Power Generation Technology ›› 2024, Vol. 45 ›› Issue (4): 744-752.DOI: 10.12096/j.2096-4528.pgt.23118

• Smart Grid • Previous Articles     Next Articles

Research on Temperature Situation Awareness and Auxiliary Decision-Making System Scheme of Substation Equipment

Yu CHEN1, Hong DING1, Yong CUI2,3, Li ZHU1, Shijun CHEN4, Qiuyang LING1, Yongsheng XU4, Jian ZHENG3   

  1. 1.Huzhou Power Supply Company, State Grid Zhejiang Electric Power Co. , Ltd. , Huzhou 313000, Zhejiang Province, China
    2.College of Management, Anhui Science and Technology University, Bengbu 233030, Anhui Province, China
    3.College of Electrical Engineering & New Energy, China Three Gorges University, Yichang 443002, Hubei Province, China
    4.Zhejiang Talent Electric Group Co. , Ltd. , Huzhou 313000, Zhejiang Province, China
  • Received:2023-11-20 Revised:2024-02-25 Published:2024-08-31 Online:2024-08-27
  • Contact: Yong CUI
  • Supported by:
    the University Synergy Innovation Progarm of Anhui Province(GXXT-2023-065);Technology Project of Zhejiang Tailun Electric Group Co., Ltd(TLGZ2212001-012);Talent Introduction Project of Anhui Science and Technology University(GLYJ202202)

Abstract:

Objectives To enhance the intelligent management of substation equipment maintenance, timely identify and mitigate the risks of failures caused by device overheating, and ensure the safe and stable operation of the power grid, the temperature situation awareness and auxiliary decision-making scheme of substation equipment were proposed. Methods The research was carried out from four aspects: the perception layer, the understanding layer, the prediction layer, and the auxiliary decision-making layer. In the perception layer, the K-nearest neighbor (KNN) classification algorithm was used to analyze the correlation of multi-class temperature data. In the understanding layer, a BP neural network was employed to construct a historical data transmission model to address missing historical data issues. In the prediction layer, a temperature prediction model combining autoregressive integrated moving average (ARIMA) and support vector machine (SVM) was designed to handle nonlinear data and noise. In the auxiliary decision-making layer, the grey relational analysis was applied to analyze the relationship between equipment temperature changes and fault risks. Results The verification results of numerical examples based on the proposed scheme show that the scheme realizes the effective perception of the future temperature variation trends of the equipment and provides a basis for the identification of equipment defects. Conclusions Through multi-dimensional and deep-level temperature data analysis, the proposed scheme reveals the potential correlation between equipment temperature and fault risk, realizes the prediction of the operational trend of substation equipment, and provides a reference for the optimization of operational mode and the formulation of equipment maintenance plan.

Key words: power system, substation, temperature state awareness, auxiliary decision-making, autoregressive integrated moving average (ARIMA) model, BP neural network, support vector machine (SVM)

CLC Number: