the electricity demand in different sectors is considered. • Sub-transmission systems alongside with renewable resources are incorporated in the proposed network. • The incentive by the government is considered for private enterprise to invest in renewable energy. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
45. Informing energy justice based decision-making framework for waste-to-energy technologies selection in sustainable waste management: A case of Iran.
- Author
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Fetanat, Abdolvahhab, Mofid, Hossein, Mehrannia, Mojtaba, and Shafipour, Gholamreza
- Subjects
- *
WASTE management , *REFUSE as fuel , *ANALYTIC network process , *SUPPLY chain management , *WASTE products as fuel , *ANAEROBIC digestion - Abstract
Due to problems such as limited land area for waste disposal and waste-borne diseases, waste management organizations have increasingly been offering technologies for recovering energy from waste. These technologies can help governments, local authorities, developers and investors for mitigating climate change and building sustainable societies. The suitable waste-to-energy production technology selection is a complex issue in waste supply chain management that must not only be assessed in terms of both socioeconomic and environmental criteria. With the purpose of balance between energy trilemma issues in the context of waste-to-energy generation and develop sustainable waste management strategies in the waste chain, energy justice criteria must also be taken into consideration. The paper considers the application of an integrated multi-criteria decision-making model consisting of fuzzy decision-making trail and evaluation laboratory method, the analytic network process and the simple additive weighting approaches. The integrated method can be applied to select the suitable technology in a sustainable manner, taking into account energy justice criteria. The applicability of proposed model is demonstrated by a case study of the technology selection in the city of Behbahan, Iran. It includes various technologies for waste-to-energy generation and ranks technologies from the most to least preferred as: Anaerobic digestion, Gasification, Pyrolysis, and Incineration. Image 10859 • We focused on the case of Iran for waste-to-energy technologies selection. • Anaerobic digestion, Gasification, Pyrolysis and Incineration items are applied. • The criteria of the decision making are the energy justice principles. • The energy justice concept refers to the sustainability criteria. • The combination of decision-making methods is employed. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
46. An empirical analysis of the relationship between the environment, economy, and society: Results of a PCA-VAR model for Iran.
- Author
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Mamipour, Siab, Yahoo, Masoud, and Jalalvandi, Sahar
- Subjects
- *
IMPULSE response , *ENVIRONMENTAL indicators , *EMPIRICAL research , *VECTOR autoregression model , *PRINCIPAL components analysis - Abstract
Highlights • Iran is among the top ten CO 2 emitters in the world. • Achieving sustainable development undermined by heavy reliance on fossil fuels. • Environmental indicators are not consistent with the society and the economy. • However, improving the social indices strengthens the environmental indicators. • Altering the environmental subsystem resulted in convergence of sustainable system. Abstract Iran is among the top ten CO 2 emitters in the world and has pledged to reduce such emissions by up to 12 percent by 2030 through various policies and strategies. However, achieving this is somewhat undermined by the country's heavy reliance on fossil fuels which contributes to environmental pollution and depletion of natural resources. It is therefore important to have an understanding of the economic, social, and environmental subsystems and their interactions in order to formulate a suitable development path or model. Due to the lack of comprehensive studies on the current situation and the dynamics among these variables, this paper provides a multi-stage analysis of the issues based on data from 1992 to 2015 to construct the principal component analysis (PCA) combined index for each subsystem. Then, the interactions among the subsystems are investigated over the short- and long-terms using the vector autoregressive (VAR) model. The results of the PCA show that Iran lacks a balanced sustainable development approach as improvements in environmental indicators do not match those of the society and the economy indices. Further, the associated time path for the economic and societal indices depicts an increasing trend over time, especially in the economy index and that, since 2010, this subsystem has overtaken the societal index. Estimations of the VAR model, impulse response functions, and variance decomposition analysis show that the country's economic development has seriously undermined the environment even as improving the social indices has strengthened the environmental indicators. The interactions among subsystems show that economic development of the country took little consideration of environmental issues. This is the main reason for the backwardness of the environmental indices and its divergence from economic and societal indices. It is clear that assuming equal rates of growth for all subsystems have not produced a balanced development path. For Iran to achieve her sustainable development goals there should be increased focus on the environmental subsystem with the overall system converging symmetrically when the high growth rate assumption (double) is applied for this index compared with the societal and economical indices. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
47. Development and optimization of a horizontal carrier collaboration vehicle routing model with multi-commodity request allocation.
- Author
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Vaziri, Sh., Etebari, F., and Vahdani, B.
- Subjects
- *
VEHICLE models , *VEHICLE routing problem , *PROFIT-sharing , *SHOPPING mobile apps , *INTEGER programming , *GENETIC algorithms - Abstract
This paper proposes a new Vehicle Routing Problem (VRP) with fair Carrier Collaboration (CC) which split multi-pickup and delivery services are considered for serving customers. This study has focused on VRP and serving customers with several commodity requirements from different geographically scattered suppliers subject to constraints on the vehicle capacity. A Mixed Integer Programming (MIP) model to maximize the total profit and the fair sharing of profit among the carriers by considering the travel time minimization is developed. Each carrier with its limited capacity can have reserved requests which must be served by itself and selective requests which can be served by itself or other vehicles or not served at all. There are various applications of the proposed model in the environment which can help reducing number of vehicles serving to the customers and eliminating empty back hauls. A Genetic Algorithm (GA) is proposed to solve this problem due to its Non-deterministic Polynomial-time hard (NP-hard) nature. In addition, Variable Neighbourhood Search (VNS) method is developed for improving the quality of initial solutions. Some instances are generated at different scales to evaluate the algorithm's performance by comparing the results of an exact optimal solution with that of the proposed algorithm. The obtained results demonstrate the efficiency of the proposed algorithm in providing reasonable solutions within an acceptable computational time. The algorithm is also tested for an online shopping website in Tehran, Iran. The test outcome shows that the proposed model returns a better benefit compared to the manual methods. The results of sensitivity analysis suggest that increasing the fairness coefficient among carries can led to a decrease in the total obtained profit. • Develop a novel carrier collaboration routing problem model with multi-commodity service and sharing fair profit. • Extend the carrier collaboration to general problems with in many-to-one problem pickup and delivery category. • Solve the problem with genetic algorithm with a new specific chromosome representation. • Result of implementation of the model in the real-world and sample instances. • Sensitivity analysis of the model based on fair distribution between participants is conducted. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
