基于时域电流分析的感应电机故障诊断

S. Gunal, D. Gokhan Ece, O. Gerek
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引用次数: 3

摘要

提出了一种基于电机电流分析的感应电机故障诊断新方法。以往的电机电流分析工作大多采用频谱方法提取电机故障检测所需的特征。然而,所提出的方法利用时域信息来实现这一目的。能量、局部极值、峰度和偏度参数构成了从滑动窗口内的电机电流中提取的时域特征集。在故障检测和分类实验中,使用6台相同的三相感应电机,其中1台为健康参考,其余5台电机故意断开,使其产生不同的故障。在贝叶斯分类器中采用了基于时域的特征。在不同的电机负载水平下测试了所提出方法的效率。实验结果验证了该方法对不同电机故障的有效检测和判别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Induction motor fault diagnosis via current analysis on time domain
This study proposes a novel approach to induction motor fault diagnosis through motor current analysis. Most of the previous works employing motor current analysis use spectral methods to extract required features for detecting motor faults. The proposed method, however, utilizes time domain information for this purpose. Energy, local extrema, kurtosis and skewness parameters constitute the feature set extracted from the motor current on time domain within sliding window. In fault detection and classification experiments, six identical three-phase induction motors are used with one of them being healthy reference and the remaining five motors being deliberately broken to have different faults. The proposed time domain based features are employed in well known Bayesian classifier. Efficiency of the proposed method is examined at various motor load levels. Experimental results verify that the proposed method successfully detects and discriminates different motor faults.
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