1,881 results
Search Results
2. Celebrating the 30th anniversary of Meteorological Applications.
- Author
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Charlton‐Perez, Cristina and Zardi, Dino
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RENEWABLE energy source management ,METEOROLOGICAL services ,CLIMATE change adaptation ,ATMOSPHERIC boundary layer - Abstract
The article celebrates the 30th anniversary of the journal Meteorological Applications and provides a review of its accomplishments and historical context. The journal focuses on meteorological science, including weather and climate, and is aimed at forecasters, applied meteorologists, climate scientists, and users or providers of meteorological and climate services. Over the years, the journal has made changes to its submission and review processes, including moving to a free-format submission process, providing guidance on the use of color in figures, and implementing a double-blind review approach. The journal has seen an increase in the quality of submissions and its impact factor. Looking ahead, the journal plans to launch an Early Career Researcher Board and continue to publish papers on emerging technologies and issues related to climate change, renewable energy, geographic areas of focus, hydrology, economics, and the climate-water-food nexus. The success of the journal is attributed to the dedication and hard work of the editorial team, reviewers, and authors. [Extracted from the article]
- Published
- 2024
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3. David Archer and Raymond Pierrehumbert (Eds), 2011. The warming papers: The scientific foundation for the climate change forecast, Wiley-Blackwell, Chichester, UK. ISBN: 978-1-4051-9616-1. VIII + 419 PP.
- Author
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Burt, P. J. A., primary
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- 2012
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4. Low‐cost air quality monitoring networks for long‐term field campaigns: A review.
- Author
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Carotenuto, F., Bisignano, A., Brilli, L., Gualtieri, G., and Giovannini, L.
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AIR quality monitoring ,AIR quality ,AIR pollution ,AIR conditioning ,OPEN scholarship - Abstract
The application of low‐cost air quality monitoring networks has substantially grown over the last few years, following the technological advances in the production of cheap and portable air pollution sensors, thus potentially greatly increasing the limited spatial information on air quality conditions provided by traditional stations. However, the use of low‐cost air quality sensors still presents many limitations, mostly related to the reliability of their measurements. Despite the increasing number of papers focusing on these issues, some of the challenges connected to the use of low‐cost air quality sensors are still poorly investigated and understood, considering in particular those related to long‐term applications of low‐cost air quality networks and their integration within the reference air quality monitoring system. The present review aims at filling this gap, by analysing the characteristics of low‐cost air quality monitoring networks that were run across long‐term field campaigns, including their geographical location, the pollutants monitored, the type and number of stations employed, and the length of the field campaign, with a particular attention on assessing the aims for their deployment and on the evaluation of their integration within official air quality monitoring networks. Moreover, a critical analysis of the most insightful suggestions and recommendations delivered in the literature, as well as of the relevant critical issues, is presented, highlighting still open research areas and outlining future challenges. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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5. Announcements and calls for papers
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- 1998
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6. David Archer and Raymond Pierrehumbert (Eds), 2011. The warming papers: The scientific foundation for the climate change forecast, Wiley-Blackwell, Chichester, UK. ISBN: 978-1-4051-9616-1. VIII + 419 PP
- Author
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P. J. A. Burt
- Subjects
Atmospheric Science ,History ,Foundation (engineering) ,Economic history ,Climate change - Published
- 2012
7. Announcements and calls for papers
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- 1996
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8. Announcements and calls for papers
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- 1995
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9. Announcements and calls for papers
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- 1994
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10. Global hydrological reanalyses: The value of river discharge information for world‐wide downstream applications – The example of the Global Flood Awareness System GloFAS.
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Prudhomme, Christel, Zsótér, Ervin, Matthews, Gwyneth, Melet, Angelique, Grimaldi, Stefania, Zuo, Hao, Hansford, Eleanor, Harrigan, Shaun, Mazzetti, Cinzia, de Boisseson, Eric, Salamon, Peter, and Garric, Gilles
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EMERGENCY management ,MARINE resources ,HYDROLOGIC cycle ,OCEAN dynamics ,LAND resource ,FLOODS ,DROUGHTS - Abstract
Global hydrological reanalyses are modelled datasets providing information on river discharge evolution everywhere in the world. With multi‐decadal daily timeseries, they provide long‐term context to identify extreme hydrological events such as floods and droughts. By covering the majority of the world's land masses, they can fill the many gaps in river discharge in‐situ observational data, especially in the global South. These gaps impede knowledge of both hydrological status and future evolution and hamper the development of reliable early warning systems for hydrological‐related disaster reduction. River discharge is a natural integrator of the water cycle over land. Global hydrological reanalysis datasets offer an understanding of its spatio‐temporal variability and are therefore critical for addressing the water–energy–food–environment nexus. This paper describes how global hydrological reanalyses can fill the lack of ground measurements by using earth system or hydrological models to provide river discharge time series. Following an inventory of alternative sources of river discharge datasets, reviewing their advantages and limitations, the paper introduces the Copernicus Emergency Management Service (CEMS) Global Flood Awareness System (GloFAS) modelling chain and its reanalysis dataset as an example of a global hydrological reanalysis dataset. It then reviews examples of downstream applications for global hydrological reanalyses, including monitoring of land water resources and ocean dynamics, understanding large‐scale hydrological extreme fluctuations, early warning systems, earth system model diagnostics and the calibration and training of models, with examples from three Copernicus Services (Emergency Management, Marine and Climate Change). [ABSTRACT FROM AUTHOR]
- Published
- 2024
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11. What can we learn from nested IoT low‐cost sensor networks for air quality? A case study of PM2.5 in Birmingham, UK.
