Spatiotemporal Optimization for Short-Term Solar Forecasting Based on Satellite Imagery
Solar forecasting is essential for optimizing the integration of solar photovoltaic energy into a power grid. This study presents solar forecasting models based on satellite imagery. The cloud motion vector (CMV) model is the most popular satellite-image-based solar forecasting model. However, it as...
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doaj-c03f9fd8c06f449fb694b5eddf085dae2021-04-15T23:06:59ZengMDPI AGEnergies1996-10732021-04-01142216221610.3390/en14082216Spatiotemporal Optimization for Short-Term Solar Forecasting Based on Satellite ImageryMyeongchan Oh0Chang Ki Kim1Boyoung Kim2Changyeol Yun3Yong-Heack Kang4Hyun-Goo Kim5New & Renewable Energy Resource Map Laboratory, Korea Institute of Energy Research, Daejeon 34129, KoreaNew & Renewable Energy Resource Map Laboratory, Korea Institute of Energy Research, Daejeon 34129, KoreaNew & Renewable Energy Resource Map Laboratory, Korea Institute of Energy Research, Daejeon 34129, KoreaNew & Renewable Energy Resource Map Laboratory, Korea Institute of Energy Research, Daejeon 34129, KoreaNew & Renewable Energy Resource Map Laboratory, Korea Institute of Energy Research, Daejeon 34129, KoreaNew & Renewable Energy Resource Map Laboratory, Korea Institute of Energy Research, Daejeon 34129, KoreaSolar forecasting is essential for optimizing the integration of solar photovoltaic energy into a power grid. This study presents solar forecasting models based on satellite imagery. The cloud motion vector (CMV) model is the most popular satellite-image-based solar forecasting model. However, it assumes constant cloud states, and its accuracy is, thus, influenced by changes in local weather characteristics. To overcome this limitation, satellite images are used to provide spatial data for a new spatiotemporal optimized model for solar forecasting. Four satellite-image-based solar forecasting models (a persistence model, CMV, and two proposed models that use clear-sky index change) are evaluated. The error distributions of the models and their spatial characteristics over the test area are analyzed. All models exhibited different performances according to the forecast horizon and location. Spatiotemporal optimization of the best model is then conducted using best-model maps, and our results show that the skill score of the optimized model is 21% better than the previous CMV model. It is, thus, considered to be appropriate for use in short-term forecasting over large areas. The results of this study are expected to promote the use of spatial data in solar forecasting models, which could improve their accuracy and provide various insights for the planning and operation of photovoltaic plants.https://www.mdpi.com/1996-1073/14/8/2216solar forecastingspatial analysissatellite imagescloud motion vector (CMV)spatiotemporaloptimization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Myeongchan Oh Chang Ki Kim Boyoung Kim Changyeol Yun Yong-Heack Kang Hyun-Goo Kim |
spellingShingle |
Myeongchan Oh Chang Ki Kim Boyoung Kim Changyeol Yun Yong-Heack Kang Hyun-Goo Kim Spatiotemporal Optimization for Short-Term Solar Forecasting Based on Satellite Imagery Energies solar forecasting spatial analysis satellite images cloud motion vector (CMV) spatiotemporal optimization |
author_facet |
Myeongchan Oh Chang Ki Kim Boyoung Kim Changyeol Yun Yong-Heack Kang Hyun-Goo Kim |
author_sort |
Myeongchan Oh |
title |
Spatiotemporal Optimization for Short-Term Solar Forecasting Based on Satellite Imagery |
title_short |
Spatiotemporal Optimization for Short-Term Solar Forecasting Based on Satellite Imagery |
title_full |
Spatiotemporal Optimization for Short-Term Solar Forecasting Based on Satellite Imagery |
title_fullStr |
Spatiotemporal Optimization for Short-Term Solar Forecasting Based on Satellite Imagery |
title_full_unstemmed |
Spatiotemporal Optimization for Short-Term Solar Forecasting Based on Satellite Imagery |
title_sort |
spatiotemporal optimization for short-term solar forecasting based on satellite imagery |
publisher |
MDPI AG |
series |
Energies |
issn |
1996-1073 |
publishDate |
2021-04-01 |
description |
Solar forecasting is essential for optimizing the integration of solar photovoltaic energy into a power grid. This study presents solar forecasting models based on satellite imagery. The cloud motion vector (CMV) model is the most popular satellite-image-based solar forecasting model. However, it assumes constant cloud states, and its accuracy is, thus, influenced by changes in local weather characteristics. To overcome this limitation, satellite images are used to provide spatial data for a new spatiotemporal optimized model for solar forecasting. Four satellite-image-based solar forecasting models (a persistence model, CMV, and two proposed models that use clear-sky index change) are evaluated. The error distributions of the models and their spatial characteristics over the test area are analyzed. All models exhibited different performances according to the forecast horizon and location. Spatiotemporal optimization of the best model is then conducted using best-model maps, and our results show that the skill score of the optimized model is 21% better than the previous CMV model. It is, thus, considered to be appropriate for use in short-term forecasting over large areas. The results of this study are expected to promote the use of spatial data in solar forecasting models, which could improve their accuracy and provide various insights for the planning and operation of photovoltaic plants. |
topic |
solar forecasting spatial analysis satellite images cloud motion vector (CMV) spatiotemporal optimization |
url |
https://www.mdpi.com/1996-1073/14/8/2216 |
work_keys_str_mv |
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