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Incipient Inter-turn Fault Diagnosis in Induction motors using CNN and LSTM based Methods

机译:基于CNN和LSTM的方法的感应电动机早期匝间故障诊断

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摘要

Induction machines are an integral part of any major industry or production process. Incipient fault diagnosis is an important topic which aims at detecting the fault at an early stage and isolating them from other ambiguous conditions. In this work, an analytical model for inter-turn fault diagnosis in induction machines has been developed. A methodology for early diagnosis of fault has been envisaged, in presence of ambiguous conditions such as voltage imbalances and load variations. The novel method is based on motor current signature analysis (MCSA), using deep learning based one dimensional convolutional neural network(1D-CNN) model and long short term model(LSTM). The results using these two methods have been compared, and this initial investigation shows that CNN is found to be more suitable than LSTM, for incipient fault diagnosis.
机译:感应电机是任何主要行业或生产过程的组成部分。早期故障诊断是一个重要主题,旨在早期发现故障并将其与其他模糊条件隔离。在这项工作中,已经开发出用于感应电机匝间故障诊断的分析模型。已经设想了在模棱两可的情况下,例如电压不平衡和负载变化,对故障进行早期诊断的方法。该新方法基于电动机电流签名分析(MCSA),使用基于深度学习的一维卷积神经网络(1D-CNN)模型和长期短期模型(LSTM)。比较了使用这两种方法的结果,该初步研究表明,发现CNN比LSTM更适合于早期故障诊断。

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