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首页> 外文期刊>Electric Power Components and Systems >Identification and Classification of Stator Inter-Turn Faults in Induction Motor Using Wavelet Kernel Based Convolutional Neural Network
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Identification and Classification of Stator Inter-Turn Faults in Induction Motor Using Wavelet Kernel Based Convolutional Neural Network

机译:基于小波内核的卷积神经网络的感应电动机中定子匝间故障的识别与分类

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摘要

This paper presents an efficient technique for early diagnosis of simultaneous faults in different phases of stator winding of a three-phase induction motor due to turn-to-turn short circuit. A real-life motor has been designed and manufactured with fault emulation features in all the phases of stator winding. Phase currents are recorded by a data acquisition system for different fault conditions. Wavelet kernel-based convolutional neural network (WK-CNN) has been employed for identification and classification of the faults using the recorded current signatures. Various mother wavelets have been tested as convolution filters to extract salient features from the recorded current signatures followed by updating the weights of the filter at each epoch by a supervised learning algorithm. The reason to use a deep framework based on CNN is that it eliminates the requirement of feature extraction and classification algorithms separately. The proposed method also shows promising results when signals are contaminated by the noises, which is always a challenge in an industrial environment. Comparative results show the effectiveness of the proposed technique over the state-of-the-art methods.
机译:本文提出了一种有效的技术,用于早期诊断由转弯短路引起的三相感应电动机定子绕组的不同阶段的同步故障的早期诊断。真实寿命马达已经设计和制造,在定子绕组的所有阶段中具有故障仿真特征。相电流由数据采集系统记录,用于不同的故障条件。基于小波内核的卷积神经网络(WK-CNN)已采用使用记录的电流签名来识别和分类故障。已经测试了各种母小波作为卷积滤波器,以通过监督的学习算法更新来自记录的电流签名的突出特征,然后通过监督的学习算法更新每个时代的滤波器的权重。使用基于CNN的深框架的原因是它分别消除了特征提取和分类算法的要求。该方法还显示了当信号被噪声污染时的有希望的结果,这在工业环境中始终是一个挑战。比较结果表明,所提出的技术在最先进的方法中的有效性。

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