- Author
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Cowell, Nicole, Baldo, Clarissa, Chapman, Lee, Bloss, William, and Zhong, Jian
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SENSOR networks ,POLLUTION management ,PARTICULATE matter ,ENVIRONMENTAL monitoring ,AIR quality ,AIR pollution - Abstract
Low‐cost sensing and the Internet of Things (IoT), present new possibilities for unconventional monitoring of environmental parameters. This paper describes a series of intersecting networks of particulate matter sensors that were deployed across the Birmingham conurbation for a 12‐month period. The networks consisted of a combination of commercially available sensors and University developed sensors. Data from these networks were assimilated with data from a third‐party Zephyr deployment, along with the DEFRA AURN network, which was hosted on an open‐source online platform. This nesting of sensor networks allowed for new insights into sensor performance, including the accuracy of a large network to detect regional concentrations and the number of sensors needed for effective monitoring beyond indicative measurements. After comprehensive data validation steps, the sensors were shown to perform well during co‐location with reference instrumentation (exhibiting slopes of 0.74–1.3). The sensors demonstrated good capability of detecting temporal patterns of regional PM2.5 with the mean of the entire sensor network recording an annual mean PM2.5 concentration within 0.2 μgm−3 of the regulatory network annual mean observation. Network‐derived statistics for estimating urban background concentrations compared to a reference site increase in‐line with the number of sensors available, however when assessing this for near‐source concentrations the importance of sensor location rather than the number of sensors is highlighted. Overall, the network provided novel insights into local concentrations, detecting similar hotspots to those identified by a high‐resolution model. The increased spatial coverage afforded by the sensor network has the potential to support higher resolution evaluation of models and provide unprecedented spatial evidence for air pollution management interventions. [ABSTRACT FROM AUTHOR]
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- 2024
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12. Application of commercial microwave links (CMLs) attenuation for quantitative estimation of precipitation.
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Pasierb, Magdalena, Bałdysz, Zofia, Szturc, Jan, Nykiel, Grzegorz, Jurczyk, Anna, Ośródka, Katarzyna, Figurski, Mariusz, Wojtczak, Marcin, and Wojtkowski, Cezary
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RAIN gauges ,PRECIPITATION gauges ,RADAR meteorology ,PRECIPITATION (Chemistry) ,MICROWAVES ,METEOROLOGICAL satellites - Abstract
Precipitation estimation models are typically sourced by rain gauges, weather radars and satellite observations. A relatively new technique of precipitation estimation relies on the network of Commercial Microwave Links (CMLs) employed for cellular communication networks: the rain‐inducted attenuation in the links enables the precipitation estimation. In the paper, it is analysed to what extent the precipitation derived from CML attenuation data is useful in estimation of the precipitation field with the high temporal and spatial resolution required in nowcasting models. Two methods of determination of precipitation along CMLs from attenuation of signal with several frequencies were proposed. Then, in order to generate precipitation field, three approaches for assigning appropriate precipitation values to a specific point or set of pixels along the link are developed and tested. The CML‐based estimates are compared with point observations from manual rain gauges and multi‐source precipitation fields using daily and half‐hourly accumulations. It was found that the CML‐based precipitation fields are much worse than radar‐derived estimates. At the same time, they had slightly poorer reliability than spatially interpolated telemetric rain gauge data and significantly higher reliability than satellite estimates. Furthermore, the impact of link characteristics, such as length and frequency, on the reliability of CML‐based precipitation estimates is analysed. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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13. Pre‐tactical convection prediction for air traffic flow management using LSTM neural network.
- Author
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Jardines, Aniel, Soler, Manuel, García‐Heras, Javier, Ponzano, Matteo, and Raynaud, Laure
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ARTIFICIAL neural networks ,AIR traffic ,AIR flow ,TRAFFIC flow ,NUMERICAL weather forecasting ,RECURRENT neural networks ,MACHINE learning - Abstract
This paper aims to explore machine learning techniques for post‐processing high‐resolution Numerical Weather Prediction (NWP) products for the early detection of convection. Data from the Arome Ensemble Prediction System and satellite observations from the Rapidly Developing Thunderstorm (RDT) product by Météo‐France are used to train a recurrent neural network model to predict areas of total convection and moderate convection. The learning task is formulated as a binary classification problem using a long short‐term memory (LSTM) network architecture. Results from the LSTM model are compared with an object‐based probabilistic approach to forecast convection using metrics such as a receiver operating characteristics (ROC) curve, the Brier score and reliability. Results indicate that the LSTM model performs similarly to the object‐based probabilistic benchmark when classifying moderate convection areas and shows improved skill when classifying areas of total convective. Finally, the LSTM model results are presented within an air traffic management context to showcase the potential use of machine learning models within an operational application. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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14. Prediction method of regional carbon dioxide emissions in China under the target of peaking carbon dioxide emissions: A case study of Zhejiang.
- Author
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Xu, Shuaixi, Lv, Zeyan, Wu, Jiezhen, Chen, Lijun, Wu, Junhong, Gao, Yi, Lin, Chengmiao, Wang, Yan, Song, Die, and Cui, Jiecan
- Subjects
CARBON emissions ,EMISSION inventories ,NUCLEAR reactors ,ENERGY consumption - Abstract
All provinces of China respond to the central government, predict future carbon dioxide emissions, and formulate action plans detailing how the province intends to fulfill its target of carbon emission peaking before 2030. Based on the bottom‐up energy consumption prediction and top‐down goal verification, this paper constructs a set of regional carbon dioxide emission prediction methods. Compared to the traditional bottom‐up prediction method, this method could simplify the parameters while improving the prediction accuracy. This model is used to predict and analyze the process of carbon dioxide emission peaking in Zhejiang. The results show that the mean absolute percentage error of the retrospective prediction value is only 1.56%. Zhejiang will reach carbon dioxide emission peaking around 2029–2030, and the peak value will be 569.7 million tons. Different factors have different effects on the process of carbon dioxide emission peaking. There is a strong correlation between the peak time of carbon dioxide emission and the production time of major energy‐consuming projects in Zhejiang. Meanwhile, if the 16 nuclear reactors are not put into operation, Zhejiang will not be able to achieve the goal of carbon dioxide emission peaking. Besides, the basic data used in this model is mainly from the local statistical departments of the region. Thus, it can be applied to other provinces and regions conveniently. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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15. Rainy season and crop calendars comparison between past (1950–2018) and future (2030–2100) in Madagascar.
- Author
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Randriamarolaza, Luc Yannick Andréas and Aguilar, Enric
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CULTIVARS ,FARMERS ,RAINFALL ,CROP growth ,ATMOSPHERIC models ,RICE farming ,RICE - Abstract
This paper analyzes rainfall data to characterize the rainy season and define rice and maize crop calendars for current and future conditions in Madagascar. The daily rainfall data are taken from observational climate records and climate model simulations from the CMIP6 under the SSP245 and SSP585 scenarios. Rainy season characteristics are calibrated to fit rice and maize crop growth stages. The comparison between the past (1950–2018) and the future (2030–2100) highlights changes in the onset and cessation dates, which happen later and earlier, respectively. This causes the reduction of the rainy season duration, which affects the rice and maize crop calendars, especially its sowing or seeding periods. The worst (best) case is mainly observed in the southeast (southwest). On the one hand, the southwestern region may need to adapt to grow rice and maize crops with short or medium crop cycles in the future. In the Highland or Central land, the length of the sowing or seeding period increases. On the other hand, the North and East face a significant reduction in the length of the sowing or seeding period. Rice endures more than maize. Growing rice crops twice a year may not be possible in the future. But rather, we observe minor changes in the West. Our analysis suggests the imperative necessity to advise smallholder farmers to rely on short crop cycle varieties of rice and maize crops. Predominantly, the harvesting period is postponed. It is recommended to carefully consider our results for the definition of food policies. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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16. An improved GNSS remote sensing technique for 3D distribution of tropospheric water vapor.
