基于强化学习技术的配电网智能故障检测

Pub Date : 2023-01-01 DOI:10.12720/jait.14.3.463-471
T. S. Hlalele, Yanxia Sun, Zenghui Wang
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引用次数: 0

摘要

—配电网中分布式能源的加入改变了故障电流水平,使故障检测更加复杂。这些异构能源系统带来了一些挑战,包括电能质量、电压稳定性、可靠性和保护。本文提出了一种基于强化学习的故障检测方法。该方法的核心是Q学习方法,该方法使用非自适应多智能体强化学习算法来检测和识别非线性系统故障,该算法通过告诉智能体在什么情况下采取什么行动来学习策略。此外,利用离散小波变换(DWT)从暂态故障发生时捕获的四分之一周期三相电流信号中提取系数值。通过对不同故障的仿真和信号分析,在MATLAB环境下验证了所提出的故障检测方法。仿真结果表明,该方法能够检测出CA、AB、ABC、ABCG等不同类型的故障,相关系数为0.87851。
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Intelligent Fault Detection Based on Reinforcement Learning Technique on Distribution Networks
— The incorporation of distributed energy resources in the distribution networks changes the fault current level and makes the fault detection be more complex. There are several challenges brought by these heterogenous energy systems including power quality, voltage stability, reliability and protection. In this paper, a fault detection based on reinforcement learning approach is proposed. The heart of this approach is a Q learning approach which uses a non-adaptive multi-agent reinforcement learning algorithm to detect and identify nonlinear system faults, and the algorithm learns the policy by telling an agent what actions to take under what circumstances. Moreover, the Discrete Wavelet Transform (DWT) is utilized to extract coefficient values from the captured one-fourth cycle of the three-phase current signal during fault which occurs during the transient stage. The simulations and signal analysis for different faults are used to validate the proposed fault detection method in MATLAB environment. The simulation results show that different types of faults such as CA, AB, ABC and ABCG can be detected and the best correlation coefficient achieved is 0.87851.
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