Status evaluation method for arrays in large-scale photovoltaic power stations based on extreme learning machine and k-means
Large-scale photovoltaic (PV) power generation has developed rapidly, and its installed capacity has reached 512 GW worldwide by the end of 2019. The status evaluation for arrays is an important guarantee of safe running of large-scale PV power stations. However, there exist the following problems i...
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doaj-52bc00ae4bff4e9db244cdc0d410e7f02021-04-30T07:22:58ZengElsevierEnergy Reports2352-48472021-11-01724842492Status evaluation method for arrays in large-scale photovoltaic power stations based on extreme learning machine and k-meansLing Liang0Zhenqing Duan1Gengda Li2Honglu Zhu3Yucheng Shi4Qingru Cui5Baowei Chen6Wensen Hu7Guodian New Energy Technology Research Institute Co.,Ltd, Changping District, Beijing 102209, ChinaGuodian New Energy Technology Research Institute Co.,Ltd, Changping District, Beijing 102209, ChinaGuodian New Energy Technology Research Institute Co.,Ltd, Changping District, Beijing 102209, ChinaSchool of New Energy, North China Electric Power University, Beijing, ChinaSchool of New Energy, North China Electric Power University, Beijing, China; Corresponding author.Guodian New Energy Technology Research Institute Co.,Ltd, Changping District, Beijing 102209, ChinaGuodian New Energy Technology Research Institute Co.,Ltd, Changping District, Beijing 102209, ChinaGuodian New Energy Technology Research Institute Co.,Ltd, Changping District, Beijing 102209, ChinaLarge-scale photovoltaic (PV) power generation has developed rapidly, and its installed capacity has reached 512 GW worldwide by the end of 2019. The status evaluation for arrays is an important guarantee of safe running of large-scale PV power stations. However, there exist the following problems in status monitoring: first, the lack of weather information hinders theoretical power calculations; and second, traditional methods focus on whole power stations other than arrays. To solve such problems, a status evaluation method for arrays is proposed. First, an extreme-learning-machine algorithm is used to calculate the output reference value of the targeted array. Then, we found that different indicators can effectively reflect the status of PV arrays. The performance assessment method was designed in conjunction with the k-means clustering algorithm. Finally, a case study was employed to evaluate the performance of different arrays in a 40-MW PV power station. The status assessment accuracy reaches approximately 90%, which confirms the effectiveness of the proposed method.http://www.sciencedirect.com/science/article/pii/S2352484721002559Photovoltaic arrayExtreme learning machineK-meansStatus evaluation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ling Liang Zhenqing Duan Gengda Li Honglu Zhu Yucheng Shi Qingru Cui Baowei Chen Wensen Hu |
spellingShingle |
Ling Liang Zhenqing Duan Gengda Li Honglu Zhu Yucheng Shi Qingru Cui Baowei Chen Wensen Hu Status evaluation method for arrays in large-scale photovoltaic power stations based on extreme learning machine and k-means Energy Reports Photovoltaic array Extreme learning machine K-means Status evaluation |
author_facet |
Ling Liang Zhenqing Duan Gengda Li Honglu Zhu Yucheng Shi Qingru Cui Baowei Chen Wensen Hu |
author_sort |
Ling Liang |
title |
Status evaluation method for arrays in large-scale photovoltaic power stations based on extreme learning machine and k-means |
title_short |
Status evaluation method for arrays in large-scale photovoltaic power stations based on extreme learning machine and k-means |
title_full |
Status evaluation method for arrays in large-scale photovoltaic power stations based on extreme learning machine and k-means |
title_fullStr |
Status evaluation method for arrays in large-scale photovoltaic power stations based on extreme learning machine and k-means |
title_full_unstemmed |
Status evaluation method for arrays in large-scale photovoltaic power stations based on extreme learning machine and k-means |
title_sort |
status evaluation method for arrays in large-scale photovoltaic power stations based on extreme learning machine and k-means |
publisher |
Elsevier |
series |
Energy Reports |
issn |
2352-4847 |
publishDate |
2021-11-01 |
description |
Large-scale photovoltaic (PV) power generation has developed rapidly, and its installed capacity has reached 512 GW worldwide by the end of 2019. The status evaluation for arrays is an important guarantee of safe running of large-scale PV power stations. However, there exist the following problems in status monitoring: first, the lack of weather information hinders theoretical power calculations; and second, traditional methods focus on whole power stations other than arrays. To solve such problems, a status evaluation method for arrays is proposed. First, an extreme-learning-machine algorithm is used to calculate the output reference value of the targeted array. Then, we found that different indicators can effectively reflect the status of PV arrays. The performance assessment method was designed in conjunction with the k-means clustering algorithm. Finally, a case study was employed to evaluate the performance of different arrays in a 40-MW PV power station. The status assessment accuracy reaches approximately 90%, which confirms the effectiveness of the proposed method. |
topic |
Photovoltaic array Extreme learning machine K-means Status evaluation |
url |
http://www.sciencedirect.com/science/article/pii/S2352484721002559 |
work_keys_str_mv |
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1721498594419146752 |