- Author
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Long, Ankang, Ye, Shirong, and Xia, Pengfei
- Subjects
WATER vapor ,GLOBAL Positioning System ,REMOTE sensing ,WATER distribution ,ATMOSPHERIC water vapor measurement ,VAPOR density - Abstract
Water vapor plays an extremely important role in the monitoring and prediction of weather, and GNSS tomography can obtain 3D spatiotemporal change information and reliable water vapor profiles. In this paper, an improved global navigation satellite system (GNSS) tropospheric tomography technique using an ERA5 (the fifth generation ECMWF reanalysis) product is developed. First, the ERA5 product was adopted to analyze the spatiotemporal distribution of water vapor, and a water vapor density threshold defining the top of the tomography was determined; then, the height of the grid top (GT) of different seasons was obtained through linear fitting; finally, the water vapor value between GT and tropopause is constrained using the data of the ERA5 product as the initial value. The new method for using the ERA5 product to determine the height of the GT of the tomographic grid reduces the height of the top layer of the grid and increases the number of effective GNSS rays. Data from nine CORS stations in Hong Kong in 2019 were selected for experiments. The results showed that the new algorithm increased the number of effective satellite signals by 14%. In addition, the ERA5 data, the radiosonde data, and the COSMIC‐2 data were used as reference values. The accuracy of the water vapor density obtained by the algorithm was improved by 25%, 17% and 9%, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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17. Announcements and calls for papers
- Published
- 1998
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18. A seamless blended multi‐model ensemble approach to probabilistic medium‐range weather pattern forecasts over the UK.
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Neal, Robert, Robbins, Joanne, Crocker, Ric, Cox, Dave, Fenwick, Keith, Millard, Jonathan, and Kelly, Jason
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LONG-range weather forecasting ,WEATHER ,WEATHER forecasting ,LEAD time (Supply chain management) - Abstract
This paper describes a new seamless blended multi‐model ensemble configuration of an existing probabilistic medium‐ to extended‐range weather pattern forecasting tool (called Decider) run operationally at the Met Office. In its initial configuration, the tool calculated and presented probabilistic weather pattern forecast information for five individual ensemble forecasting systems, which varied in terms of their number of ensemble members, horizontal resolution, update frequencies and forecast lead time. This resulted in multiple forecasts for the same validity time which varied in terms of forecast skill depending on the lead time in question. This presented challenges for end‐users (e.g., operational meteorologists) in terms of knowing which forecast output is best to use and at which lead time, as well as knowing what to do in situations where forecasts varied between ensembles. To get around these challenges, a new seamless blended multi‐model ensemble configuration has been implemented operationally, comprising of output from five separate ensembles, and provides a single best forecast from day one out to day 45. Objective verification for a set of eight weather pattern groups covering forecasts initialized over a 6‐year period (2017–2022) shows that the seamless blended multi‐model ensemble forecasts are at least as good as, if not better than the best performing individual model. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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19. LD‐Net: A novel one‐stage knowledge distillation algorithm for lightning detection network.
- Author
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Fu, Junjie, Li, Yingxiang, Liu, Jiawei, Ji, Yulin, and Zhong, Jiandan
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DEEP learning ,THUNDERSTORMS ,OBJECT recognition (Computer vision) ,LIGHTNING ,CONVOLUTIONAL neural networks ,ELECTROMAGNETIC interference ,ELECTROMAGNETIC fields - Abstract
Lightning often causes death, injury, and damage to various facilities and equipment. Accurately detecting the spatial location of lightning occurrence by predicting thunderstorms and lightning is of great significance. Traditional lightning detection systems detect lightning by measuring the sound, light, and electromagnetic field information radiated by lightning. These methods typically have two problems. First, the detection process of lightning signals is susceptible to electromagnetic interference. Second, the equipment cost is high and is not friendly to some lightning detection tasks only targeted at specific scenarios. In order to detect lightning more conveniently, we propose a lightning detection model based on deep learning networks. With the increase in the use of cameras in modern society, designing lightning object detection networks based on deep learning is possible. However, two problems have been found in existing practice: (1) When strong lightning meteorological phenomena occur, the lightning features in the image are covered by bright electric lights, and convolutional neural networks cannot distinguish between strong lightning scenes and strong ultraviolet scenes. (2) The performance of convolutional neural networks is often related to the model's size. The larger the model, the stronger the performance of the network. However, in practical application scenarios, computing resources are insufficient to use sufficiently large networks. In this paper, we propose a simple and effective lightning object detection network (LD‐Net) and use a foreground‐background segmentation algorithm to locate frames containing lightning in the video. After using the knowledge distillation‐based model compression method, the mAP of the lightning object detection network with a backbone net of resnet with 18‐layer (LD‐Net‐18) can reach 82.4%. We hope that the proposed LD‐Net can serve as a simple and powerful alternative to traditional lightning detection methods, enhancing efficiency in lightning detection tasks. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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20. A new framework for using weather‐sensitive surplus power reserves in critical infrastructure.
- Author
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Fallon, James, Brayshaw, David, Methven, John, Jensen, Kjeld, and Krug, Louise
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INFRASTRUCTURE (Economics) ,TELECOMMUNICATION systems ,ELECTRIC power consumption ,RENEWABLE energy transition (Government policy) ,ENERGY consumption - Abstract
Reserve power systems are widely used to provide power to critical infrastructure systems in the event of power outages. The reserve power system may be subject to regulation, typically focussing on a strict operational time commitment, but the energy involved in supplying reserve power may be highly variable. For example, if heating or cooling is involved, energy consumption may be strongly influenced by prevailing weather conditions and seasonality. Replacing legacy assets (often diesel generators) with modern technologies could offer potential benefits and services back to the wider electricity system when not in use, therefore supporting a transition to low‐carbon energy networks. Drawing on the Great Britain telecommunications systems as an example, this paper demonstrates that meteorological reanalyses can be used to evaluate capacity requirements to maintain the regulated target of 5‐days operational reserve. Across three case‐study regions with diverse weather sensitivities, infrastructure with cooling‐driven electricity demand is shown to increase energy consumption during summer, thus determining the overall capacity of the reserve required and the availability of 'surplus' capacity. Lower risk tolerance is shown to lead to a substantial cost increase in terms of capacity required but also enhanced opportunities for surplus capacity. The use of meteorological forecast information is shown to facilitate increased surplus capacity. Availability of surplus capacity is compared to a measure of supply–stress (demand‐net‐wind) on the wider energy network. For infrastructure with cooling‐driven demand (typical of most UK telecommunication assets), it is shown that surplus availability peaks during periods of supply–stress, offering the greatest potential benefit to the national electricity grid. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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21. Improving seasonal prediction of summer rainfall over southern China using the BCC_CSM1.1m model‐circulation increment‐based dynamic statistical technique.
