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Comparative investigation of vibration and current monitoring for prediction of mechanical and electrical faults in induction motor based on multiclass-support vector machine algorithms

机译:基于多类支持向量机算法的异步电动机振动和电流监测预测机电故障的比较研究

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This paper presents an investigation of vibration and current monitoring for effective fault prediction in induction motor (IM) by using multiclass support vector machine (MSVM) algorithms. Failures of IM may occur due to propagation of a mechanical or electrical fault. Hence, for timely detection of these faults, the vibration as well as current signals was acquired after multiple experiments of varying speeds and external torques from an experimental test rig. Here, total ten different fault conditions that frequently encountered in IM (four mechanical fault, five electrical fault conditions and one no defect condition) have been considered. In the case of stator winding fault, and phase unbalance and single phasing fault, different level of severity were also considered for the prediction. In this study, the identification has been performed of the mechanical and electrical faults, individually and collectively. Fault predictions have been performed using vibration signal alone, current signal alone and vibration-current signal concurrently. The one-versus-one MSVM has been trained at various operating conditions of IM using the radial basis function (RBF) kernel and tested for same conditions, which gives the result in the form of percentage fault prediction. The prediction performance is investigated for the wide range of RBF kernel parameter, i.e. gamma, and selected the best result for one optimal value of gamma for each case. Fault predictions has been performed and investigated for the wide range of operational speeds of the IM as well as external torques on the IM.
机译:本文通过使用多类支持向量机(MSVM)算法,对振动和电流监控进行了研究,以对感应电动机(IM)进行有效的故障预测。 IM的故障可能由于机械或电气故障的传播而发生。因此,为了及时发现这些故障,在对多个速度和外部扭矩进行了多次试验后,从试验台上获取了振动以及电流信号。在此,已经考虑了IM中经常遇到的总共十种不同的故障状况(四种机械故障,五种电气故障状况和一种无缺陷状况)。在定子绕组故障,相不平衡和单相故障的情况下,还应考虑不同严重程度的预测。在这项研究中,已经对机械故障和电气故障进行了单独和集体的识别。已经单独使用振动信号,单独使用电流信号和同时使用振动电流信号进行了故障预测。已使用径向基函数(RBF)内核在IM的各种操作条件下训练了一对多MSVM,并针对相同条件进行了测试,从而以百分比故障预测的形式给出了结果。针对广泛的RBF核参数(即伽马)研究了预测性能,并针对每种情况为一个最佳伽马值选择了最佳结果。已针对IM的广泛运行速度以及IM上的外部扭矩进行了故障预测并进行了调查。

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