431 results on '"Tian, Guangdong"'
Search Results
202. An Accurate de novo Algorithm for Glycan Topology Determination from Mass Spectra.
- Author
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Dong, Liang, Shi, Bing, Tian, Guangdong, Li, YanBo, Wang, Bing, and Zhou, MengChu
- Abstract
Determining the glycan topology automatically from mass spectra represents a great challenge. Existing methods fall into approximate and exact ones. The former including greedy and heuristic ones can reduce the computational complexity, but suffer from information lost in the procedure of glycan interpretation. The latter including dynamic programming and exhaustive enumeration are much slower than the former. In the past years, nearly all emerging methods adopted a tree structure to represent a glycan. They share such problems as repetitive peak counting in reconstructing a candidate structure. Besides, tree-based glycan representation methods often have to give different computational formulas for binary and ternary glycans. We propose a new directed acyclic graph structure for glycan representation. Based on it, this work develops a de novo algorithm to accurately reconstruct the tree structure iteratively from mass spectra with logical constraints and some known biosynthesis rules, by a single computational formula. The experiments on multiple complex glycans extracted from human serum show that the proposed algorithm can achieve higher accuracy to determine a glycan topology than prior methods without increasing computational burden. [ABSTRACT FROM PUBLISHER]
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- 2015
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203. Size character optimization for measurement system with binocular vision and optical elements based on local particle swarm method.
- Author
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Xu, Guan, Lu, Xue, Li, Xiaotao, Su, Jian, Tian, Guangdong, and Sun, Lina
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BINOCULAR vision ,PARTICLE swarm optimization ,MONOCULAR vision ,OPTICAL imaging sensors ,DECONVOLUTION of digital images ,DIGITAL cameras - Abstract
The size character, which represents the relationship of the size variables of a binocular vision model, is studied to determine the optimal structure of the measurement system. An optimal objective function is constructed to minimize the system area. The optimal solution with the constraint of the virtual baseline distance is obtained from the particle swarm optimization (PSO) algorithm. A case study shows that when the virtual baseline is 1300 mm, the optimal parameters are: the real baseline distance is 600 mm, the bottom distance between the two smaller mirrors is 120 mm, the distance from a smaller mirror to the camera is 600 mm, the distance from a larger mirror to the camera is 700 mm, the angle between the smaller mirror and baseline is 15°, the angle between the large mirror and baseline is 30°, larger mirror is 500 mm long, then the optimal system area is 0.838 m. [ABSTRACT FROM AUTHOR]
- Published
- 2015
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204. Design and finite element analysis of shaking table for fatigue test of high speed train transmission system.
- Author
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Gong Haibin, Zou Xiuqing, Su Jian, Zhang Donglin, Tian Guangdong, and Liu Hongfa
- Published
- 2011
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205. Disassembly sequence optimization for automotive product based on probabilistic planning method.
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Liu Ruijun, Tian Guangdong, Zhang Xueyi, Zhao Anyan, Wang Xiaolan, and Niu Qingning
- Published
- 2011
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206. An Uncertain Random Programming Model for Project Scheduling Problem.
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Ke, Hua, Liu, Huimin, and Tian, Guangdong
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PRODUCTION scheduling ,RANDOM variables ,MATHEMATICAL programming ,UNCERTAINTY (Information theory) ,RESOURCE allocation ,INDUSTRIAL costs ,GENETIC algorithms - Abstract
Project scheduling problem (PSP) is to determine the resource allocation schedule for the trade-off between the project cost and the completion time. In this paper, PSP in the environment with uncertainty and randomness simultaneously is considered. In detail, the concepts of uncertain variable and uncertain random variable are introduced. Based on some concepts and theorems of chance theory, an uncertain random project scheduling model is built. For some special case, the proposed uncertain random programming model is transformed to a crisp mathematical programming model. Besides, uncertain random simulation techniques and genetic algorithm are integrated into a hybrid intelligent algorithm for searching the quasi-optimal schedule. [ABSTRACT FROM AUTHOR]
- Published
- 2015
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207. Fuzzy cost-profit tradeoff model for locating a vehicle inspection station considering regional constraints.
- Author
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Tian, Guangdong, Ke, Hua, and Chen, Xiaowei
- Abstract
Facility location allocation (FLA) is one of the important issues in the logistics and transportation fields. In practice, since customer demands, allocations, and even locations of customers and facilities are usually changing, the FLA problem features uncertainty. To account for this uncertainty, some researchers have addressed the fuzzy profit and cost issues of FLA. However, a decision-maker needs to reach a specific profit, minimizing the cost to target customers. To handle this issue it is essential to propose an effective fuzzy cost-profit tradeoff approach of FLA. Moreover, some regional constraints can greatly influence FLA. By taking a vehicle inspection station as a typical automotive service enterprise example, and combined with the credibility measure of fuzzy set theory, this work presents new fuzzy cost-profit tradeoff FLA models with regional constraints. A hybrid algorithm integrating fuzzy simulation and genetic algorithms (GA) is proposed to solve the proposed models. Some numerical examples are given to illustrate the proposed models and the effectiveness of the proposed algorithm. [ABSTRACT FROM AUTHOR]
- Published
- 2014
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208. An integrated cultural particle swarm algorithm for multi-objective reliability-based design optimization.
- Author
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Li, Zhongkai, Tian, Guangdong, Cheng, Gang, Liu, Houguang, and Cheng, Zhihong
- Subjects
PARTICLE swarm optimization ,MULTIDISCIPLINARY design optimization ,ELITISM ,GENETIC algorithms ,RELIABILITY in engineering ,PERFORMANCE evaluation - Abstract
Uncertainties in design variables and problem parameters are often inevitable in multi-objective optimizations, and they must be considered in an optimization task if reliable Pareto optimal solutions are to be sought. Multi-objective reliability-based design optimization has been raised as a question in design for reliability, but the disadvantages of fixed evolutionary parameters, nonuniformly distributed Pareto optimal solutions and high computational cost hinder engineering applications of reliability-based design. To deal with it, this work proposes an integrated multi-objective cultural-based particle swarm algorithm to solve the double-loop reliability-based design optimization. In the inner optimization loop, the cultural space is composed of the elitism, situational and normative knowledge to adjust the parameters for swarm space, and the crowding distance ranking is introduced to update the global and local optimum and control the maximum number of solutions in elitism knowledge. The hybrid mean value method is improved to perform reliability analysis in the outer loop to suit both concave and convex types of performance functions. In addition, the car side-impact and the injection molding machine are chosen as multi-objective reliability design examples to demonstrate the effectiveness of the proposed approach. Simultaneously, results of car side-impact problem are compared with two traditional multi-objective reliability optimization algorithms, i.e., nondominated sorting genetic algorithm and crowding distance ranking-based multi-objective particle swarm optimizer, to assess the efficiency of the proposed approach. The results denote the proposed cultural-based multi-objective particle swarm optimizer is effective and feasible to solve the reliability-based design optimization problems. [ABSTRACT FROM AUTHOR]
- Published
- 2014
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209. Multiple Spatiotemporal Broad Learning for Real-Time Temperature Estimation of Lithium-Ion Batteries
- Author
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Xu, Kangkang, Fan, Yajun, Zhu, Chengjiu, Tian, Guangdong, and Hu, Luoke
- Abstract
The temperature estimation of lithium-ion batteries (LIBs) is of great significance to their thermal management and intelligent operation. Due to different working conditions and unknown external disturbance, batteries often need to work at a large operating range with multiple working points. However, direct global modeling and persistently exciting experiment in a large working region are very costly in practical. Complex spatiotemporal coupling and infinite-dimensional nature further make the problem more difficult. To address the above problems, a novel multiple spatiotemporal modeling method is proposed based on incremental spatiotemporal broad learning (ST-BL) and adaptive ensemble learning (EL) for the temperature prediction of batteries. First, the thermal process is identified through several local spatiotemporal domains using density peak clustering. To solve the complex spatiotemporal coupling problem, a novel ST-BL that introduces a spatial kernel function into BL is developed to model each local spatiotemporal domain. Further, the multiple ST-BL model is obtained by adaptive EL of all local models. In addition, to improve the adaptive ability of the model to the current state, incremental learning is performed on local models using newly arrived samples. Since the proposed multiple spatiotemporal modeling method involves a multi-modeling mechanism, it can achieve higher accuracy and efficiency than the traditional global single spatiotemporal modeling method, which is validated by an LIB experiment.