- Author
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Zhou, Fang, Han, Weiming, Zhang, Dapeng, and Cao, Rong
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EL Nino ,RAINFALL anomalies ,RAINFALL ,SEASONS ,ATMOSPHERIC models ,SUMMER - Abstract
A model‐circulation increment‐based dynamic statistical technique (MIDST) is proposed in this paper to improve the prediction of summer rainfall over southern China (SC) where quite low prediction skills have been found in the Beijing Climate Center Climate System Model version 1.1 with a moderate resolution (BCC_CSM1.1m). The results show that BCC_CSM1.1m can hardly represent the variability of the summer rainfall anomaly and its year‐to‐year increment over SC, and the skillful predictions are mostly confined over the middle reaches of the Yangtze River. Using the dynamic model output and statistical method, the MIDST is established to capture the coupled modes between the year‐to‐year increments of the summer rainfall anomaly and the associated simultaneous three‐dimensional coupled air‐sea circulation predictors. The cross‐validation indicates that the prediction skills of the MIDST are evidently improved for both the summer rainfall increment prediction and summer rainfall anomaly prediction compared with the direct BCC_CSM1.1m prediction. The skillful prediction can persist for long forecast leads over most regions except southwestern China. As the major predictability source of seasonal prediction, the intense response to changes in the circulation related to the El Niño‐Southern Oscillation (ENSO) is well captured, and thus, the performance improvement of the MIDST is primarily due to its more realistic representation of the incremental circulation related to the ENSO. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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22. Announcements and calls for papers.
- Published
- 1996
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23. Comparison between statistical and dynamical downscaling of rainfall over the Gwadar‐Ormara basin, Pakistan.
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Attique, Raazia, Rientjes, Tom, and Booij, Martijn
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DOWNSCALING (Climatology) ,RAINFALL ,RAINFALL periodicity ,GENERAL circulation model ,ATMOSPHERIC models - Abstract
This paper evaluated and compared the performance of a statistical downscaling method and a dynamical downscaling method to simulate the spatial–temporal rainfall distribution. Outputs from RegCM4 Regional Climate Model (RCM) and the CanESM2 Atmosphere–Ocean General Circulation Model (AOGCM) were selected for the data scarce Gwadar‐Ormara basin, Pakistan. The evaluation was based on the climatological average and standard deviation for historic (1971–2000) and future (2041–2070) time periods under Representative Concentration Pathways (RCP) 4.5 and 8.5 scenarios. The performance evaluation showed that statistical downscaling is preferred to simulate and project rainfall patterns in the study area. Additionally, the Statistical DownScaling Model (SDSM) showed low R2 values in calibration and validation of the simulations with respect to observed data for the historic period. Overall, SDSM generated satisfactory results in simulating the monthly rainfall cycle of the entire basin. In this study, RegCM4 showed large rainfall errors and missed one rainfall season in the historic period. This study also explored whether the grid‐based rainfall time series of the Asian Precipitation—Highly Resolved Observational Daily Integration Towards Evaluation (APHRODITE) dataset could be used to enlarge and complement the sample of in situ observed rainfall time series. A spatial correlogram was used for observed and APHRODITE rainfall data to assess the consistency between the two data sources, which resulted in rejecting APHRODITE data. For the future time period (2041–2070) under RCPs 4.5 and 8.5 scenarios, rainfall projections did not show significant difference for both downscaling approaches. This may relate to the driving model (CanESM2 AOGCM) and not necessarily suggests poor performance of downscaling; either statistical or dynamical. Hence, the study recommends evaluating a multi‐model ensemble including other GCMs and RCMs for the same area of study. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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24. Influence of climatic conditions on Normalized Difference Vegetation Index variability in forest in Poland (2002–2021).
- Author
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Kulesza, Kinga and Hościło, Agata
- Subjects
NORMALIZED difference vegetation index ,MODIS (Spectroradiometer) ,FOREST microclimatology ,REMOTE sensing - Abstract
The influence of climate change on forest condition is noticeable. Forest ecosystem stress caused by climate change has already been manifested in several parts of Europe, including Poland. Thus, the main objective of this paper is to investigate for the entire area of Poland a long‐term trend and variability of forest greenness expressed as the Normalized Difference Vegetation Index (NDVI), derived from two decades (2002–2021) of remote sensing Moderate Resolution Imaging Spectroradiometer (MODIS) data. In the next step, selected meteorological elements – temperature (T), precipitation (P) and evapotranspiration (ETo), derived from ERA5‐Land reanalysis—were used to determine the influence of climatic conditions on the variability of NDVI in forests. The study documents the general greening of forests in Poland in 2002–2021. The greening is mostly visible in central‐eastern Poland, where the annual mean NDVI increased by 0.030 in 20 years, while it is weaker in the Baltic coast and in the southern edges of Poland (increase by 0.009 in 20 years). Overall, the positive, statistically significant trends in annual NDVI prevail over the negative, statistically significant trends and account for 32.5% of forest area, whereas the negative trends account for 3.9%. The study indicates an overall moderate impact of meteorological elements on variability of NDVI in forests in Poland. The most important factors affecting forest condition are P and ETo. The strongest correlations between NDVI and P and ETo reach 0.55 and are located in central Poland, in the form of a belt from western to eastern borders. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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25. Performance evaluation of a high‐resolution regional model over West Africa for operational use: A case study of August 2017.
- Author
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Olaniyan, Eniola A., Cafaro, Carlo, Ogungbenro, Stephen B., Gbode, Imoleayo E., Ajayi, Vincent O., Oluleye, Ayodeji, Adefisan, Elijah A., Schwendike, Juliane, and Lawal, Kamoru A.
