首页> 外文会议>ASME gas turbine India conference >ANALYSIS OF TIME, FREQUENCY AND WAVELET BASED FEATURES OF VD3RATION AND CURRENT SIGNALS FOR FAULT DIAGNOSIS OF INDUCTION MOTORS USING SVM
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ANALYSIS OF TIME, FREQUENCY AND WAVELET BASED FEATURES OF VD3RATION AND CURRENT SIGNALS FOR FAULT DIAGNOSIS OF INDUCTION MOTORS USING SVM

机译:基于时间,频率和小波的VD3ration和电流信号特征分析基于SVM的感应电动机故障诊断

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This paper presents a comparative analysis of the time, frequency and time-frequency domain based features of the vibration and current signals for identifying various faults in induction motors (IMs) using support vector machine (SVM). Four mechanical faults (bearing fault, unbalanced rotor, bowed rotor and misaligned rotor), and three electrical faults (broken rotor bars, stator winding fault with two severity levels and phase unbalance with two severity levels) are considered in the present study. The proposed fault diagnosis consists of three steps. In the first step, the vibration in three orthogonal directions and the current in three phases are acquired from the healthy and faulty motors using a machine fault simulator (MFS). In second step, useful statistical features are extracted from the time, frequency and time-frequency domain (continuous wavelet transform (CWT)) of the signal. For the effective fault diagnosis, SVM parameters are optimally selected based on the grid-search method along with 5-fold cross-validation, and the effective fault features are selected based on the wrapper model. Finally, the fault diagnosis of IM is performed using optimal SVM parameters and effective features as input to the SVM. The classification performance of all methodologies developed in three domains is compared for various operating conditions of IMs. The test results showed that the developed methodology could isolate ten IM fault conditions successfully based on features from all three domains at all IM operating conditions; however, time-frequency features give the best results.
机译:本文介绍了一种基于时域,频域和时频域的振动和电流信号特征的比较分析,用于使用支持向量机(SVM)来识别感应电动机(IM)中的各种故障。在本研究中考虑了四个机械故障(轴承故障,转子不平衡,弓形转子和转子未对准)和三个电气故障(转子棒损坏,具有两个严重性级别的定子绕组故障和具有两个严重性级别的相位不平衡)。提出的故障诊断包括三个步骤。第一步,使用机器故障模拟器(MFS)从健康和故障电动机中获取三个正交方向的振动和三相电流。第二步,从信号的时域,频域和时频域(连续小波变换(CWT))中提取有用的统计特征。为了进行有效的故障诊断,基于网格搜索方法和5倍交叉验证对SVM参数进行了最佳选择,并根据包装模型选择了有效的故障特征。最后,使用最佳SVM参数和有效功能作为SVM的输入来执行IM的故障诊断。针对IM的各种操作条件,比较了在三个领域开发的所有方法的分类性能。测试结果表明,所开发的方法能够基于在所有IM操作条件下来自所有三个域的特征成功地隔离出十个IM故障条件。但是,时频特性可提供最佳结果。

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