2022
DOI: 10.5194/egusphere-egu22-4853
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Can cloud properties provide information on surface wind variations using deep learning?

Abstract: <p>Recent studies have shown that the increasing sizes of offshore wind farms can cause a reduced energy production through mesoscale interactions with the atmosphere. Therefore, accurate nowcasting of the energy yields of large offshore wind farms depend on accurate predictions of the large synoptic weather systems as well as accurate predictions of the smaller mesoscale weather systems. In general, global or regional forecasting models are very well suited to predict synoptic-scale weather syst… Show more

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“…This paper proposes a novel methodology, leveraging CNN-LSTM and satellite images for wind speed and direction nowcasting in complex terrains, using LPMA as a case study. The primary objective is to demonstrate that, using computer vision and ML-DL techniques, wind speed and direction can be accurately forecasted solely through satellite imagery, particularly in complex terrains, using real world data, building on Jamaer et al [20] work that proposed the use of cloud information to extract weather data. The global coverage of satellites, along with the wide availability of satellite images, enhances the scalability of the presented solution and its applicability in regions where wind monitoring or forecasting systems may be unavailable deprecated, or inaccurate.…”
Section: Introductionmentioning
confidence: 99%
“…This paper proposes a novel methodology, leveraging CNN-LSTM and satellite images for wind speed and direction nowcasting in complex terrains, using LPMA as a case study. The primary objective is to demonstrate that, using computer vision and ML-DL techniques, wind speed and direction can be accurately forecasted solely through satellite imagery, particularly in complex terrains, using real world data, building on Jamaer et al [20] work that proposed the use of cloud information to extract weather data. The global coverage of satellites, along with the wide availability of satellite images, enhances the scalability of the presented solution and its applicability in regions where wind monitoring or forecasting systems may be unavailable deprecated, or inaccurate.…”
Section: Introductionmentioning
confidence: 99%