An Intelligent Risk Forewarning Method for Operation of Power System Considering Multi-Region Extreme Weather Correlation
Degui Yao, Ji Han, Qionglin Li, Qihang Wang, Chenghao Li, Di Zhang, Muyuan Li, Chunsun Tian- Electrical and Electronic Engineering
- Computer Networks and Communications
- Hardware and Architecture
- Signal Processing
- Control and Systems Engineering
Extreme weather events pose significant risks to power systems, necessitating effective risk forewarning and management strategies. A few existing researches have concerned the correlation of the extreme weather in different regions of power system, and traditional operation risk assessment methods gradually cannot satisfy real-time requirements. This motivates us to present an intelligent risk forewarning method for the operation of power systems considering multi-region extreme weather correlation. Firstly, a novel multi-region extreme weather correlation model based on vine copula is developed. Then, a risk level classification method for power system operations is introduced. Further, an intelligent risk forewarning model for power system operations is proposed. This model effectively integrates the multi-region extreme weather correlation and the risk level classification of the system. By employing the summation wavelet extreme learning machine, real-time monitoring and risk forewarning of the system’s operational status are achieved. Simulation results show that the proposed method can rapidly identify potential risks and provides timely risk forewarning information, helping enhance the resilience of power system operations.