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- 2023
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210. Expected energy analysis for industrial process planning problem with fuzzy time parameters
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Tian, Guangdong, Chu, Jiangwei, Liu, Yumei, Ke, Hua, Zhao, Xin, and Xu, Guan
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PRODUCTION planning , *ENERGY consumption , *COMPUTER simulation , *GENETIC algorithms , *FUZZY systems , *MATHEMATICAL models , *NUMERICAL analysis , *MANUFACTURING processes - Abstract
Abstract: Industrial process planning is to make an optimal decision in terms of resource allocation. The planning objective can be to minimize the time required to complete a task, maximize customer satisfaction by completing orders in a timely fashion and minimize the cost required to complete a task. Based on time and energy consumption in an industrial process planning problem, a novel energy analysis method is proposed to solve it. According to different constraints and credibility theory, typical expected value models of energy for it are presented. In addition, a hybrid intelligent optimization algorithm integrating fuzzy simulation, neural network and genetic algorithm is provided for solving the proposed expected value models. Some numerical examples are also given to illustrate the proposed concepts and the effectiveness of the used algorithm. [Copyright &y& Elsevier]
- Published
- 2011
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211. Accelerated performance optimization of drive axle housings based on the pseudo-damage reservation method
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Pan, Zhexian, Yang, Chaohui, Liu, Zongqiang, Liu, Benyou, Yang, Jian, Tian, Guangdong, Zhang, Hongxin, Huang, Leitang, and Zhang, Tiezhu
- Abstract
[Display omitted]
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- 2022
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212. Recycling of spent Lithium-ion Batteries: A comprehensive review for identification of main challenges and future research trends
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Tian, Guangdong, Yuan, Gang, Aleksandrov, Anatoly, Zhang, Tiezhu, Li, Zhiwu, Fathollahi-Fard, Amir M., and Ivanov, Mikhail
- Abstract
With the rapid development of electric vehicles, the disposal of retired lithium batteries is a grand challenge for the waste management based on reliability, efficiency and sustainability criteria. Majority of studies in the literature review, have focused on the minimization of environmental pollution while maximizing economic profits. However, the literature is still in favor of different reliability, efficiency and sustainability criteria which are urgent and essential for the recycling of spent lithium-ion batteries (SLIBs). To this end, this study does a comprehensive review on existing methods, key issues, and technical challenges in the field of SLIBs recycling. The significant contributions of this work are to systematically explain the pretreatment process, leaching process, chemical purification process, and industrial applications. Finally, future research opportunities and managerial insights in the field of SLIBs recycling are discussed while introducing smart, intelligent and sustainable recycling of SLIBs.
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- 2022
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213. An energy-efficient method of laser remanufacturing process
- Author
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Jiang, Xingyu, Tian, Zhiqiang, Liu, Weijun, Tian, Guangdong, Gao, Yun, Xing, Fei, Suo, Yingqi, and Song, Boxue
- Abstract
With the global energy shortages and the increasing concerns of environmental protection in various countries, energy consumption optimization in laser remanufacturing has attracted much attention. To address the problems of large energy consumption and high cost in the laser remanufacturing process, the energy consumption characteristics and mechanism of the laser remanufacturing process are analyzed in this work. Then an energy consumption model of the laser remanufacturing process is established. Moreover, an optimization model of laser remanufacturing process parameters with objectives of energy consumption, powder utilization rate, hardness and aspect ratio is formulated. A novel non-dominated sorting genetic algorithm-II (NSGA-II) based on adaptive crossover probability and multi-crossover operators is proposed to solve the model. In this way, the optimal process parameters are obtained by the improved Technique for Order Preference by Similarity to an Ideal Solution (TOPSIS) method. Finally, some remanufacturing experiments are carried out on the LDM4030 laser remanufacturing equipment. The results show that the model and algorithm presented in this work can effectively reduce energy consumption, improve powder utilization rate and ensure the quality of cladding. The research results of this work can provide an effective way for an energy-efficient laser remanufacturing process and give reference to the energy consumption optimization of other laser surface engineering technologies, such as laser shock strengthening and laser cleaning.
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- 2022
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214. Implementation of solar energy in smart cities using an integration of artificial neural network, photovoltaic system and classical Delphi methods.
- Author
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Ghadami, Nasim, Gheibi, Mohammad, Kian, Zahra, Faramarz, Mahdieh G., Naghedi, Reza, Eftekhari, Mohammad, Fathollahi-Fard, Amir M., Dulebenets, Maxim A., and Tian, Guangdong
- Subjects
ARTIFICIAL neural networks ,PHOTOVOLTAIC power systems ,SMART cities ,DELPHI method ,ENERGY consumption forecasting ,ELECTRIC power consumption ,SOLAR energy - Abstract
• Data mining of electrical energy consumption in home uses of Mashhad, Iran with extracting the consumption patterns. • Simulating implementation of a PhotoVoltaic (PV) system in the user's home. • Designing the motivation algorithm for Transformational Participation (TP) energy harvesting in a smart city. • Analyzing the sensitivity of future conditions by scenario wizard computing. Energy supply of megacities is considered as an active research topic in the new aspects of urban management, especially in developing countries like Iran. With an introduction to the sustainable development goals, the smart city concept presents a novel idea for providing energy in a city with the use of Artificial Intelligence (AI), renewable energy, such as Photovoltaic (PV) technologies, and Transformational Participation (TP) based on motivational programs for citizens. This study aims to evaluate the electrical energy consumption in Mashhad, Iran, based on machine learning tools and present the dynamic strategies for promoting citizens' willingness for renewable energy generation based on the experts' knowledge. The main novelty of this research is simultaneous application of Artificial Neural Network (ANN) and statistical analysis for creating a Decision Support System (DSS). Then, the solar energy potential is appraised by the PV system simulation tool during one year in our case study in Mashhad, Iran. Furthermore, a Classical Delphi (CD) method is applied for motivational strategies and further TP implementation. In particular, the motivational strategies are suggested by 45 experts and then are prioritized in sequential expert meetings. The outcomes of this research indicate that the ANN model can successfully forecast the electrical energy consumption in summer and winter periods with a 99% accuracy. Then, based on the solar energy computations in the PV system, the peak of electrical energy consumption can be controlled in the hottest and coldest months. Last but not least, the superposition of experts' and citizens' opinions reveal A4 (sharing benefits of optimized costs with the citizens by solar energy generation), B2 (reducing the electrical energy cost for solar energy generation, especially in peak times) and C1 (creating the energy coin in the city with credits instead of spending money in urban activities fits to solar energy generation) as the main motivational strategies for solar energy generation in short, middle and long-term planning horizons. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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215. Integrated remanufacturing scheduling of disassembly, reprocessing and reassembly considering energy efficiency and stochasticity through group teaching optimization and simulation approaches.
- Author
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Fu, Yaping, Zhang, Zhengpei, Liang, Pei, Tian, Guangdong, and Zhang, Chaoyong
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DISCRETE event simulation , *DISCRETE systems , *ENERGY shortages , *POLLUTION , *CUSTOMER satisfaction , *REMANUFACTURING - Abstract
The energy crisis and environmental pollution are receiving increasing attention from governments and communities. This study researches energy-aware remanufacturing systems. Remanufacturing aims to reuse valuable resources from end-of-life products and produce as-new products. Since remanufacturing systems involve a series of disassembly, processing and assembly operations, remanufacturing schedule integrates disassembly, processing and assembly shops. A multi-objective scheduling of remanufacturing systems is proposed, considering workstation use, energy consumption and customer satisfaction simultaneously. A chance-constrained programming model is established to minimize makespan and energy consumption while satisfying total tardiness requirements. A hybrid method is developed, using group teaching optimization and a discrete event simulation system, which can seek and evaluate potentially favourable solutions. The approach is validated on a group of test instances using well-known methods. The results reveal that this method can find non-dominated solutions with well-converged and well-diversified performance, verifying its advantages in providing informed decisions for managers and engineers. [ABSTRACT FROM AUTHOR]
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- 2024
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216. Scheme selection of design for disassembly (DFD) based on sustainability: A novel hybrid of interval 2-tuple linguistic intuitionistic fuzzy numbers and regret theory.
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Wang, Wenjie, Tian, Guangdong, Zhang, Tongzhu, Jabarullah, Noor H., Li, Fangyi, Fathollahi-Fard, Amir M., Wang, Danqi, and Li, Zhiwu
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NUMBER theory , *FUZZY numbers , *SUSTAINABLE design , *SUSTAINABILITY , *DESIGN techniques , *HAZARDOUS substances - Abstract
Design for disassembly (DFD) is an essential design technique to consider the disassembly and recyclability of a product at the initial design stage. An efficient DFD technique provides the disassembling and recycling easily. However, the recent trends of disassembling and recycling are to consider the aspects of environmental and social sustainability. Due to shortage of energy and deterioration of the ecological environment, the sustainable production is an active research topic to use the economic and social benefits as the evaluation standard of a design scheme as well as its environmental characteristics. This paper provides a new approach for DFD based on sustainability. In this regard, a hybrid multi-attribute decision making (MADM) method integrating the regret theory (RT) and the entropy weighting method is firstly developed. To implement the proposed approach, an eight-criterion evaluation system of schemes based on sustainability including the factors of disassembly energy consumption, disassembly accessibility, fastener ratio, toxic material proportion, material recovery rate, disassembly expense, production and use noise, and waste emissions, is established. To better describe the fuzziness of human thinking and to avoid information loss/distortion during information aggregation phases, the evaluation information given by experts is presented by our proposed interval 2-tuple linguistic intuitionistic fuzzy numbers (I2LIFNs). The weight vector of index structure is determined by the entropy weighting method under the fuzzy environment. The RT is employed to get the final order of alternatives by considering and quantitating both the risk attitude and the regret attitude of experts. To show the applicability of this study, a case study including four kinds of refrigerator schemes, is conducted to validate the proposed method. An extensive comparison with other recent and state of the art methods along with a sensitivity analysis of 13 experiments, is executed to verify effectiveness and reliability of the proposed I2LI-RT method. Finally, the experimental results show that: 1) disassembly accessibility (C 2), fastener ratio (C 3), waste emissions (C 8) and disassembly energy consumption (C 1) have a large impact on the scheme selection of DFD based on sustainability as those attributes carry relatively the larger weights; 2) our proposed method outperforms other recent and state of the art methods and 3) the chosen scheme A 1 is the winner in the majority of the sensitivity analysis cases (10 out of 13). At last but not least, the main finding is to furnish a systematic and efficient decision support tool for sustainable performance evaluation of product schemes of DFD. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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217. Dual-objective program and improved artificial bee colony for the optimization of energy-conscious milling parameters subject to multiple constraints.