- Subjects
METEOROLOGICAL services ,RAINFALL ,NUMERICAL weather forecasting ,ATMOSPHERIC circulation ,ATMOSPHERIC models ,WEATHER forecasting ,HURRICANE Irma, 2017 - Abstract
The frequency of flash floods resulting from heavy rainfall over West Africa has increased in recent years with serious socio‐economic consequences. Therefore, the need to utilize numerical weather prediction models to forecast heavy rainfall events reliably is also rising at many operational meteorological centres in West Africa. This paper evaluates the performance of the Consortium for Small‐scale Modelling (COSMO) model of the German Meteorological Services (DWD) in predicting rainfall over West Africa for high‐impact rainfall events that occurred between 19 and 26 August 2017. The paper aims to investigate the synoptic forcings modulating daily rainfall variability during that period. Results show that COSMO simulates adequately the spatio‐temporal variability of rainfall distribution over West Africa, though with inherent biases. COSMO displays a decreasing skill in producing spatial rainfall distribution as rainfall amounts tend to 30 mm and above. Additionally, areas of heavy rainfall, mostly about 100–300 km southwest of the core of the Africa Easterly Jet (AEJ), often coincide with areas of decreasing mean sea level pressure of at least 0.6 hPa and areas of increasing convective available potential energy of at least 500 J/kg. Although not in all cases, the trough of the Africa Easterly Wave (AEW) is always located to the east of these areas. We show that not every storm, especially east of the prime meridian, is associated with an AEW trough. COSMO is able to reproduce the atmospheric dynamics modulating the daily rainfall variability, in addition to capturing the daily propagation of the AEW trough, and the core of the AEJ. However, the reproducibility skill of the model in predicting atmospheric dynamics may not transform into the predictive skill of the model in producing rainfall. Nevertheless, operational forecasters may be able to determine likely areas of heavy rainfall by estimating the position of the AEJ core based on the position of areas of the least falling pressure from COSMO. Finally, the incorporation of the fractions skill score metric based on the neighbourhood approach could also assist operational forecasters to decide at which scale a severe weather alert can be issued. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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- View/download PDF
26. A decision‐making experiment under wind power forecast uncertainty.
- Author
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Möhrlen, Corinna, Bessa, Ricardo J., and Fleischhut, Nadine
- Abstract
As the penetration levels of renewable energy sources increase and climatic changes produce more and more extreme weather conditions, the uncertainty of weather and power production forecasts can no longer be ignored for grid operation and electricity market bidding. In order to support the energy industry in the integration of uncertainty forecasts into their business practices, this work describes an experiment conducted with 105 participants from the energy industry. In the framework of an IEA Wind Task 36 workshop, the experiment aimed to investigate existing psychological barriers in the industry to adopt probabilistic forecasts and to better understand human decision processes. We designed and ran a ‘decision game’ to demonstrate the potential benefits of uncertainty forecasts in a realistic—although simplified—problem, where an energy trader had to decide whether to trade 100% or 50% of the energy of an offshore wind park on a given day based on deterministic and probabilistic uncertainty day‐ahead forecasts. The focus thus was on a decision‐making process dealing with extremes that can cause high costs in the form of security issues in the electric grid for system operators, or high monetary losses for traders, who have bid a power production into the market that failed to be produced due to high‐speed shutdown of the wind turbines. This paper presents the obtained results, extracts behavioural conclusions and identifies how to overcome psychological barriers to the adoption of uncertainty forecasts in the energy industry.We designed a ‘decision game’ to demonstrate the potential benefits of uncertainty forecasts in a realistic—although simplified—problem, where an energy trader had to decide whether to trade 100% or 50% of the energy of an offshore wind park on a given day based on deterministic and probabilistic uncertainty day‐ahead forecasts. This paper presents the obtained results, extracts behavioural conclusions and identifies how to overcome psychological barriers to the adoption of uncertainty forecasts in the energy industry. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
27. Announcements and calls for papers.
- Published
- 1995
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- View/download PDF
28. Announcements and calls for papers
- Published
- 1994
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29. Historical analysis (2001–2019) of low‐level wind shear at the Hong Kong International Airport.
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Hon, Kai‐Kwong and Chan, Pak‐wai
- Subjects
WIND shear ,INTERNATIONAL airports ,DISTRIBUTION (Probability theory) ,HISTORICAL analysis ,AIR traffic - Abstract
This paper analyses over 10,000 quality‐controlled pilot reports of low‐level wind shear ('wind shear') at the Hong Kong International Airport (HKIA; ICAO code: VHHH) between 2001 and 2019. HKIA is well known for its susceptibility to wind shear, which is a potential hazard for aircraft during landing and take‐off. Wind shear at HKIA exhibits strong seasonality with double peaks in the middle of the spring and summer months. There is a strong diurnal cycle in report numbers, peaking towards the afternoon, as modulated by air traffic at HKIA. On average, there are 115 days per year with wind shear reported, with possible power law distribution in the number of days with different number of reports. By comparing the background wind distribution during those minutes with pilot reports against the climatological distribution, wind shear is observed to be, on average, favoured under higher wind speeds (≥6 m s−1) and reduced under lower speeds with shifted frequency peak and heavier tail, although statistical behaviour can differ significantly across individual runway corridors. Preferred background wind directions for wind shear occurrence highlight the role of terrain influence upstream of HKIA. While positive shear (65.6%) is more often reported than negative shear (34.4%), both types of wind shear events appear to follow an exponential distribution in shear magnitude, with similar rates of decay. This is by far the largest statistical study of low‐level wind shear at an airport. Results can serve as an important local reference in addition to being a useful example for airports around the world. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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30. Wind observations from hot‐air balloons and the application in an NWP model.
- Author
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de Bruijn, Evert I. F., Bosveld, Fred C., de Haan, Siebren, Marseille, Gert‐Jan, and Holtslag, Albert A. M.
