Application of a wavelet neural network approach to detect stator winding short circuits in asynchronous machines

©. S. Sakhara, M. Brahimi, L. Nacib, T. M. L. Udc, S. Sakhara, T. M. Layadi, Toufik Madani Layadi Associate Professor
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Abstract

Introduction. Nowadays, fault diagnosis of induction machines plays an important role in industrial fields. In this paper, Artificial Neural Network (ANN) model has been proposed for automatic fault diagnosis of an induction machine. The aim of this research study is to design a neural network model that allows generating a large database. This database can cover maximum possible of the stator faults. The fault considered in this study take into account a short circuit with large variations in the machine load. Moreover, the objective is to automate the diagnosis algorithm by using ANN classifier. Method. The database used for the ANN is based on indicators which are obtained from wavelet analysis of the machine stator current of one phase. The developed neural model allows to taking in consideration imbalances which are generated by short circuits in the machine stator. The implemented mathematical model in the expert system is based on a three-phase model. The mathematical parameters considered in this model are calculated online. The characteristic vector of the ANN model is formed by decomposition of stator current signal using wavelet discrete technique. Obtained results show that this technique allows to ensure more detection with clear evaluation of turn number in short circuit. Also, the developed expert system for the taken configurations is characterized by high precision.
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小波神经网络在异步电机定子绕组短路检测中的应用
介绍。目前,感应电机的故障诊断在工业领域中起着重要的作用。本文提出了一种用于感应电机故障自动诊断的人工神经网络模型。本研究的目的是设计一个能够生成大型数据库的神经网络模型。该数据库可以覆盖最大可能的定子故障。本研究中考虑的故障考虑了机器负载变化较大的短路。此外,目标是利用人工神经网络分类器实现诊断算法的自动化。方法。人工神经网络所使用的数据库是基于对某一相电机定子电流进行小波分析得到的指标。所开发的神经模型允许考虑由电机定子短路产生的不平衡。专家系统中所实现的数学模型是基于三相模型的。该模型所考虑的数学参数是在线计算的。利用小波离散技术对定子电流信号进行分解,形成神经网络模型的特征向量。实验结果表明,该方法可以保证在短路情况下的检测精度和匝数的清晰评估。所开发的专家系统具有精度高的特点。
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