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Wang, Wenjie, Tian, Guangdong, Chen, Maoning, Tao, Fei, Zhang, Chaoyong, AI-Ahmari, Abdulraham, Li, Zhiwu, and Jiang, Zhigang
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BEE colonies , *NUMERICAL control of machine tools , *ENERGY consumption , *GENETIC algorithms , *BEES - Abstract
Selecting a set of reasonable milling parameters of computerized numerical control (CNC) machines is of great importance in decreasing energy consumption and enhancing processing productivity. However, existing works pay little attention to the optimization of energy-conscious milling parameters. This work establishes a dual-objective optimization model for the selection of milling parameters such that power consumption and process time are minimized. With multiple constraints of milling processing conditions, an improved artificial bee colony (ABC) intelligent algorithm is used to handle the proposed dual-objective optimization model. Compared with the non-dominated sorting genetic algorithm (NSGA-II), our improved algorithm has good performance. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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218. An efficient multi-objective adaptive large neighborhood search algorithm for solving a disassembly line balancing model considering idle rate, smoothness, labor cost, and energy consumption.
- Author
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Fathollahi-Fard, Amir M., Wu, Peng, Tian, Guangdong, Yu, Dexin, Zhang, Tongzhu, Yang, Jianwei, and Wong, Kuan Yew
- Subjects
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LABOR costs , *SEARCH algorithms , *NEIGHBORHOODS , *ENERGY consumption , *REMANUFACTURING , *UNEMPLOYED youth - Abstract
The concept of green manufacturing emphasizes the importance of product disassembly in achieving energy-efficient recycling and remanufacturing operations. Disassembly line balancing (DLB) is a critical component of the product disassembly process, wherein a set of tasks must be allocated to workstations for disassembly. This study proposes a multi-objective DLB model that aims to minimize multiple conflicting objectives simultaneously including idle rate, smoothness, labor cost, and energy consumption. A key innovation of this study involves the creation of a tailored adaptive large neighborhood search (ALNS) algorithm which is one of the first studies in the literature on product disassembly algorithms. The developed ALNS employs efficient construction and destruction heuristics to solve the proposed multi-objective DLB problem. The ALNS algorithm aims to destroy and repair solutions effectively, while a local search procedure helps it escape from local optimum solutions. The provided DLB model is effectively solved by applying the proposed ALNS algorithm to the disassembly process of a turbine reducer. The obtained results from this application serve as a compelling demonstration of the efficiency and effectiveness of the proposed approach. Furthermore, comparisons conducted with various state-of-the-art algorithms using small and large instance sets consistently highlight the superiority of the proposed ALNS approach. [ABSTRACT FROM AUTHOR]
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- 2024
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219. Human–Robot Collaboration on a Disassembly-Line Balancing Problem with an Advanced Multiobjective Discrete Bees Algorithm.
- Author
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Shen, Yanda, Lu, Weidong, Sheng, Haowen, Liu, Yangkun, Tian, Guangdong, Zhang, Honghao, and Li, Zhiwu
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INDUSTRIAL robots , *EVOLUTIONARY algorithms , *WASTE recycling , *INDUSTRIALIZATION , *ENERGY consumption - Abstract
As resources become increasingly scarce and environmental demands grow, the recycling of products at the end of their lifecycle becomes crucial. Disassembly, as a key stage in the recycling process, plays a decisive role in the sustainability of the entire operation. Advances in automation technology and the integration of Industry 5.0 principles make the balance of human–robot collaborative disassembly lines an important research topic. This study uses disassembly-precedence graphs to clarify disassembly-task information and converts it into a task-precedence matrix. This matrix includes both symmetry and asymmetry, reflecting the dependencies and independencies among disassembly tasks. Based on this, we develop a multiobjective optimisation model that integrates disassembly-task allocation, operation mode selection, and the use of collaborative robots. The objectives are to minimise the number of workstations, the idle rate of the disassembly line, and the energy consumption. Given the asymmetry in disassembly-task attributes, such as the time differences required for disassembling various components and the diverse operation modes, this study employs an evolutionary algorithm to address potential asymmetric optimisation problems. Specifically, we introduce an advanced multi-objective discrete bee algorithm and validate its effectiveness and superiority for solving the disassembly-line balancing problem through a comparative analysis with other algorithms. This research not only provides innovative optimisation strategies for the product-recycling field but also offers valuable experience and reference for the further development of industrial automation and human–robot collaboration. [ABSTRACT FROM AUTHOR]
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- 2024
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220. Addressing a Collaborative Maintenance Planning Using Multiple Operators by a Multi-Objective Metaheuristic Algorithm_supp1-3269059.docx
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Tian, Guangdong, primary
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221. A Management and Environmental Performance Evaluation of China's Family Farms Using an Ultimate Comprehensive Cross-Efficiency Model (UCCE).
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Yang, Yinsheng, Zhuang, Qianwei, Tian, Guangdong, and Wei, Silin
- Abstract
Family farm emerged as a new form of agricultural production organization in China in recent years. For the purpose of sustainable development, decision-makers, such as farm owners and policy makers, require the precise information of a family farm's state of operation to adopt measures for management improvement and agricultural contamination reduction. Considering this, we established two evaluation systems for the measurement of family farms' management and environmental performance. As demonstrated in several recent studies, data envelopment analysis (DEA) cross efficiency is a useful approach for evaluating and comparing the performance of decision-making units (DMUs). Regarding family farms' performance evaluation issues, we modified the traditional average cross-efficiency method to be the ultimate comprehensive cross-efficiency approach with the integration of two statistical quantities based on the full consideration of family farms' unique features, such as vulnerability and seasonality, resulting from the influence of natural and social factors. Our proposed approach presents more excellent characteristics compared with CCR efficiency and average cross efficiency. Several conclusions regarding the operation of China's family farms are drawn: (i) there is weak positive correlation between family farms' management and environmental performance; (ii) there is an increasing trend for both management and environmental efficiency, along with the augmentation of the utilized agricultural area of family farms, and management performance is therefore more significant; (iii) demand for timely technological instruction to improve family farms' management efficiency is expressed by farm owners who are willing to expand; (iv) to improve family farms' environmental performance, several measures—such as introducing biotechnology, providing subsidies, and environmental education for farmers—should be adopted. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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222. An adaptive Lagrangian relaxation-based algorithm for a coordinated water supply and wastewater collection network design problem.
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Fathollahi-Fard, Amir Mohammad, Hajiaghaei-Keshteli, Mostafa, Tian, Guangdong, and Li, Zhiwu
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WATER supply , *WATER shortages , *STOCHASTIC programming , *WELL water , *HEURISTIC algorithms - Abstract
• A new coordinated water supply and wastewater collection network design problem is developed. • A real case study in the west Azerbaijan province in Iran is conducted to validate the proposed methodology. • A new heuristic algorithm based on an adaptive Lagrangian relaxation is introduced. The last century has seen an increased prevalence and duration of droughts as well as the water shortage especially in Middle East countries like Iran. This urgent situation in Iran such as Urmia Lake in the west Azerbaijan province is a motivation for us to model a new coordinated water supply and wastewater collection network design problem. Due to the uncertainty, as one of inherent sections of the water supply chain, a two-stage stochastic programming approach is used to formulate the problem. To solve the proposed model, a Lagrangian relaxation-based algorithm formulated by a new adaptive strategy is employed. This algorithm considers both upper and lower bounds of the problem to reach a performance solution. The proposed algorithm is compared with two similar algorithms from the literature to reveal its performance. As such, the efficiency of the proposed model is evaluated by some sensitivity analyses. Finally, a comprehensive discussion is provided to show the main findings and practical insights of this research. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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223. A multi-criteria group-based decision-making method considering linguistic neutrosophic clouds.