- Subjects
ATMOSPHERIC boundary layer ,METEOROLOGICAL observations ,ZONAL winds ,MERIDIONAL winds ,NUMERICAL weather forecasting ,SIX Sigma ,KALMAN filtering - Abstract
In this paper, we report on a wind observation method based on the movement of hot‐air balloons (HABs). A quality assessment was carried out by comparing against wind observations at the meteorological tower of Cabauw in the Netherlands during May–September 2018, and the obtained standard deviations in error were σu=0.65ms−1$$ {\sigma}_u=0.65\;{\mathrm{ms}}^{-1} $$ and σv=0.69ms−1$$ {\sigma}_v=0.69\;{\mathrm{ms}}^{-1} $$ for the measured zonal and meridional wind components, respectively. Subsequent comparison against short‐term forecasts of the HARMONIE‐AROME model showed a standard deviation of 2.5 ms−1 for the wind vector difference. From the HAB observation set, a case was selected with a rapidly changing wind field belonging to a small intensifying depression. The HAB wind observation was applied in data assimilation as a proof of principle for a single‐observation experiment. It is shown that in a complex baroclinic situation, the model state is slightly improved. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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- View/download PDF
31. Deep learning‐based precipitation bias correction approach for Yin–He global spectral model.
- Author
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Hu, Yi‐Fan, Yin, Fu‐Kang, and Zhang, Wei‐Min
- Abstract
In this paper, a data‐driven bias correction approach based on deep learning is proposed, which is appropriate for the Yin–He global spectral model (YHGSM) re‐forecasting. The proposed architecture involves four U‐Net‐based networks estimating the proper bias correction models for YHGSM re‐forecasting that consider as correction factors the geopotential, specific humidity, and vertical velocity on three pressure levels from the YHGSM model. The proposed models are then evaluated for their bias correction capability on the 3‐h cumulative precipitation over the region of China between 15°–54.5° N, and 63°–122.5° E. The results revealed that U‐Net‐based models could reduce the root mean squared error (RMSE) and improve the threat scores (TSs), especially for heavy precipitation and rainstorms.The architecture of U‐Net based model. When the red arrow indicates double convolution, the original U‐Net and Att‐UNet are indicated, respectively, according to whether the attention module is used or not. When the red arrow indicates the residual, it indicates Res‐UNet, and if using the attention module then it is RA‐UNet. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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- View/download PDF
32. Enhancing power distribution network operational resilience to extreme wind events.
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Donaldson, Daniel L., Ferranti, Emma J.S., Quinn, Andrew D., Jayaweera, Dilan, Peasley, Thomas, and Mercer, Mark
- Subjects
POWER distribution networks ,EXTREME weather ,SNOWSTORMS ,INFRASTRUCTURE (Economics) ,COMMUNICATION infrastructure ,WINDSTORMS ,HURRICANES - Abstract
Extreme weather events can cause significant damage to power distribution network infrastructure, often resulting in power outages. Distribution Network Operators (DNOs) are faced with the challenging task of responding to these outages in real time while maintaining a resilient grid. Our paper presents an innovative approach to alert operators about the potential risk associated with upcoming extreme weather through a normalized fragility curve. The uniqueness of the curve is the ability to capture regional differences across a DNO's territory while presenting operators with a means of setting unified risk thresholds. This can support a proactive response and allow the staging of necessary resources to minimize the threat posed by such events. Our approach captures the changes in failure probability associated with differing wind regimes and demonstrates the benefit of sub‐regional meteorological information. The proposed approach is demonstrated for wind events using 20 years of historical fault records from a DNO in the United Kingdom (UK). While its efficacy is demonstrated for windstorms in the UK, the approach could be applied globally to develop normalized fragility curves for other types of seasonal extreme weather events such as snowstorms, hurricanes, or linked hazards such as wildfires. The approach can also facilitate an understanding of how infrastructure may operate under future climate conditions, supporting proactive adaptation. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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33. Links between geomagnetic activity and atmospheric cold fronts passage over the Belgrade region, Serbia.
- Author
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Todorović, Nedeljko and Vujović, Dragana
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FRONTS (Meteorology) ,SOLAR activity ,ATMOSPHERIC temperature ,SOLAR oscillations ,ATMOSPHERE ,GEOMAGNETISM ,CYCLONES - Abstract
The suggestion that variations in solar irradiance affect Earth's weather and climate is based on correlations between solar and meteorological parameters. Solar activity influences the Earth's magnetic field. The geomagnetic activity index (GAI) is one of the indexes that measure this influence. In this paper, we researched the link between GAI and the passage of atmospheric cold fronts (CFs) over the Belgrade region, Serbia. Three years of daily data for solar (coronal holes, protons velocity and density), geomagnetic (GAI, electrical potential of Earth's atmosphere) and meteorological (air temperature, wind and precipitation) parameters were analysed. We developed a methodology that established pairs of GAI peaks and CFs and found the time interval (TI) between them. In 88.5% of cases, we were able to pair a GAI and a CF, while in 11.44% pairing could not be established. The number of GAI peaks without assigned CFs increased as mean values of GAI decreased. Most frequently, following an increase in the GAI, a CF passed after 7 days (relative frequency 22.8%), followed by 6 days (19.9%) and 8 days (18.5%). These three TIs covered, in sum, 61.3% of cases. Mean TI value was 6.82 days. The warm part of the year had the same TI distribution but the cold part of the year produced a bimodal frequency, with a maximum of 8 days (21.6%), followed by 5 (18.3%) and 6 days (17.6%). The most frequent CFs passing over Belgrade are from WNW‐N (67.1%) and SSW‐W (27.6%) quadrants. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
