Transient State Estimation for Power System Based on Deep Transfer Learning
A method for transient state estimation in power systems based on deep transfer learning is proposed to accurately track transient state in real-time,which is typically challenging owing to the limited availability of fault sample data. Initially,the twin data representing the actual power system op...
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Editorial Department of Electric Power Construction
2025-01-01
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Series: | Dianli jianshe |
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Online Access: | https://www.cepc.com.cn/fileup/1000-7229/PDF/1735120478564-1035047015.pdf |
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author | JIAO Hao, ZHAO Jiawei, WEI Lei, ZHU Weiping, MA Zhoujun, ZANG Haixiang |
author_facet | JIAO Hao, ZHAO Jiawei, WEI Lei, ZHU Weiping, MA Zhoujun, ZANG Haixiang |
author_sort | JIAO Hao, ZHAO Jiawei, WEI Lei, ZHU Weiping, MA Zhoujun, ZANG Haixiang |
collection | DOAJ |
description | A method for transient state estimation in power systems based on deep transfer learning is proposed to accurately track transient state in real-time,which is typically challenging owing to the limited availability of fault sample data. Initially,the twin data representing the actual power system operation are generated by utilizing digital twin technology,thereby providing substantial sample data sources for transient state estimation. Subsequently,the twin datasets are partitioned into source domain and target domain datasets,and a base model is developed for state estimation in the source domain based on steady-state power system data. Finally,by applying deep transfer learning,the base model is fine-tuned using small-sample transient data in the target domain,resulting in a state-estimation model specifically adapted for transient conditions and enhancing the universality of the estimator. Simulations demonstrate that the proposed method exhibits a higher estimation accuracy and computational efficiency than that of deep neural networks without transfer learning,particularly during power system failures. |
format | Article |
id | doaj-art-5ec1c6f201f346edb6eda7c0ec9610f0 |
institution | Kabale University |
issn | 1000-7229 |
language | zho |
publishDate | 2025-01-01 |
publisher | Editorial Department of Electric Power Construction |
record_format | Article |
series | Dianli jianshe |
spelling | doaj-art-5ec1c6f201f346edb6eda7c0ec9610f02025-02-10T02:35:53ZzhoEditorial Department of Electric Power ConstructionDianli jianshe1000-72292025-01-014619710610.12204/j.issn.1000-7229.2025.01.009Transient State Estimation for Power System Based on Deep Transfer LearningJIAO Hao, ZHAO Jiawei, WEI Lei, ZHU Weiping, MA Zhoujun, ZANG Haixiang01. Electric Power Research Institute,State Grid Jiangsu Electric Power Co.,Ltd.,Nanjing 211103,China;2. School of Electrical and Power Engineering,Hohai University,Nanjing 211100,China;3. State Grid Jiangsu Electric Power Co.,Ltd.,Nanjing 210024,ChinaA method for transient state estimation in power systems based on deep transfer learning is proposed to accurately track transient state in real-time,which is typically challenging owing to the limited availability of fault sample data. Initially,the twin data representing the actual power system operation are generated by utilizing digital twin technology,thereby providing substantial sample data sources for transient state estimation. Subsequently,the twin datasets are partitioned into source domain and target domain datasets,and a base model is developed for state estimation in the source domain based on steady-state power system data. Finally,by applying deep transfer learning,the base model is fine-tuned using small-sample transient data in the target domain,resulting in a state-estimation model specifically adapted for transient conditions and enhancing the universality of the estimator. Simulations demonstrate that the proposed method exhibits a higher estimation accuracy and computational efficiency than that of deep neural networks without transfer learning,particularly during power system failures.https://www.cepc.com.cn/fileup/1000-7229/PDF/1735120478564-1035047015.pdfpower system fault|digital twin|transient state estimation|deep transfer learning|small sample |
spellingShingle | JIAO Hao, ZHAO Jiawei, WEI Lei, ZHU Weiping, MA Zhoujun, ZANG Haixiang Transient State Estimation for Power System Based on Deep Transfer Learning Dianli jianshe power system fault|digital twin|transient state estimation|deep transfer learning|small sample |
title | Transient State Estimation for Power System Based on Deep Transfer Learning |
title_full | Transient State Estimation for Power System Based on Deep Transfer Learning |
title_fullStr | Transient State Estimation for Power System Based on Deep Transfer Learning |
title_full_unstemmed | Transient State Estimation for Power System Based on Deep Transfer Learning |
title_short | Transient State Estimation for Power System Based on Deep Transfer Learning |
title_sort | transient state estimation for power system based on deep transfer learning |
topic | power system fault|digital twin|transient state estimation|deep transfer learning|small sample |
url | https://www.cepc.com.cn/fileup/1000-7229/PDF/1735120478564-1035047015.pdf |
work_keys_str_mv | AT jiaohaozhaojiaweiweileizhuweipingmazhoujunzanghaixiang transientstateestimationforpowersystembasedondeeptransferlearning |