- Author
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Zhang, Lele, Zhang, Cheng, Tian, Guangdong, Chen, Zhaofang, Fathollahi-Fard, Amir M., Zhao, Xian, and Wong, Kuan Yew
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DECISION making , *AGGREGATION operators , *EXTREME value theory , *FUZZY sets - Abstract
We can formulate complex automation systems with advanced decision-making methods. This work proposes a new multi-criteria group-based decision-making (MCGDM) method based on the linguistic neutrosophic cloud (LNC). As an efficient linguistic expression, the linguistic neutrosophic set (LNS) introduces linguistic terminology into a neutrosophic set to make it more complex. However, there are inherent problems with linguistic values and neutrosophic sets. First, existing operators cannot handle linguistic neutrosophic numbers (LNN) with extreme values while producing distorted results. Second, the subscript-based computation of linguistic values does not reflect the change of ambiguity during the operation. Third, the literature review rarely considers the randomness of uncertain variables. To eliminate the drawbacks of previous studies, this paper proposes a multi-criteria group-based decision-making (MCGDM) method considering the linguistic neutrosophic cloud (LNC). The proposed method presents a distance measure for LNCs based on Wasserstein distance and develops an improved MCGDM method based on weighted modified partial Hausdorff distance. With an extensive simulation, the feasibility of the proposed method is verified by solving an auto part selection problem. Finally, we show the superiority of the proposed method through a comparison with four different aggregation operators of LNNs in the literature review. [ABSTRACT FROM AUTHOR]
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- 2023
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224. Environmentally friendly MCDM of reliability-based product optimisation combining DEMATEL-based ANP, interval uncertainty and Vlse Kriterijumska Optimizacija Kompromisno Resenje (VIKOR).
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Feng, Yixiong, Hong, Zhaoxi, Tian, Guangdong, Li, Zhiwu, Tan, Jianrong, and Hu, Hesuan
- Subjects
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CARBON dioxide mitigation , *ENERGY shortages , *MULTIPLE criteria decision making , *INDUSTRIAL goods , *PRODUCT quality , *RELIABILITY in engineering - Abstract
With the far-reaching and overwhelming consequences resulting from energy crisis and carbon emissions, industrial products are required to be environmentally friendly, as well as of high quality and functionality. However, conventional reliability-based product optimisation methods cannot sufficiently ensure the environmental friendliness of modern industrial products. Firstly, the environmental features of a product are not considered. Secondly, the uncertainty of reliability-based product optimisation is not processed efficiently. Thirdly, no sufficient attention is being paid to capturing relationships among product components, despite such dependencies possibly exhibit a major impact on product functions. In order to address these issues, an environmentally friendly multi-criteria decision making (MCDM) model for reliability-based product optimisation is proposed by combining a decision-making trial and evaluation laboratory (DEMATEL)-based analytical network process (ANP) (DANP), interval uncertainty and the Vlse Kriterijumska Optimizacija Kompromisno Resenje (VIKOR). The validity of this method is demonstrated by a numerical example. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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225. Designing the key parameters of EMU bogie to reduce side wear of rail.
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Cui, Dabin, Zhang, Weihua, Tian, Guangdong, Li, Li, Wen, Zefeng, and Jin, Xuesong
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RAILROAD curves & turnouts , *MECHANICAL wear , *BOGIES (Vehicles) , *STIFFNESS (Mechanics) , *YAWING (Aerodynamics) - Abstract
A long term investigation of the wheel and the rail wear condition reveals that wheel flange wear and rail gauge corner wear are serious problems for EMU vehicles and narrow curved tracks. In order to solve the problem, the effects of bogie key parameters on the vehicle dynamic behaviour were studied using an EMU vehicle dynamic model and the improved parallel inverse design method was employed to design a new wheel profile. The results show that under the condition of a high primary yaw stiffness, the yawing motion of the wheelset is limited, which leads to a high-angle of attack between wheel and rail on narrow curves. Then two-point contact between the wheel and the rail could occur and cause serious wheel flange wear and rail gauge corner wear. The new designed profile can reduce wheel flange wear and rail gauge corner wear, while meeting the safety requirement of vehicle running performance on tangent track. The primary yaw stiffness affects the curving negotiation performance significantly. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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226. Lot-streaming in energy-efficient three-stage remanufacturing system scheduling problem with inequal and consistent sublots.
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Wang, Wenjie, Yuan, Gang, Pham, Duc Truong, Zhang, Honghao, Wang, Dekun, and Tian, Guangdong
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ENERGY consumption of buildings , *WILCOXON signed-rank test , *REMANUFACTURING , *MATHEMATICAL optimization , *PRODUCTION scheduling - Abstract
The well-accepted three-stage remanufacturing system scheduling aims to achieve intelligent and green remanufacturing by reasonably coordinating limited resources in the system involving disassembly, reprocessing, reassembly production stages. Currently, the lot-streaming production mode is increasingly favoured by scholars and enterprise managers due to its remarkable performance in reducing machines' idle time and improving production efficiency. This paper investigates an energy-efficient scheduling issue for three-stage remanufacturing systems under the lot-streaming environment where each large-sized lot is split into its constituent small-sized sublots whose sizes may be inequal but remain consistent among various operations. Foremost, a dual-objective optimization mathematical model aiming at concurrently minimizing the makespan and total energy consumption is built. Then, since its NP-hard property, an improved fruit fly optimization (IFFO) algorithm is accordingly introduced. IFFO adopts a problem-specific three-layer encoding mechanism that contains three key pieces of scheduling information, i.e., lot sequence, machine assignment, and lot size splitting. Besides, based on the lot-streaming property, two distinct decoding strategies, i.e., sublot preemption and lot preemption are also correspondingly integrated. In addition, several effective optimization techniques, such as the simulated annealing-based replacement mechanism and Sigma method, are also employed to seek high-quality Pareto solutions. A real case and several designed random small/large-sized instances are tested on IFFO and its peers under three performance indicators. To obtain a convincing and solid conclusion, the Wilcoxon signed-rank statistical test is executed as well. The overall experimental results show that IFFO is feasible and effective in addressing the studied problem. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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227. Carbon/Basalt Fibers Hybrid Composites: Hybrid Design and the Application in Automobile Engine Hood.
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Pu, Yongfeng, Liu, Baichuan, Xue, Guilian, Liang, Hongyu, Ma, Fangwu, Yang, Meng, and Tian, Guangdong
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HYBRID materials , *AUTOMOBILE engine design & construction , *FIBROUS composites , *BASALT , *LAMINATED materials , *CARBON fibers , *HYBRID electric cars , *AUTOMOBILE engines - Abstract
The low-velocity impact properties and the optimal hybrid ratio range for improving the property of hybrid composites are studied, and the application of hybrid composites in automobile engine hoods is discussed in this paper. The low-velocity impact properties of the hybrid composite material are simulated under different stacking sequences and hybrid ratios by finite element simulation, and the accuracy of the finite element model (FEM) is verified through experiments. Increasing the proportion of carbon fiber (CF) in the hybrid layer and placing the basalt fiber (BF) on the compression side can improve the energy absorption capacity under low-velocity impact loads. CF/BF hybrid composite hoods are optimized based on the steel hood and the low-velocity impact performance of the hybrid composite. The BCCC layer absorbs the most energy under low-velocity impact loads. Compared with CFRP, the energy absorbed under 10 J and 20 J impact energy is increased by 26.1% and 14.2%, respectively. Through the low-velocity impact properties of hybrid composites, we found that placing BF on the side of the load and keep the ratio below 50%, while increasing the proportion of CF in the hybrid laminate can significantly improve the property of the hybrid laminate. The results show that the stiffness and modal properties of the hybrid composite can meet the design index requirements, and the pedestrian protection capability of the hood will also increase with the increase in the proportion of BF. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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228. Integration of lean production and low-carbon optimization in remanufacturing assembly.
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Zhang, Cuixia, Liu, Conghu, Mao, Huiying, Tian, Guangdong, Jiang, Zhigang, Cai, Wei, and Wang, Wenbin
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SUSTAINABLE development , *PRODUCTION management (Manufacturing) , *INDUSTRIAL productivity , *LEAN management , *CIRCULAR economy , *REMANUFACTURING - Abstract
• Studied lean production and low-carbon management in remanufacturing systems. • Proposed decision-making method for lean low-carbon management. • Established functions to characterize carbon trail of remanufacturing production management. Remanufacturing is one of the effective ways to achieve carbon peak and carbon neutralization. Additionally, lean remanufacturing plays an irreplaceable role in promoting a circular economy and industrial green development. This paper focuses on the application of lean production and low-carbon management in remanufacturing assembly systems. We propose an optimization decision-making method for lean low-carbon management for remanufacturing assembly. On the basis of the carbon footprint, we interpret and measure the quality, cost, and time of remanufacturing assembly systems. Functions are established to characterize the carbon trajectory of production management. Then, a low-carbon optimization model of remanufacturing assembly production management is constructed to minimize carbon emissions with combined sorting of parts, and a solution method based on a genetic algorithm, which has the attributes of excellent quality, low cost, and high efficiency, is studied. Interestingly, through practical application in engine regeneration enterprises, we have found that integrating lean and low-carbon approaches can enhance the total factor productivity of the remanufacturing assembly system. This study provides practitioners and decision-makers with an effective way to formulate lean low-carbon management of remanufacturing. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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229. Smartphone-based straw incorporation: An improved convolutional neural network.