34. Auto station precipitation data making up using an improved neuro net.
- Author
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Jing Lu and Xiakun Zhang
- Subjects
AUTOMATIC meteorological stations ,PROBLEM solving ,ELECTROMAGNETIC interference ,HUMAN error ,DATA integrity - Abstract
In the real world, precipitation data of automatic weather stations are easily influenced by direct thunderstrokes, instrument ageing, electromagnetic interference, human operation errors and other factors. When close to the observation time, if the missing automatic station data cannot be corrected in a timely fashion, the whole quality of the station data will be affected. Thus, correct handling of the missing precipitation data to maintain their integrity has important significance. In this paper, we propose a “from coarse to fine” (FCTF) neural network to fill out the missing blanks and experiments show that this method to solve the problem of meteorological data shortage is effective. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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- View/download PDF
35. Improved estimation of global solar radiation over rugged terrains by the disaggregation of Satellite Applications Facility on Land Surface Analysis data (LSA SAF)
- Author
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Fibbi, Luca, Maselli, Fabio, and Pieri, Maurizio
- Abstract
This paper presents a new method to predict global solar radiation over irregular terrain, named Estimation of global solar RADiation (ERAD). The method is based on the disaggregation of Satellite Applications Facility on Land Surface Analysis (LSA SAF) data using a digital elevation model and is applied in Italy with a time step of 1 min and a spatial resolution of 200 m. A quantitative assessment of ERAD is performed in comparison with three other standard methods (Mountain Microclimate Simulation Model [MTCLIM], LSA SAF and Copernicus Atmosphere Monitoring Service [CAMS]) using measurements taken in 43 stations located in Italy or in the surrounding countries, in the years 2005–2016. Such assessment concerns the irradiance incoming on a horizontal surface, which is measured by ground radiation sensors and is summarized by means of four accuracy statistics (i.e. mean absolute error [MAE], root mean square error [RMSE], coefficient of determination [R2] and mean bias error [MBE]). Overall, the average daily global solar radiation estimates obtained by ERAD have RMSE and R2 about 25 W·m−2 and 0.943, respectively. These statistics are similar to those of LSA SAF and better than those of CAMS and, above all, MTCLIM. The bias analysis by elevation ranges shows a slight ERAD overestimation over plains and hills and a slight underestimation over mountains. An additional qualitative assessment shows how the ERAD radiation estimates are more spatially detailed than those of the other methods and are redistributed on inclined surfaces consistently with expectations.This paper presents a new method to predict global solar radiation over irregular terrain, named Estimation of global solar RADiation (ERAD). Solar radiation is downscaled over Italy using a digital elevation model at 200 m and a time step of 1 min. ERAD is assessed in comparison with three other standard methods (MTCLIM, LSA SAF and CAMS) versus observations taken in 43 weather stations from 2005 to 2016. The daily global solar radiation estimates obtained by ERAD have root mean square error and R2 about 25 W·m−2 and 0.943, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
36. Analysis of a waterspout at Zhuhai, China, on June 12, 2019.
- Author
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Chan, Pak Wai, Tse, S.M., Lee, Jeffrey Chi Wai, and Li, Q.S.
- Abstract
This paper reports on a waterspout presiding over the Pearl River Estuary near Zhuhai, China. It is observed mainly using the terminal Doppler weather radar in Hong Kong. A slanting radar reflectivity core and airflow circulating around was seen in the vertical cross‐section across the mesoscale/microscale cyclone associated with the waterspout. The vertical wind profile associated with the cyclone was analysed and found to exhibit characteristics similar to those of a tornado reported in the region in a previous study. The primary characteristic of the waterspout was a circulating flow stronger at higher levels (approximately a few kilometres above ground) than at lower levels. In terms of nowcasting, the performance of a convection‐permitting numerical weather prediction model (2 km horizontal resolution) was analysed. It was found to demonstrate reasonable simulation skill for the mesoscale/microscale cyclone, although the slanting feature was not well predicted. The results of this study can serve as a useful reference for similar studies of waterspouts/tornadoes worldwide. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
37. Announcements and calls for papers.
- Published
- 1996
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38. Announcements and calls for papers.
- Published
- 1996
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39. Announcements and calls for papers.
- Published
- 1996
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40. Announcements and calls for papers.
- Published
- 1995
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41. Announcements and calls for papers.
- Published
- 1995
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42. Announcements and calls for papers.
- Published
- 1995
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43. An Analysis of Barriers to the Implementation of an ISO Certified Quality Management System for National Meteorological and Hydrological Services in the Anglophone Caribbean.
- Author
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Mitchell, Cécil and Fakhruddin, Bapon
- Subjects
TOTAL quality management ,SENIOR leadership teams ,OFFICES ,AERONAUTICAL navigation ,AERONAUTICAL safety measures - Abstract
Aeronautical Meteorological Offices under National Meteorological and Hydrological Service provide critical meteorological, hydrological, ocean and climatological information that sustain air navigation safety, efficiency, and regularity. Thus, to quality assure the information, the International Civil Aviation Organization recommended in 2002 that Aeronautical Meteorological Offices should implement ISO 9001 quality management system, which was subsequently standardized and became effective on 15 November 2012. There has been a slow movement towards adoption due to a number of barriers. In July 2019, 52% of Aeronautical Meteorological Offices commenced transition to the fifth iteration, ISO 9001:2015. A range of studies have investigated the barriers to successful quality management system implementation and certification within various organizations. However, only one study examined the Aeronautical Meteorological Offices and none of them covered the Anglophone Caribbean. Hence, the demography of the sample for this study is unique and this paper will contribute to filling the gaps in the literature. This exploratory study aims to identify the barriers, investigate their impacts, and propose recommendations to assist the Aeronautical Meteorological Offices to fully implement the ISO standard. Trinidad and Tobago Meteorological Service was selected as a case study due to its progress in the quality management system implementation and the scope of its operations. The study used and triangulated data collected from secondary sources (desktop research) and primary sources (survey and interviews). Seventeen barriers were identified and formed the new empirical framework for the Aeronautical Meteorological Offices in the Anglophone Caribbean. Most barriers were in the category of resources. The findings have significant implications for the policymakers, especially executive management, to address the barriers that are risks to sustainable quality management system. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
44. Modelling extreme rainfall events in Kigali city using generalized Pareto distribution.
- Author
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Singirankabo, Edouard and Iyamuremye, Emmanuel
- Subjects
PARETO distribution ,RAINFALL frequencies ,EXTREME value theory ,CLIMATE extremes - Abstract
Extreme rain events have caused numerous issues and have had a significant impact on agriculture, human activities, ecology, infrastructure, and casualties. The theory of extreme values has been widely applied in extreme precipitation modelling and a variety of other fields. This paper employs the generalized Pareto distribution, which has been widely used to analyse extreme climates, in conjunction with the peak over thresholds approach to investigate exceedances. The occurrence of intense rainfall events in Kigali city causes severe damage to human properties, infrastructure damage, people injuries, loss of life, and other various harmful consequences. Early detection of extreme rainfall in Kigali aids in the development and implementation of strategies and measures to mitigate the negative effects of extreme rainfall before it occurs. The aim of this research is to estimate the frequency and magnitude of intense rainfall events in Kigali. The daily rainfall data from Kigali Airport station collected by Rwanda Meteorological Agency from 1990 to 2019 were applied. The results showed that as the return periods increased, so did the return levels, implying that the intensity and frequency of rainfall in Kigali will increase in the future. The model's goodness was tested, and the study suggests a model that has a non‐negative shape parameter (ξ) to be good. The study's findings are extremely important for understanding the occurrence of these events and also serve as a tool for decision‐making and the development of policies aimed at mitigating the effects of such events. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
45. Exploring the characteristics of a vehicle-based temperature dataset for kilometre-scale data assimilation.
- Author
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Bell, Zackary, Dance, Sarah L., and Waller, Joanne A.
