Research on anti-error operation warning of power grid dispatching based on deep bidirectional gated recurrent neural network

To improve the security and overall efficiency of grid scheduling work and accurately optimize scheduling decisions, a grid scheduling error-proof operation warning method based on a deep bidirectional gated recurrent neural network is proposed. This paper combines the principle of hierarchical dat...

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Main Authors: Jinglong He, Dunlin Zhu, Sheng Yang, Jinming Liu, Tianyun Luo, Yuan Fu
Format: Article
Language:English
Published: European Alliance for Innovation (EAI) 2025-04-01
Series:EAI Endorsed Transactions on Energy Web
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Online Access:https://publications.eai.eu/index.php/ew/article/view/9071
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author Jinglong He
Dunlin Zhu
Sheng Yang
Jinming Liu
Tianyun Luo
Yuan Fu
author_facet Jinglong He
Dunlin Zhu
Sheng Yang
Jinming Liu
Tianyun Luo
Yuan Fu
author_sort Jinglong He
collection DOAJ
description To improve the security and overall efficiency of grid scheduling work and accurately optimize scheduling decisions, a grid scheduling error-proof operation warning method based on a deep bidirectional gated recurrent neural network is proposed. This paper combines the principle of hierarchical data construction, summarizes the structured data of metadata operation tickets and maintenance plans of CIM model and OMS network frame model, and constructs the data warehouse of grid dispatching error prevention; based on the natural language processing (NLP) technology, key information and knowledge entities related to grid dispatching error prevention are automatically identified and extracted from the data warehouse. Based on the deep bidirectional gated recurrent neural network, the extracted information sequence is used as input to construct the grid scheduling operation state reconstruction model, and the error prevention warning is carried out according to the output prediction results. The experimental results show that: the data docking speed in different scheduling phases is fast with the fastest speed of 71.254MB/s, and the convergence speed of the analysis and calculation is within 0.01MB/s, indicating that the overall analysis efficiency is high, the application performance is good, and it can determine whether there is any misoperation in the process of grid scheduling and carry out highly efficient, accurate, and fast early warning.
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spelling doaj-art-c536fd06067e4e04b3fa6b2daa2f91a02025-08-20T02:15:47ZengEuropean Alliance for Innovation (EAI)EAI Endorsed Transactions on Energy Web2032-944X2025-04-011210.4108/ew.9071Research on anti-error operation warning of power grid dispatching based on deep bidirectional gated recurrent neural networkJinglong He 0Dunlin Zhu1Sheng Yang2Jinming Liu3Tianyun Luo4Yuan Fu 5Power Dispatching Control Center, Guangxi Power Grid, Nanning, Guangxi, 530000, ChinaPower Dispatching Control Center, Guangxi Power Grid, Nanning, Guangxi, 530000, ChinaPower Dispatching Control Center, Guangxi Power Grid, Nanning, Guangxi, 530000, ChinaPower Dispatching Control Center, Guangxi Power Grid, Nanning, Guangxi, 530000, ChinaPower Dispatching Control Center, Guangxi Power Grid, Nanning, Guangxi, 530000, ChinaPower Dispatching Control Center, Guangxi Power Grid, Nanning, Guangxi, 530000, China To improve the security and overall efficiency of grid scheduling work and accurately optimize scheduling decisions, a grid scheduling error-proof operation warning method based on a deep bidirectional gated recurrent neural network is proposed. This paper combines the principle of hierarchical data construction, summarizes the structured data of metadata operation tickets and maintenance plans of CIM model and OMS network frame model, and constructs the data warehouse of grid dispatching error prevention; based on the natural language processing (NLP) technology, key information and knowledge entities related to grid dispatching error prevention are automatically identified and extracted from the data warehouse. Based on the deep bidirectional gated recurrent neural network, the extracted information sequence is used as input to construct the grid scheduling operation state reconstruction model, and the error prevention warning is carried out according to the output prediction results. The experimental results show that: the data docking speed in different scheduling phases is fast with the fastest speed of 71.254MB/s, and the convergence speed of the analysis and calculation is within 0.01MB/s, indicating that the overall analysis efficiency is high, the application performance is good, and it can determine whether there is any misoperation in the process of grid scheduling and carry out highly efficient, accurate, and fast early warning. https://publications.eai.eu/index.php/ew/article/view/9071Deep learningBidirectional gating unitRecurrent neural networkGrid dispatch error preventionEarly warning
spellingShingle Jinglong He
Dunlin Zhu
Sheng Yang
Jinming Liu
Tianyun Luo
Yuan Fu
Research on anti-error operation warning of power grid dispatching based on deep bidirectional gated recurrent neural network
EAI Endorsed Transactions on Energy Web
Deep learning
Bidirectional gating unit
Recurrent neural network
Grid dispatch error prevention
Early warning
title Research on anti-error operation warning of power grid dispatching based on deep bidirectional gated recurrent neural network
title_full Research on anti-error operation warning of power grid dispatching based on deep bidirectional gated recurrent neural network
title_fullStr Research on anti-error operation warning of power grid dispatching based on deep bidirectional gated recurrent neural network
title_full_unstemmed Research on anti-error operation warning of power grid dispatching based on deep bidirectional gated recurrent neural network
title_short Research on anti-error operation warning of power grid dispatching based on deep bidirectional gated recurrent neural network
title_sort research on anti error operation warning of power grid dispatching based on deep bidirectional gated recurrent neural network
topic Deep learning
Bidirectional gating unit
Recurrent neural network
Grid dispatch error prevention
Early warning
url https://publications.eai.eu/index.php/ew/article/view/9071
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