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Li, Mao, Qi, Jiangtao, Tian, Xinliang, Guo, Hui, Liu, Lijing, Fathollahi-Fard, Amir M., and Tian, Guangdong
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CONVOLUTIONAL neural networks , *STRAW , *SMARTPHONES , *CONSERVATION tillage , *DEEP learning , *WEB-based user interfaces - Abstract
• A lightweight multi-scale attention U-shaped segmentation model was established. • An automatic method for quantifying the straw incorporation effect was proposed. • A web app was developed to realize the rapid evaluation incorporation effect. In conservation tillage, the effective incorporation of straw into soil is a critical factor for optimizing decomposition rates and addressing challenges related to straw accumulation. Consequently, this study introduces an innovative straw semantic segmentation model to extract straw mixed with soil from images, and proposes a method to measure the quality of straw and soil mixing based on this model. We conducted field experiments based on this method, analyzed the quality of straw incorporation at different depths, and finally integrated the model into a mobile application to facilitate the automatic, accurate, and rapid assessment of the quality of straw and soil mixing. The methodology of this study as an improved convolutional neural network entailed the fusion of deep separable convolution with a multi-scale feature extraction module, utilizing convolution kernels of varying sizes to capture the diverse features of straw. Further refinement included halving the first convolution channel and implementing a direct connection structure. Attention gates were strategically deployed to enhance salient features, resulting in superior accuracy compared to the original U-shaped network, fully convolutional network, and Otsu algorithm. Notably, the proposed model achieved enhanced performance while reducing the number of parameters and model complexity to one-third and one-half of the original U-shaped network, respectively. For a quantitative description of the rate and uniformity of straw incorporation, this study employed image processing technology and a grid counting method. The synergistic integration of smartphone imagery and deep learning expedited the delivery of rapid and reliable results, promising practical applicability in future straw incorporation practices. A demonstration video of the application is accessible at: https://doi.org/10.6084/m9.figshare.14480745.v3. The findings of this research contribute significantly to the advancement of conservation tillage by establishing a robust framework for the assessment and enhancement of straw incorporation operations' efficiency. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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230. Key technology and application analysis of quick coding for recovery of retired energy vehicle battery.
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Yu, Haijun, Dai, Hongliang, Tian, Guangdong, Wu, Benben, Xie, Yinghao, Zhu, Ying, Zhang, Tongzhu, Fathollahi-Fard, Amir Mohammad, He, Qi, and Tang, Hong
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ELECTRIC vehicle batteries , *ELECTRIC batteries , *GOVERNMENT publications , *SOCIAL security , *ENVIRONMENTAL regulations - Abstract
With the increasing production and marketing of new energy vehicles (NEVs) in China, a large number of electric vehicles (EVs) batteries produced by the scrapped NEVs pose a great threat to environmental regulations and social security. Due to the influence of battery type, model, material, battery status, vehicle information and other factors, the scrapped new energy vehicle battery failed to achieve efficient and convenient recycling. Considering the requirements of some recently published government documents and the characteristics of electric vehicle battery, an integrated vehicle identification number (VIN) code is proposed. Based on the analysis of the current national standards GB 16735–2019 road vehicle-VIN identification number and GB/T 34,014–2017 code rules for vehicle power battery, the standard of combining battery code and tracking code is proposed. Finally, the possible coordination code is applied to a case study. The research results of this paper have been implanted into China's national standards. • Key factors affecting power battery recycling was put forward. • Finding coding issues is the core of all factors that affect recyclable traceability. • Car code, battery code, recycling code three-in-one was firstly proposed. • One code realizes the traceability of the entire life cycle of power batteries. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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231. Comprehensive evaluation of disassembly performance based on the ultimate cross-efficiency and extension-gray correlation degree.
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Yuan, Gang, Yang, Yinsheng, Tian, Guangdong, and Zhuang, Qiamwei
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PRODUCT obsolescence , *PERFORMANCE evaluation , *FRUIT flies , *REMANUFACTURING , *PROCESS optimization - Abstract
The recycling and dismantling of obsolete products is one of the frontier issues in the field of green remanufacturing. From the research status in this field, most scholars only use intelligent algorithms to optimize the disassembly sequence, and rarely evaluate the performance of obsolete products. On the basis of summarizing the existing research, this paper establishes a comprehensive disassembly evaluation model based on the fruit fly algorithm, crossover efficiency and extension-gray correlation degree. Firstly, a set of Pareto solutions is obtained by IFOA, and the group of 12 disassembly schemes is used as the decision-making unit (DMU) of the DEA. The average DQ of the 12 disassembly schemes was 5.4, the average EB was 387 CNY, and the average PDR was 83%. Then, the final cross-efficiency model is obtained by improving the traditional average cross-efficiency method. It is evaluated the performance of the comprehensive indicators of the disassembly plan in terms of time, economy and environment, and obtained their respective rankings. After the normalization process calculated, DMU 4 (0.0714) has a relatively higher ultimate weight than DMU 10 (0.0581). The analysis results show that the disassembly scheme evaluation result is the best overall performance of N 4. Finally, the same case is used to execute three optimization algorithms. The results show that IFOA has better optimization and sensitivity than the other two algorithms. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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232. Multi-objective low-carbon disassembly line balancing for agricultural machinery using MDFOA and fuzzy AHP.
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Yang, Yinsheng, Yuan, Gang, Zhuang, Qianwei, and Tian, Guangdong
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CARBON dioxide reduction , *PROCESS optimization , *AGRICULTURAL equipment , *FRUIT flies , *COST control , *ENERGY consumption - Abstract
The issue of disassembly line balancing and remanufacturing has become an increasingly hot topic recently. However, little research focusing on carbon dioxide reduction and resource utilization has been done in the field of disassembly line balancing. For the purpose of being environmentally friendly, the disassembly line balancing should aim at low carbon emission, low energy consumption and cost reduction during the disassembly process. Considering this, this study proposes a multi-objective disassembly line balancing fruit fly optimization algorithm (MDFOA) for the disassembly sequence of obsolete agricultural machinery considering low-carbon design. We try to optimize the disassembly line balancing model using the fruit fly optimization algorithm. To satisfy the stability of MDFOA, the olfactory operation is cross-operated, and the Pareto non-dominated sorting method is adopted in the visual operation stage. In order to avoid falling into local optimum, a global cooperation mechanism is added to screen individuals with different degrees of dissimilarity. An illustrative example of the disassembly line of corn harvester cutting table is provided in this work. Comparison between our proposed MDFOA and other four frequently-used algorithms is conducted in this work. The results show that our method performs better than other algorithms for the disassembly line balancing problem (DLBP), thus verifying the practicability and feasibility of it. In the end, 12 Pareto solutions are obtained through MDFOA and we evaluated and selected the most satisfactory solution among them using Fuzzy AHP, for the determination of the optimal disassembly sequence. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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233. Ship schedule recovery with voluntary speed reduction zones and emission control areas.
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Elmi, Zeinab, Li, Bokang, Fathollahi-Fard, Amir M., Tian, Guangdong, Borowska-Stefańska, Marta, Wiśniewski, Szymon, and Dulebenets, Maxim A.
- Subjects
- *
EMISSION control , *GREENHOUSE gas mitigation , *MONETARY incentives , *APPROXIMATION algorithms , *SHIPS , *MARITIME shipping - Abstract
• A new multi-objective optimization model is developed for ship schedule recovery. • Vessel speed reduction incentive programs and emission control areas are explicitly modeled. • Diverse schedule recovery options are considered within the designed modeling framework. • A customized algorithm is developed to solve the proposed multi-objective optimization model. • Detailed sensitivity analyses are performed to further examine various recovery options. Liner shipping networks often experience disruptions, and shipping lines must implement certain recovery measures. However, environmental concerns have to be considered as well. The implementation of vessel speed reduction incentive programs (VSRIPs) provides monetary incentives to shipping lines for sailing speed compliance in the vicinity of certain ports but, in the meantime, increases delays, since the speed-up option could not be used to the same extent. There is a scarcity of research that focuses on effectively addressing the competing objectives that arise during ship schedule recovery and incorporates emission reduction policies at ports. This study introduces a new multi-objective approach for ship schedule recovery, considering the presence of VSRIPs, emission control regulations, and a variety of recovery options. A customized algorithm inspired by the principles of dynamic secant approximation and the ε-constraint algorithm is developed and validated through extensive computational experiments. Detailed sensitivity analyses provide thorough managerial insights as well. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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234. An improved artificial bee colony for facility location allocation problem of end-of-life vehicles recovery network.
- Author
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Lin, Yu, Jia, Hongfei, Yang, Yinsheng, Tian, Guangdong, Tao, Fei, and Ling, Ling
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ALGORITHMS , *PARTICLE swarm optimization , *SWARM intelligence , *ASSIGNMENT problems (Programming) , *COMPUTER programming - Abstract
Abstract Reverse logistics is indispensable for resources reuse and circular economy, and a reverse logistics network optimization problem for end-of-life vehicles is studied frequently. Recent researches have focused on the material flow for different end-of-life vehicles. However, the primary question for an end-of-life vehicles recovery network is to determine optimal network nodes. To account for it, we considered a facility location allocation problem of end-of-life vehicles recovery network, and established a mathematical model to solve it. The model is used to achieve the minimization of cost for deciding optimal locations of end-of-life vehicles recovery network. The facility location allocation problem is a non-deterministic polynomial complete problem proved with increase in the number of candidate locations. This type of problem usually handled by a metaheuristics. Therefore, we proposed a valid novel approach based on artificial bee colony to solve the problem. Artificial bee colony is an optimization method that imitates bee behavior. Also, the proposed algorithm is applied to two different scale real-life cases, and some comparisons with several presented algorithms are presented to illustrate the effectiveness of the presented method. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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235. Disassembly line balancing problem using interdependent weights-based multi-criteria decision making and 2-Optimal algorithm.
