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Partial Discharge Pattern Recognition of High Voltage Cables Based on the Stacked Denoising Autoencoder Method

机译:基于堆叠降噪自动编码器方法的高压电缆局部放电模式识别

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Partial Discharge (PD) pattern recognition is one of the most important steps of PD based condition monitoring of high voltage cables, which is challenging as some types of the PD induced by cable defects are with high similarity. In recently years, deep learning based pattern recognition methods have achieved impressive pattern recognition accuracy on speech recognition and image recognition, which is one of the most potential techniques applicable for PD pattern recognition. The Stacked Denoising Autoencoder (SDAE) based deep learning method for PD pattern recognition of different insulation defects of high voltage cables is presented in the paper. Firstly, five types of artificial insulation defects of ethylene-propylene-rubber cables are manufactured in the laboratory, based on which PD testing in the high voltage lab is carried out to produce 5 types of PD signals, 500 samples for each defect types. PD feature extraction is carried out to generate 34 kinds of PD features, which are the input parameters of the PD pattern recognition methods. Secondly, the principle and network architecture of SDAE method and the flowchart of SDAE based PD pattern recognition are presented in details. Thirdly, the SDAE method is evaluated with the experimental data, 5 different types of PD signals, which achieves a recognition accuracy of 92.19%. Finally, the proposed method is compared with the traditional pattern recognition methods, Support Vector Machine (SVM) and Back Propagation Neural Network (BPNN). The results show that the pattern recognition accuracy of the proposed method is improved by 5.33% and 6.09% compared with the SVM method and the BPNN method respectively, which is applicable for pattern recognition of PD signals with high similarity.
机译:局部放电(PD)模式识别是基于PD的高压电缆状态监测的最重要步骤之一,这具有挑战性,因为由电缆缺陷引起的某些类型的PD具有高度相似性。近年来,基于深度学习的模式识别方法在语音识别和图像识别方面已经实现了令人印象深刻的模式识别精度,这是适用于PD模式识别的最有潜力的技术之一。提出了一种基于堆叠降噪自动编码器(SDAE)的深度学习方法,用于高压电缆不同绝缘缺陷的局部放电模式识别。首先,在实验室中制造了五种乙丙橡胶电缆的人工绝缘缺陷,然后在高压实验室中进行局部放电测试,以产生5种局部放电信号,每种缺陷类型有500个样本。进行PD特征提取以生成34种PD特征,这些PD特征是PD模式识别方法的输入参数。其次,详细介绍了SDAE方法的原理和网络架构,以及基于SDAE的PD模式识别流程图。第三,用实验数据,5种不同类型的PD信号对SDAE方法进行了评估,识别精度达到92.19%。最后,将该方法与传统的模式识别方法,支持向量机(SVM)和反向传播神经网络(BPNN)进行了比较。结果表明,与SVM和BPNN方法相比,该方法的模式识别精度分别提高了5.33%和6.09%,适用于高相似度PD信号的模式识别。

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