Fault diagnosis method of automation equipment in independent and controllable substation based on deep reinforcement learning

Haoliang Du, Zhenhua Li, Dong Liu, Yinqiang Huang
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引用次数: 1

Abstract

Fast and accurate fault diagnosis is the key to ensure the safe and stable operation of the substation after the fault occurs to the automation equipment in the independent and controllable intelligent substation. Firstly, different types of faults that may occur in intelligent substation automation equipment are analyzed, and the electrical characteristic information of corresponding fault types is characterized respectively. Then, the basic structure of enhanced deep convolutional neural network (EDCNN) and the applicability and superiority of EDCNN in automatic equipment fault diagnosis are analyzed, and the model and algorithm of automatic equipment fault diagnosis based on EDCNN are built on the basis of data preprocessing. Finally, the proposed algorithm and other three algorithms are compared and analyzed under the same conditions based on actual cases. The results show that for different types of faults, the proposed algorithm has higher fault diagnosis accuracy and faster convergence speed.
基于深度强化学习的独立可控变电站自动化设备故障诊断方法
独立可控智能变电站中自动化设备发生故障后,快速准确的故障诊断是保证变电站安全稳定运行的关键。首先,分析了智能变电站自动化设备可能出现的不同类型的故障,并分别对相应故障类型的电气特征信息进行了表征。然后,分析了增强型深度卷积神经网络(EDCNN)的基本结构及其在设备自动故障诊断中的适用性和优越性,并在数据预处理的基础上建立了基于EDCNN的设备自动故障诊断模型和算法。最后,结合实际案例,在相同条件下,对所提算法与其他三种算法进行了对比分析。结果表明,对于不同类型的故障,该算法具有更高的故障诊断精度和更快的收敛速度。
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