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Ren, Yaping, Zhang, Chaoyong, Zhao, Fu, Tian, Guangdong, Lin, Wenwen, Meng, Leilei, and Li, Hongliang
- Subjects
- *
ASSEMBLY line balancing , *DECISION making , *GENETIC algorithms , *METAHEURISTIC algorithms , *MATHEMATICAL programming - Abstract
With the rapid technology advancement and market changes products are becoming outdated and subsequently discarded faster than ever before. As a result, recovery, recycling, and remanufacturing of end-of-life products are gaining more attention. Disassembly is indispensable to recycle and remanufacture end-of-life products, and a disassembly line is an efficient way to achieve it. A disassembly line balancing problem aims at optimizing the disassembly sequences in which the disassembly times of workstations are approximately equal and approaching the cycle time. However, in addition to line balancing assigning disassembly tasks to workstations needs to consider other factors, such as how to recover valuable components as fast as possible and reduce undesirable impacts on the environment as much as possible. This work aims at addressing a disassembly line balancing problem with multiple objectives, including economic and environmental factors and disassembly line efficiency. A three-phased methodology is proposed to solve this problem. The proposed method not only enables the consideration of objectives with interdependent weights in multi-criteria decision making but effectively generates a good enough trade-off disassembly solution using a 2-optimal algorithm. The proposed approach is tested on a benchmark and compared with three other methods. Experiment results are shown to verify its performance. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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236. A hybrid multi-objective optimization approach for energy-absorbing structures in train collisions.
- Author
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Zhang, Honghao, Peng, Yong, Hou, Lin, Tian, Guangdong, and Li, Zhiwu
- Subjects
- *
RAILROAD accidents , *MULTIPLE criteria decision making , *STRUCTURAL optimization , *OPTIMAL designs (Statistics) , *MATHEMATICAL proofs - Abstract
Abstract Energy-absorbing structure, which is the most effective and direct protection component, is installed at the front of the head car. However, structural optimization problems of this structure still exist, e.g., multiple conflicting objectives and the non-uniqueness problem of optimization solutions. This study formulates a novel optimization framework combining the theory of multi-objective optimization and multi-criteria decision making and proposes a hybrid optimization approach (M-BGV) that combines multi-objective artificial bee colony (MOABC), best worst (BW) method, grey relational analysis (GRA) and visekriterijumsko kompromisno rangiranje (VIKOR), to solve the structural optimization problem for energy-absorbing structures in train collisions. MOABC is applied to determine the points that represent the optimal solutions, i.e., the Pareto set. The preferences for the conflicting objectives for the certain practice condition/structure can be calculated by the BW method. An integrated multi-criteria decision making approach that combines GRA and VIKOR is proposed to obtain the optimal solution via evaluating the solutions from the Pareto set. Subsequently, an empirical application of a multi-cell thin-walled aluminum energy-absorbing structure is applied to demonstrate that this utilized integrated methodology is valid and practical. The results prove that this approach provides an accurate and effective tool for the structural multi-objective optimization problem. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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237. A carbon efficiency evaluation method for manufacturing process chain decision-making.
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Zhu, Shuo, Jiang, Zhigang, Zhang, Hua, Tian, Guangdong, and Wang, Yanan
- Subjects
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CARBON , *EMISSIONS (Air pollution) , *TECHNOLOGICAL innovations , *LABOR process , *DECISION making , *MANUFACTURED products - Abstract
Low carbon manufacturing (LCM) is increasingly being regarded as the direction for technological innovation and implementation in industry. The manufacturing process chain plays a critical role in LCM to consider and define the whole production process, thus the analysis and evaluation method for its decision-making is urgently needed. Although interest in addressing carbon emission reduction in manufacturing is rising, the study of incorporating carbon emission reduction and economic improvement into the process chain is still considerably deficient. This work proposes a novel method to identify a process chain with the optimal carbon efficiency, where the carbon efficiency of process chain (CEpc) regarded as an effective indicator is evaluated by manufacturing value and carbon emissions defined based on eco-efficiency. In addition, the estimation models of manufacturing value and carbon emission are proposed, based on which, a decision-making model is established to solve the process chain decision-making issues with objective to maximize CEpc. An illustrative example of the sleeve part manufacturing process is conducted to demonstrate the effectiveness of this method. And the outcome can help decision makers to select the process chain with optimal carbon efficiency based on the dynamic change of production and different processing conditions. Furthermore, sensitivity analysis on material utilization rate, recycling rate as well as processing efficiency is presented to reveal the impacts of relevant improvement measures in CEpc for manufacturers. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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238. Fuzzy Petri nets for knowledge representation and reasoning: A literature review.
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Liu, Hu-Chen, You, Jian-Xin, Li, ZhiWu, and Tian, Guangdong
- Subjects
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FUZZY Petri nets , *KNOWLEDGE management , *EXPERT systems , *ROBUST control , *PROBLEM solving - Abstract
Fuzzy Petri nets (FPNs) are a potential modeling technique for knowledge representation and reasoning of rule-based expert systems. To date, many studies have focused on the improvement of FPNs and various new algorithms and models have been proposed in the literature to enhance the modeling power and applicability of FPNs. However, no systematic and comprehensive review has been provided for FPNs as knowledge representation formalisms. Giving this evolving research area, this work presents an overview of the improved FPN theories and models from the perspectives of reasoning algorithms, knowledge representations and FPN models. In addition, we provide a survey of the applications of FPNs for solving practical problems in variety of fields. Finally, research trends in the current literature and potential directions for future investigations are pointed out, providing insights and robust roadmap for further studies in this field. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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239. Reliability and cost optimization for remanufacturing process planning.
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Jiang, Zhigang, Zhou, Tingting, Zhang, Hua, Wang, Yan, Cao, Huajun, and Tian, Guangdong
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REMANUFACTURING , *ENVIRONMENTAL law , *INDUSTRIALIZATION , *RELIABILITY in engineering , *COST control - Abstract
Remanufacturing is a practice of growing importance as it returns the end of life products back to conditions that is as good as or better than new ones. The increasingly stringent environmental legislation and economic demands has led to the rapid development of remanufacturing industry in the world. Remanufacturing is still at its infantry. One of the major challenges faced by remanufacturing is to guarantee the reliability of remanufactured products since they came from cores with varying condition. Process planning plays a critical role in realizing a successful remanufacturing strategy since it directly affects the success rate of remanufacturing as well as reliability and cost. To do so, this work presents an optimization method for remanufacturing process planning in which reliability and cost are taken into consideration. In this method, reliability is represented by failure rate of remanufacturing operations which is influenced by the quality of returned used products (cores), whilst process cost includes machine cost and tool cost. The multi-objective optimization problem is solved by a genetic algorithm. To assess the usefulness and practicality of the proposed method, an illustrative example is given to illustrate the proposed models and the effectiveness of the proposed algorithm. The results showed that the proposed method is effective for improving reliability and reducing cost. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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240. A multi-objective memetic algorithm for integrated process planning and scheduling.
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Jin, Liangliang, Zhang, Chaoyong, Shao, Xinyu, Yang, Xudong, and Tian, Guangdong
- Subjects
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PRODUCTION scheduling , *POLYNOMIAL time algorithms , *NP-hard problems , *MULTIDISCIPLINARY design optimization , *TOPSIS method , *MATHEMATICAL models - Abstract
Process planning and scheduling are two crucial components in a manufacturing system. The integration of the two functions has an important significance on improving the performance of the manufacturing system. However, integrated process planning and scheduling is an intractable non-deterministic polynomial-time (NP)-hard problem, and the multiple objectives requirement widely exists in real-world production situations. In this paper, a multi-objective mathematical model of integrated process planning and scheduling is set up with three different objectives: the overall finishing time (makespan), the maximum machine workload (MMW), and the total workload of machines (TWM). A multi-objective memetic algorithm (MOMA) is proposed to solve this problem. In MOMA, all the possible schedules are improved by a problem-specific multi-objective local search method, which combines a variable neighborhood search (VNS) procedure and an effective objective-specific intensification search method. Moreover, we adopt the TOPSIS method to select a satisfactory schedule scheme from the optimal Pareto front. The proposed MOMA is tested on typical benchmark instances and the experimental results are compared with those obtained by the well-known NSGA-II. Computational results show that MOMA is a promising and very effective method for the multi-objective IPPS problem. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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241. A soft-sensor for sustainable operation of coagulation and flocculation units.
