Data sharing and GRA weight optimization for power prediction of distributed photovoltaic power plant considering missing NWP information

Since the output of photovoltaic power generation has a strong intermittency and volatility, the access of large-scale photovoltaic power plants will impact the stability of the power grid, so it is crucial to accurately predict the output of photovoltaics. In addition, because some photovoltaic pow...

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Main Authors: YANG Xiyun, YANG Yan, MENG Lingzhuochao, PENG Yan, WANG Chenxu
Format: Article
Language:zho
Published: Harbin Jinhe Electrical Measurement & Instrumentation Magazine Publishing Co., Ltd. 2025-04-01
Series:Diance yu yibiao
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Online Access:http://www.emijournal.net/dcyyben/ch/reader/create_pdf.aspx?file_no=20220524014&flag=1&journal_id=dcyyben&year_id=2025
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author YANG Xiyun
YANG Yan
MENG Lingzhuochao
PENG Yan
WANG Chenxu
author_facet YANG Xiyun
YANG Yan
MENG Lingzhuochao
PENG Yan
WANG Chenxu
author_sort YANG Xiyun
collection DOAJ
description Since the output of photovoltaic power generation has a strong intermittency and volatility, the access of large-scale photovoltaic power plants will impact the stability of the power grid, so it is crucial to accurately predict the output of photovoltaics. In addition, because some photovoltaic power plants cannot obtain the relevant numerical weather prediction (NWP) information for power prediction, this poses new challenges to the safe and stable operation of the power grid. On this basis, this paper proposes a power prediction model for distributed photovoltaic power plant based on data sharing and grey relation analysis (GRA) weight optimization. Firstly, the K-means algorithm is used to cluster the output spatial correlation of photovoltaic power plants, and GRA is used to optimize the weight of the reference power station, and the output of the target power station with missing NWP data is predicted by one-dimensional convolutional neural network (1DCNN). According to the example analysis of ten distributed photovoltaic power plants in some cities in Hebei Province, the results show that the RMSE of sunny day prediction is 3.34%, and the RMSE of non-sunny day prediction is 9.15%, which has high accuracy and feasibility, and lays a foundation for the stable operation of the power grid.
format Article
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issn 1001-1390
language zho
publishDate 2025-04-01
publisher Harbin Jinhe Electrical Measurement & Instrumentation Magazine Publishing Co., Ltd.
record_format Article
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spelling doaj-art-4b0cc96c13f74fcb97e255ee247cb8d22025-08-20T02:27:35ZzhoHarbin Jinhe Electrical Measurement & Instrumentation Magazine Publishing Co., Ltd.Diance yu yibiao1001-13902025-04-0162417217910.19753/j.issn1001-1390.2025.04.0211001-1390(2025)04-0172-08Data sharing and GRA weight optimization for power prediction of distributed photovoltaic power plant considering missing NWP informationYANG Xiyun0YANG Yan1MENG Lingzhuochao2PENG Yan3WANG Chenxu4College of Energy and Power Machinery Engineering, North China Electric Power University, Beijing 102206, ChinaCollege of Energy and Power Machinery Engineering, North China Electric Power University, Beijing 102206, ChinaCollege of Energy and Power Machinery Engineering, North China Electric Power University, Beijing 102206, ChinaElectric Power Research Institute of State Grid Zhejiang Electric Power Limited Company, Hangzhou 310014, ChinaElectric Power Research Institute of State Grid Zhejiang Electric Power Limited Company, Hangzhou 310014, ChinaSince the output of photovoltaic power generation has a strong intermittency and volatility, the access of large-scale photovoltaic power plants will impact the stability of the power grid, so it is crucial to accurately predict the output of photovoltaics. In addition, because some photovoltaic power plants cannot obtain the relevant numerical weather prediction (NWP) information for power prediction, this poses new challenges to the safe and stable operation of the power grid. On this basis, this paper proposes a power prediction model for distributed photovoltaic power plant based on data sharing and grey relation analysis (GRA) weight optimization. Firstly, the K-means algorithm is used to cluster the output spatial correlation of photovoltaic power plants, and GRA is used to optimize the weight of the reference power station, and the output of the target power station with missing NWP data is predicted by one-dimensional convolutional neural network (1DCNN). According to the example analysis of ten distributed photovoltaic power plants in some cities in Hebei Province, the results show that the RMSE of sunny day prediction is 3.34%, and the RMSE of non-sunny day prediction is 9.15%, which has high accuracy and feasibility, and lays a foundation for the stable operation of the power grid.http://www.emijournal.net/dcyyben/ch/reader/create_pdf.aspx?file_no=20220524014&flag=1&journal_id=dcyyben&year_id=2025distributed photovoltaicsspatial correlationdata sharingweight optimizationone-dimensional convolutional neural network
spellingShingle YANG Xiyun
YANG Yan
MENG Lingzhuochao
PENG Yan
WANG Chenxu
Data sharing and GRA weight optimization for power prediction of distributed photovoltaic power plant considering missing NWP information
Diance yu yibiao
distributed photovoltaics
spatial correlation
data sharing
weight optimization
one-dimensional convolutional neural network
title Data sharing and GRA weight optimization for power prediction of distributed photovoltaic power plant considering missing NWP information
title_full Data sharing and GRA weight optimization for power prediction of distributed photovoltaic power plant considering missing NWP information
title_fullStr Data sharing and GRA weight optimization for power prediction of distributed photovoltaic power plant considering missing NWP information
title_full_unstemmed Data sharing and GRA weight optimization for power prediction of distributed photovoltaic power plant considering missing NWP information
title_short Data sharing and GRA weight optimization for power prediction of distributed photovoltaic power plant considering missing NWP information
title_sort data sharing and gra weight optimization for power prediction of distributed photovoltaic power plant considering missing nwp information
topic distributed photovoltaics
spatial correlation
data sharing
weight optimization
one-dimensional convolutional neural network
url http://www.emijournal.net/dcyyben/ch/reader/create_pdf.aspx?file_no=20220524014&flag=1&journal_id=dcyyben&year_id=2025
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AT pengyan datasharingandgraweightoptimizationforpowerpredictionofdistributedphotovoltaicpowerplantconsideringmissingnwpinformation
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