48. Improving spatial accuracy of urban growth simulation models using ensemble forecasting approaches.
- Author
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Shafizadeh-Moghadam, Hossein
- Subjects
- *
URBAN growth , *ARITHMETIC mean , *SIMULATION methods & models , *ARTIFICIAL neural networks - Abstract
This paper aims to improve the spatial accuracy of urban growth simulation models and clarify any associated uncertainties. Artificial Neural Networks (ANNs), Random Forest (RF), and Logistic Regression (LR) were implemented to simulate urban growth in the megacity of Tehran, Iran, as a case study. Model calibration was performed using data between 1985 and 1999 whereas the data between 1999 and 2014 was used for model validation. First of all, Transition Index Maps (TIMs) were computed by means of each model to assess the potential of urban growth for each cell. Using the standard deviation, consensus between the TIMs was evaluated. Because the TIMs of the individual models manifested discrepancies, they were combined using a number of ensemble forecasting approaches including median, mathematical average, principle component analysis, and weighted area under the total operating characteristic. The individual and combined TIMs were then put into Cellular Automata (CA) to simulate the future pattern of urban growth in Tehran. The results were evaluated in two stages. At first, the TIMs were evaluated by means of Total Operating Characteristics (TOC), and then a set of statistical indices was used to evaluate the spatial accuracy of the simulated urban growth maps. The best result was obtained by median ensemble forecasting, whereas the LR model showed the lowest level of accuracy. In similar studies, it is recommended to implement and compare different ensemble methods when integrating individual models. • We compared the effectiveness of ANNs, RF and LR for urban growth modelling. • Standard error map indicated discrepancy among the results of individual models. • Various ensemble forecasting approaches were proposed to combine individual models. • Mean ensemble forecasting created more accurate simulated maps. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
49. Public transport accessibility measure based on weighted door to door travel time.
- Author
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Tahmasbi, Behnam and Haghshenas, Hossein
- Subjects
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TIME travel , *PUBLIC transit , *LOCAL transit access , *CENSUS , *PRINCIPAL components analysis , *BUS stops - Abstract
Providing accessibility by public transportation is one of the main concerns in sustainable transportation development. An appropriate accessibility index should not only take transportation and land use into account but also the people who want to attend activities via the transport system. Travel time as the most common variable is used to indicate the role of transportation. A trip with public transport includes different parts: walking from the origin point to the bus stop or from the bus stop to the destination point, waiting for the bus to arrive, and in-vehicle time. These different parts have different weight values for passengers which affect their tendency towards traveling by public transportation. In this paper, a GIS-based multimodal gravity model is developed based on the weighted door to door travel time to compute accessibility by public transportation. Five main distinct urban activities including employment, education, healthcare, shop, recreation opportunities, and services are considered and the accessibility of the target population at the census block level to these destinations through public transportation is computed. In the next step, in order to consider all activities together and report a single unique index, the five computed accessibility indices are integrated into a composite index using a principal component analysis (PCA). The integrated accessibility measure helps to get an insight into the relative distribution of the benefits of public transportation and its interaction with the land use. The proposed method is applied to the City of Isfahan in Iran. The results indicate where places, for each activity and in overall, would benefit from the better land use and public transportation interaction and where regions would suffer from low accessibility level. This work provides a methodological framework as a tool for measuring the performance of public transportation and its interaction with the land use pattern. • Measuring the accessibility at block polygon level based on weighted door to door travel time, demand, and attraction • Developing a multimodal network to estimate travel time of public transportation including walking, waiting, and in-vehicle • Measure accessibility to five main urban activities and determine the level of accessibility and spatial equity realistically • Applying principal components analysis to composite accessibility to different urban activities into a single unique index. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
50. Modelling the National Knowledge Ecosystem: Policy Implications for Iran.
- Author
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Entezari, Yaghoub
- Subjects
STRUCTURAL equation modeling ,ECOSYSTEMS - Abstract
Most researchers have argued that the knowledge required for economic development has produced, exploited, and disseminated within the framework of the ecosystem of knowledge. Knowledge ecosystems have created at the national level in the context of economic, social, cultural, legal and political systems, and form the national knowledge ecosystem in interaction. The structure of this ecosystem has not been analysed so far. Therefore, the purpose of this paper is to present theoretical and empirical analysis of the structure of this ecosystem through modelling. For this purpose, the international database of countries and "structural equation modelling" techniques have been used. Research results show that in addition to knowledge inputs, capabilities and processes, openness, freedom economies, knowledge culture and good governance are fundamental components of the national knowledge ecosystem and play an essential role in the production, use and dissemination of knowledge. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
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