- Author
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Arab, Maliheh, Akbarian, Hadi, Gheibi, Mohammad, Akrami, Mehran, Fathollahi-Fard, Amir M., Hajiaghaei-Keshteli, Mostafa, and Tian, Guangdong
- Subjects
- *
COAGULATION , *ARTIFICIAL neural networks , *FLOCCULATION , *RESPONSE surfaces (Statistics) , *WATER levels , *INTELLIGENT sensors - Abstract
Nowadays, Machine Learning (ML) techniques have become one of the most widely used engineering tools due to their numerous advantages, including their continuous improvement. This study proposes a smart soft sensor using various ML algorithms to control and predict the Coagulation and Flocculation Process (CFP). Optimizing and predicting the behaviour of a CFP is difficult due to its non-linear and complex behaviour. Therefore, ML computations is a proper method to overcome this challenge. However, one of the challenges of ML studies is the lack of sufficient data which we overcome by using an 8-year database of experiments. For prediction, this study compares different ML methods, including Random Tree, Random Forest (RF), Artificial Neural Networks (ANN), Quinlan's M5 algorithm with regression function (M5P), Linear Regression (LR), Simple LR, Gaussian method, Decision Stump method, Smola and Scholkopf's Sequential Minimal Optimization algorithm with LR (SMOreg), and the Adaptive Neuro-Fuzzy Inference System (ANFIS). Also, for optimization of the studied system, Central Composite Design designed the experimental data with the Response Surface Methodology (CCD-RSM). The most significant factors in turbidity removal are related to FeCl3 dosage, and slow mixing speed with < 0.0001 and 0.005 P-values. The present research findings show that the maximum removal efficiency of 92% is predicted using CCD-RSM under the optimal condition. In addition, ANFIS and RF models with R2 of 0.96 and 0.92, have shown the highest accuracy levels for removing water turbidity. Finally, a Petri-Net model establishes a Conceptual model to intelligently conduct managerial insights for water treatments. [Display omitted] [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
242. Assessment of the engineering properties, carbon dioxide emission and economic of biomass recycled aggregate concrete: A novel approach for building green concretes.
- Author
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Ni, Songyuan, Liu, Haibao, Li, Qiuyi, Quan, Hongzhu, Gheibi, Mohammad, Fathollahi-Fard, Amir M., and Tian, Guangdong
- Subjects
- *
RECYCLED concrete aggregates , *CARBON emissions , *VALUATION of real property , *AGRICULTURAL wastes , *CONCRETE - Abstract
This paper presents an experimental study on the effects of using agricultural waste coconut shells for producing synthesized biomass recycled aggregate (SBRA) and replacing natural aggregate (NA) with its equivalent amount on the durability, thermal conductivity, carbon dioxide emissions, and economics of concrete. Test results show that the 3-day and 28-day compressive strength of concrete with the addition of SBRA - Class III reached 93% and 88% of natural aggregate concrete (NAC), respectively. In addition, using SBRA can effectively reduce the thermal conductivity of concrete, which shows great potential for building energy conservation. Compared with NA, the use of SBRA can reduce CO 2 emissions and the cost of concrete by 2% and 5.9–7%, respectively. And the compressive strength - CO 2 emission efficiency and compressive strength - cost efficiency are comparable to NA. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
243. A life-cycle integrated model for product eco-design in the conceptual design phase.
- Author
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Kong, Lin, Wang, Liming, Li, Fangyi, Tian, Guangdong, Li, Jianfeng, Cai, Zekang, Zhou, Jiaxuan, and Fu, Yan
- Subjects
- *
CONCEPTUAL design , *ENVIRONMENTAL impact analysis , *HEURISTIC , *EMISSIONS (Air pollution) , *POWER resources , *SUSTAINABLE design , *ENERGY consumption - Abstract
Eco-design that addresses the consumption of resources and energy, as well as pollution emissions from a product life-cycle perspective, is an effective way to solve environmental problems. However, the optimal eco-design solution is hardly generated in the conceptual design stage due to the complex association of the life cycle design information. To this end, this paper proposes a new eco-design model based on a life cycle integrated framework to effectively manage life cycle information in the conceptual design phase. In this work, (1) The life cycle-oriented model is proposed to integrate the product design information in terms of a systematic association mechanism between function, structure, material and process to construct the design space. (2) A life cycle design scenario-based similarity matching method is developed to support the environmental impact assessment of design options in the design space. (3) A hope tree-based heuristic search algorithm with the principle of minimizing environmental impact is proposed to efficiently obtain the eco-design solution. An application for eco-design of the lift equipment is given to demonstrate the capability of the proposed method. The results show that the environmental impact of the generated eco-design solution is improved by 19.48%, and the material and use stage has the highest environmental impact which accounts for 39.59% and 47.74% respectively. This work provides a targeted method for guiding designers to implement eco-design in the conceptual design phase through the life cycle. [Display omitted] • An integrated life cycle model is proposed to express the design information of function, structure, material and process. • A scenario-based similarity matching method is proposed to acquire the LCI for the design options. • Hope tree-based algorithm is used to efficiently obtain the optimal eco-design solution. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
244. A positioning method for the feature points of a target board image adopting singular value decomposition
- Author
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Xu, Guan, Li, Xiaotao, Su, Jian, Tian, Guangdong, and Zhang, Libin
- Subjects
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IMAGING systems , *SINGULAR value decomposition , *FEATURE extraction , *MATHEMATICAL transformations , *MATHEMATICAL proofs - Abstract
Abstract: This paper presents a positioning method to extract the feature points employing the singular value decomposition for a target board image as an example. In order to discriminate the feature points from the noises existing in the image, the image matrix is factorized into three matrices. The geometrical implication of the three matrices is interpreted by three transformations which are rotation, scaling, and another rotation. The singular values in the diagonal of the scaling matrix are arranged in descending order, which stands for the significance sequence of the image features. The smaller singular values are corresponding to the noises while the greater ones are considered as primary features. Therefore the new singular values matrix is defined by the modified original scaling matrix in which the smaller singular values are removed by a cutting point. The smoothing image is reconstructed by the two original rotation matrices and the new singular values matrix with the same arrangement. The latter detection procedure of the feature points adopts the Harris corner detection method to evaluate the singular value decomposition filter. The experiments are performed on the target images with the noise densities of 0.005, 0.01 and 0.02 respectively. Comparing with the traditional approach, the feature points on the target which are considered as the primary features are preserved by the filter. Moreover, the noises vanish in the images because they are unimportant details. The experiments prove that the outlined method has the potential to feature points positioning as well as appropriateness for the manufacture engineering and mechanical inspection. [Copyright &y& Elsevier]
- Published
- 2013
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245. Exact and metaheuristic algorithms for the vehicle routing problem with a factory-in-a-box in multi-objective settings.
- Author
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Pasha, Junayed, Nwodu, Arriana L., Fathollahi-Fard, Amir M., Tian, Guangdong, Li, Zhiwu, Wang, Hui, and Dulebenets, Maxim A.
- Abstract
• A vehicle routing problem with a factory-in-a-box in multi-objective settings is studied. • A multi-objective formulation is proposed to compromise the conflicting cost components. • A novel customized nature-inspired evolutionary algorithm is developed to solve the problem. • Numerical experiments are performed considering well-known exact and metaheuristic methods. • A detailed analysis of solutions is conducted to draw managerial insights. Emergencies, such as pandemics (e.g., COVID-19), warrant urgent production and distribution of goods under disrupted supply chain conditions. An innovative logistics solution to meet the urgent demand during emergencies could be the factory-in-a-box manufacturing concept. The factory-in-a-box manufacturing concept deploys vehicles to transport containers that are used to install production modules (i.e., factories). The vehicles travel to customer locations and perform on-site production. Factory-in-a-box supply chain optimization is associated with a wide array of decisions. This study focuses on selection of vehicles for factory-in-a-box manufacturing and decisions regarding the optimal routes within the supply chain consisting of a depot, suppliers, manufacturers, and customers. Moreover, in order to contrast the options of factory-in-a-box manufacturing with those of conventional manufacturing, the location of the final production is determined for each customer (i.e., factory-in-a-box manufacturing with production at the customer location or conventional manufacturing with production at the manufacturer locations). A novel multi-objective optimization model is presented for the vehicle routing problem with a factory-in-a-box that aims to minimize the total cost associated with traversing the edges of the network and the total cost associated with visiting the nodes of the network. A customized multi-objective hybrid metaheuristic solution algorithm that directly considers problem-specific properties is designed as a solution approach. A case study is performed for a vaccination project involving factory-in-a-box manufacturing along with conventional manufacturing. The case study reveals that the developed solution method outperforms the ε-constraint method, which is a classical exact optimization method for multi-objective optimization problems, and several well-known metaheuristics. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
246. A hybrid computational intelligence approach for bioremediation of amoxicillin based on fungus activities from soil resources and aflatoxin B1 controls.
