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A Convolutional Neural Network-Based Deep Learning Methodology for Recognition of Partial Discharge Patterns from High-Voltage Cables

机译:基于卷积神经网络的深度学习方法,用于识别高压电缆的局部放电模式

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摘要

It is a great challenge to differentiate partial discharge (PD) induced by different types of insulation defects in high-voltage cables. Some types of PD signals have very similar characteristics and are specifically difficult to differentiate, even for the most experienced specialists. To overcome the challenge, a convolutional neural network (CNN)-based deep learning methodology for PD pattern recognition is presented in this paper. First, PD testing for five types of artificial defects in ethylene-propylene-rubber cables is carried out in high voltage laboratory to generate signals containing PD data. Second, 3500 sets of PD transient pulses are extracted, and then 33 kinds of PD features are established. The third stage applies a CNN to the data; typical CNN architecture and the key factors which affect the CNN-based pattern recognition accuracy are described. Factors discussed include the number of the network layers, convolutional kernel size, activation function, and poolingmethod. This paper presents a flowchart of the CNN-based PD pattern recognition method and an evaluation with 3500 sets of PD samples. Finally, the CNN-based pattern recognition results are shown and the proposed method is compared with two more traditional analysis methods, i.e., support vector machine (SVM) and back propagation neural network (BPNN). The results show that the proposed CNN method has higher pattern recognition accuracy than SVM and BPNN, and that the novel method is especially effective for PD type recognition in cases of signals of high similarity, which is applicable for industrial applications.
机译:区分由高压电缆中不同类型的绝缘缺陷引起的局部放电(PD)是一项巨大的挑战。某些类型的PD信号具有非常相似的特性,即使对于最有经验的专家,也很难区分。为了克服这一挑战,本文提出了一种基于卷积神经网络(CNN)的PD学习模式的深度学习方法。首先,在高压实验室中对乙烯-丙烯-橡胶电缆中的五种人造缺陷进行PD测试,以生成包含PD数据的信号。其次,提取3500组PD瞬态脉冲,然后建立33种PD特征。第三阶段将CNN应用于数据;描述了典型的CNN架构以及影响基于CNN的模式识别准确性的关键因素。讨论的因素包括网络层数,卷积内核大小,激活函数和合并方法。本文提出了基于CNN的PD模式识别方法的流程图,并评估了3500组PD样本。最后,显示了基于CNN的模式识别结果,并将该方法与两种其他传统分析方法进行了比较,即支持向量机(SVM)和反向传播神经网络(BPNN)。结果表明,所提出的CNN方法比SVM和BPNN具有更高的模式识别精度,并且该方法对于高相似度信号的PD类型识别特别有效,适用于工业应用。

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