Deep learning‐based SCUC decision‐making: An intelligent data‐driven approach with self‐learning capabilities

This paper proposes an intelligent Deep Learning (DL) based approach for Data‐Driven Security‐Constrained Unit Commitment (DD‐SCUC) decision‐making. The proposed approach includes data pre‐processing and a two‐stage decision‐making process. Firstly, historical data is accumulated and pre‐processed....

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Veröffentlicht in:IET Generation, Transmission & Distribution Transmission & Distribution, 2022-02, Vol.16 (4), p.629-640
Hauptverfasser: Yang, Nan, Yang, Cong, Xing, Chao, Ye, Di, Jia, Junjie, Chen, Daojun, Shen, Xun, Huang, Yuehua, Zhang, Lei, Zhu, Binxin
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Sprache:eng
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Zusammenfassung:This paper proposes an intelligent Deep Learning (DL) based approach for Data‐Driven Security‐Constrained Unit Commitment (DD‐SCUC) decision‐making. The proposed approach includes data pre‐processing and a two‐stage decision‐making process. Firstly, historical data is accumulated and pre‐processed. Then, the DD‐SCUC model is created based on the Gated Recurrent Unit‐Neural Network (GRU‐NN). The mapping model between system daily load and decision results is created by training the DL model with historical data and then is utilized to make SCUC decisions. The two‐stage decision‐making process outputs the decision results based on various applications and scenarios. This approach has self‐learning capabilities because the accumulation of historical data sets can revise the mapping model and therefore improve its accuracy. Simulation results from the IEEE 118‐bus test system and a real power system from China showed that compared with deterministic Physical‐Model‐Driven (PMD)‐SCUC methods, the approach has higher accuracy, better efficiency in the practical use case, and better adaptability to different types of SCUC problems.
ISSN:1751-8687
1751-8695
DOI:10.1049/gtd2.12315