- Author
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Mohammadi, Maryam, Gheibi, Mohammad, Fathollahi-Fard, Amir M., Eftekhari, Mohammad, Kian, Zahra, and Tian, Guangdong
- Subjects
- *
COMPUTATIONAL intelligence , *AFLATOXINS , *AMOXICILLIN , *RESPONSE surfaces (Statistics) , *BIOREMEDIATION , *SILVER - Abstract
Nowadays, releasing the Emerging Pollutants (EPs) in the nature is one of the main reasons for many health and environmental disasters. Amoxicillin as an antibiotic is one of the EPs and categorized as the Endocrine Disrupting Compounds (EDCs) in hazardous materials. Accumulation of amoxicillin in the soil bulk increases the cancer risk, drug resistances and other epidemiological diseases. Hence, the soil bioremediation of antibiotics can be a solution for this problem which is more environmental-friendly system. This study technically creates a bio-engine setup in soil bulk for remediation of amoxicillin based on Aspergillus Flavus (AF) activities and Removal Percentage (RP) of amoxicillin with Aflatoxin B1 Generation (AG) controls. The main novelty is to propose a hybrid computational intelligence approach to do optimization for mechanical and biological aspects and to predict the behavior of bio-engine's effective mechanical and biological features in an intelligent way. The optimization model is formulated by the Central Composite Design (CCD) which is set by the Response Surface Methodology (RSM). The prediction model is formulated by the Random Forest (RF), Adaptive Neuro Fuzzy Inference System (ANFIS) and Random Tree (RT) algorithms. According to the experimental practices from real soil samples in different times and places, concentration of amoxicillin and Aflatoxin B1 are set equal to 25 mg/L (ppm) and 15 μg/L (ppb). Likewise, the outcomes of experiments in CCD-RSM computations are evaluated by curve fitting comparisons between linear, 2FI, quadratic and cubic polynomial equations with considering to regression coefficient and predicted regression coefficient values, ANOVA and optimization by sequential differentiation. Based on the results of CCD-RSM, the RP performance in the optimum conditions is measured around 86% and in 25 days after runtime, the RP and AG are balanced in the safe mode. The proposed hybrid model achieves the 0.99 accuracy. The applicability of the research is done using real field evaluations from drug industrial park in Mashhad city in Iran. Finally, a broad analysis is done and managerial insights are concluded. The main findings of the present research are: (I) with application of bioremediation from fungus activities, amoxicillin amounts can be control in soil resources with minimum AG, (II) ANFIS model has the best accuracy for smart monitoring of amoxicillin bioremediation in soil environments and (III) based on the statistical assessments Aeration Intensity and AF/Biological Waste ratio are most effective on the amoxicillin removal percentage. • This study designs a lab scale soil bioremediation setup for evaluation of amoxicillin elimination from soil resources. • The proposed smart system injects the AF fungi and considers the aflatoxin B1 controlling. • An efficient computational intelligence approach based on the combination of CCD and RSM for optimization is developed. • The proposed computational method is also able to predict the behavior of system using RF, ANFIS and RT algorithms. • This study scrutinizes the designed smart system in the real-field polluted soil for the case study in Mashahd city in Iran. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
247. Experimental investigation on heat transfer performance of flowing irregular semi-cokes in heat exchanger with primary recovery method.
- Author
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Gao, Haibo, Zhang, Yuqiu, Liu, Yongqi, Wang, Yanxia, Zheng, Bin, Sun, Peng, Hou, Xiaochen, and Tian, Guangdong
- Subjects
- *
HEAT exchangers , *HEAT transfer , *HEAT transfer coefficient , *HEAT recovery , *STEAM flow , *VORTEX generators - Abstract
For purpose of improving the waste heat recovery and utilization efficiency of high-temperature semi-cokes, a new heat exchanger with primary recovery method was creatively proposed, and the heat transfer performance of flowing irregular semi-cokes in the new primary heat exchanger was investigated experimentally for the first time. The effects of initial temperature, flow velocity and diameter of semi-cokes on the heat transfer performance of flowing irregular semi-cokes were analyzed, and the experimental correlation formula of Nusselt number between flowing irregular semi-coke and cooling wall was studied by dimensional analysis and experimental data fitting. Furthermore, the heat transfer performance of flowing irregular semi-cokes under the condition of steam flow was compared with those under the condition of no steam flow. Experiment results show that the initial temperature, flow velocity and diameter of semi-coke have significant effects on the heat transfer performance, and the initial temperature and flow velocity have positive effects. The experimental correlation formula of Nusselt number was obtained, and the average relative error of calculation and experiment is 4.46%, which indicates that the experimental correlation formula can well predict heat transfer performance. The heat transfer performance of flowing irregular semi-cokes under the condition of steam flow is better than that under the condition of no steam flow, and the heat transfer mechanism under the condition of steam flow was revealed. Meanwhile, the comprehensive heat transfer coefficient with steam flow is 79.5% higher than that without steam flow. The steam acts as an intermediate heat transfer medium of the flowing irregular semi-cokes and cooling wall, which occupies an important position on the heat transfer enhancement between the flowing irregular semi-cokes and cooling wall. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
248. An integrated optimization method for tactical-level planning in liner shipping with heterogeneous ship fleet and environmental considerations.
- Author
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Pasha, Junayed, Dulebenets, Maxim A., Fathollahi-Fard, Amir M., Tian, Guangdong, Lau, Yui-yip, Singh, Prashant, and Liang, Benbu
- Subjects
- *
MARITIME shipping , *SHIPPING containers , *COVID-19 pandemic , *NAVAL architecture , *SAILING ships , *CONTAINERIZATION , *CONTAINER ships - Abstract
• An integrated optimization model is developed for liner shipping. • The model captures all the major tactical-level planning decisions. • The deployment of a heterogeneous ship fleet is allowed at each route. • A decomposition-based heuristic is designed to solve the model. • Numerical experiments demonstrate the efficiency of the heuristic. • Managerial insights are illustrated using the developed model. The maritime transportation flows and container demand have been increasing over time, although the COVID-19 pandemic may slow down this trend for some time. One of the common strategies adopted by shipping lines to efficiently serve the existing customers is the deployment of large ships. The current practice in the liner shipping industry is to deploy a combination of ships of different types with different carrying capacities (i.e., heterogeneous fleet), especially at the routes with a significant demand. However, heterogeneous fleets of ships have been investigated by a very few studies addressing the tactical liner shipping decisions (i.e., determination of service frequency, ship fleet deployment, optimization of ship sailing speed, and design of ship schedules). Moreover, limited research efforts have been carried out to simultaneously capture all the major tactical liner shipping decisions using a single solution methodology. Therefore, this study proposes an integrated optimization model that addresses all the major tactical liner shipping decisions and allows the deployment of a heterogeneous ship fleet at each route, considering emissions generated throughout liner shipping operations. The model's objective maximizes the total turnaround profit generated from liner shipping operations. A decomposition-based heuristic algorithm is presented in this study to solve the model proposed and efficiently tackle large-size problem instances. Numerical experiments, carried out for a number of real-world liner shipping routes, demonstrate the effectiveness of the proposed methodology. A set of managerial insights, obtained from the proposed methodology, are also provided. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
249. An evolutionary-based predictive soft computing model for the prediction of electricity consumption using multi expression programming.
- Author
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Fallahpour, Alireza, Wong, Kuan Yew, Rajoo, Srithar, and Tian, Guangdong
- Subjects
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SOFT computing , *ELECTRIC power consumption , *PREDICTION models , *DEMAND forecasting , *GENETIC programming , *GROSS domestic product - Abstract
Proper estimation of electricity consumption is one of the influential factors for sustainability and cleaner production in both developed and developing countries. Many studies have been conducted to present accurate prediction models for forecasting electricity demand. However, researchers are still working to develop models with higher accuracy. This study applies a newer branch of Genetic Programming (GP) as a soft computing technique, known as Multi Expression Programming (MEP) to predict the electricity consumption of China for the first time based on the data collected from 1991 to 2019. Specifically, a robust mathematical model was developed using MEP for this purpose. Different predictive techniques known as Gene Expression Programming (GEP) and Adaptive Neuro Fuzzy Inference System (ANFIS) were used to compare the accuracy of the model. Based on the results, the proposed MEP model is more powerful and accurate than both GEP and ANFIS. In addition, a sensitivity analysis was conducted to present the impact of each factor on the electricity consumption of China. It was shown that among the four independent factors (Population, Gross Domestic Product (GDP), Import, and Export), Population has the highest impact, followed by Export, Import and GDP, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
250. Fractal heat conduction model of semi-coke bed in waste heat recovery heat exchanger.
- Author
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Gao, Haibo, Liu, Yongqi, Zheng, Bin, Sun, Peng, Lu, Min, and Tian, Guangdong
- Subjects
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HEAT recovery , *HEAT exchangers , *FRACTAL analysis , *THERMAL conductivity , *HEAT conduction , *HEAT transfer ,FRACTAL dimensions - Abstract
In order to realize the waste heat recovery of the high-temperature semi-cokes, the heat exchanger with one time heat transfer was put forward and the fractal heat conduction model was established for the first time. The internal structure of semi-cokes with different diameters in the heat exchanger was analyzed, and the internal structure was taken into account in the fractal heat conduction model. Furthermore, the fractal heat conduction model is demonstrated through the experiment, and it is compared with the traditional volume average model. The results showed that, the internal structure of semi-cokes in the heat exchanger determines the fractal heat conduction characteristics, and the influence of porosity on the equivalent thermal conductivity calculated by the fractal heat conduction model is less than the fractal dimension and the contact resistance number. The equivalent thermal conductivity calculated by the fractal heat conduction model is closer to experimental values than that calculated by the traditional volume average model, and the error of the equivalent thermal conductivity between the experimental values and the fractal heat conduction model is less than 6%, thus the fractal heat conduction model is valid and feasible. • A new waste heat recovery system of semi-coke was put forward. • The internal structure of semi-coke bed was obtained and analyzed. • The fractal heat conduction model was established for the first time. • The fractal heat conduction model is superior to traditional volume average model. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
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