- Subjects
NUMERICAL weather forecasting ,DEBYE temperatures ,ATMOSPHERIC temperature ,METEOROLOGICAL stations ,KALMAN filtering ,DATA libraries ,QUALITY control - Abstract
Crowdsourced vehicle-based observations have the potential to improve forecast skill in convection-permitting numerical weather prediction (NWP). The aim of this paper is to explore the characteristics of vehicle-based observations of air temperature in the context of data assimilation. We describe a novel low-precision vehicle-based observation dataset obtained from a Met Office proof-of- concept trial. In this trial, observations of air temperature were obtained from built-in vehicle air-temperature sensors, broadcast to an application on the participant's smartphone, and uploaded, with relevant metadata, to the Met Office servers. We discuss the instrument and representation uncertainties associated with vehicle-based observations and present a new quality-control procedure. It is shown that, for some observations, location metadata may be inaccurate due to unsuitable smartphone application settings. The characteristics of the data that passed quality control are examined through comparison with United Kingdom variable-resolution model data, roadside weather information station observations, and Met Office integrated data archive system observations. Our results show that the uncertainty associated with vehicle-based observation-minus-model comparisons is likely to be weather-dependent and possibly vehicle-dependent. Despite the low precision of the data, vehicle-based observations of air temperature could be a useful source of spatially-dense and temporally-frequent observations for NWP. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
46. Global hydrological reanalyses: The value of river discharge information for world‐wide downstream applications – The example of the Global Flood Awareness System GloFAS
- Author
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Christel Prudhomme, Ervin Zsótér, Gwyneth Matthews, Angelique Melet, Stefania Grimaldi, Hao Zuo, Eleanor Hansford, Shaun Harrigan, Cinzia Mazzetti, Eric deBoisseson, Peter Salamon, and Gilles Garric
- Subjects
climate services ,Copernicus ,global hydrological reanalysis ,hydrological extremes ,large‐scale hydrological modelling ,observational gaps ,Meteorology. Climatology ,QC851-999 - Abstract
Abstract Global hydrological reanalyses are modelled datasets providing information on river discharge evolution everywhere in the world. With multi‐decadal daily timeseries, they provide long‐term context to identify extreme hydrological events such as floods and droughts. By covering the majority of the world's land masses, they can fill the many gaps in river discharge in‐situ observational data, especially in the global South. These gaps impede knowledge of both hydrological status and future evolution and hamper the development of reliable early warning systems for hydrological‐related disaster reduction. River discharge is a natural integrator of the water cycle over land. Global hydrological reanalysis datasets offer an understanding of its spatio‐temporal variability and are therefore critical for addressing the water–energy–food–environment nexus. This paper describes how global hydrological reanalyses can fill the lack of ground measurements by using earth system or hydrological models to provide river discharge time series. Following an inventory of alternative sources of river discharge datasets, reviewing their advantages and limitations, the paper introduces the Copernicus Emergency Management Service (CEMS) Global Flood Awareness System (GloFAS) modelling chain and its reanalysis dataset as an example of a global hydrological reanalysis dataset. It then reviews examples of downstream applications for global hydrological reanalyses, including monitoring of land water resources and ocean dynamics, understanding large‐scale hydrological extreme fluctuations, early warning systems, earth system model diagnostics and the calibration and training of models, with examples from three Copernicus Services (Emergency Management, Marine and Climate Change).
- Published
- 2024
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- View/download PDF
47. Objective verification of global in‐flight icing forecasts using satellite observations: Verification of WAFS icing forecasts using satellite observations.
- Author
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Bowyer, Rebecca L. and Gill, Philip G.
- Subjects
ARTIFICIAL satellite launching ,FORECASTING ,GEOSTATIONARY satellites ,ARTIFICIAL satellites ,ICE - Abstract
The two World Area Forecast Centres (WAFC) are responsible for issuing global gridded forecasts of in‐flight icing to the aviation community. These forecasts are vital for flight planning and safety; therefore, the performance of these forecasts needs to be assessed and improvements made where necessary. New satellite instruments can detect additional information about cloud properties to then identify areas conducive to icing. At the Met Office, data from multiple geostationary satellites are combined to produce a gridded satellite icing potential product with coverage over Europe, Asia and Australasia. Recent satellite launches will give near‐global coverage of these observations. The present paper details an objective verification framework to routinely verify icing potential forecasts using the satellite‐inferred icing product as a source of truth data. To allow a fair comparison, the best method to appropriately match the forecast and truth data is investigated. This methodology includes processing the multilevel forecasts into a single field to best replicate the satellite observations and producing a time window of maximum icing potential observations to allow temporal flexing in the verification. Verification results of the mean icing forecasts issued by WAFC London are presented for the 12‐month period March 2016–February 2017 in order to illustrate how this methodology has been used. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
48. Drought classification in Northern Serbia based on SPI and statistical pattern recognition.
- Author
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Stricevic, Ruzica, Djurovic, Nevenka, and Djurovic, Zeljko
- Subjects
DROUGHTS ,DECISION making ,METEOROLOGICAL precipitation measurement ,VEGETATION & climate ,METEOROLOGY - Abstract
This paper proposes a procedure for decision-making regarding the extent to which a certain geographical region is affected by drought. Professional circles generally recognize the Standardized Precipitation Index (SPI) as a good indicator of a drought event. However, as a result of varying precipitation levels due to various local geographical, climatic, vegetational and other factors, this indicator is determined based on precipitation measurements and different meteorological centres within the same administrative region often generate different SPI values, even when the geographical distance between them is small. During a dry period, various local authorities, ministries of agriculture or governments have to make important decisions about, for example, declaring disasters, subsidizing farmers for certain crops, or providing financial aid to agricultural producers, based on voluminous and diverse data about local precipitation, the yield of various crops, or the condition of the soil. This paper proposes an automated methodology for such decision-making, which can be used as a support tool by decision-makers. The methodology is based on the SPI and statistical pattern recognition methods (dimension reduction and classifier design based on the desired output). The entire procedure is illustrated using Vojvodina, a region in Serbia in the southern portion of the Pannonian Plain, as a case study. The proposed algorithm is not subject to any constraints with regard to geographical locations of regions, their surface areas, or inter-relationships. Copyright © 2010 Royal Meteorological Society [ABSTRACT FROM AUTHOR]
- Published
- 2011
- Full Text
- View/download PDF
49. Announcements and calls for papers.
- Published
- 1994
- Full Text
- View/download PDF
50. Announcements and calls for papers.
- Published
- 1994
- Full Text
- View/download PDF
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