Genetic Algorithm Methodology for Broken Bar Detection in Induction Motor at Low Frequency and Load Operation

D. A. Elvira-Ortiz, D. Morinigo-Sotelo, Á. Zorita-Lamadrid, R. Osornio-Ríos, R. Romero-Troncoso
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引用次数: 4

Abstract

Broken rotor bar (BRB) detection in induction motors (1M) is a challenging task because the associated failure frequencies appear near the fundamental frequency component (FFC). This identification becomes harder when the IM operates at a low frequency or with low load conditions. Therefore, techniques like motor current signature analysis may suffer on properly detecting the existence and the severity of the fault. In this sense, suppressing the FFC results helpful to improve results in the condition monitoring of IM operating at low load. This work proposes the use of a genetic algorithm for estimating and suppressing the FFC in the current signals from an IM with a BRB. Experimental results prove that the use of this technique results in better and easier identification of BRB even when the motor works at low frequency or with a low load.
低频负载下感应电动机断条检测的遗传算法
在异步电动机(1M)中,转子断条(BRB)检测是一项具有挑战性的任务,因为相关的故障频率出现在基频分量(FFC)附近。当IM在低频率或低负载条件下工作时,这种识别变得更加困难。因此,像电机电流特征分析这样的技术在正确检测故障的存在和严重程度时可能会受到影响。从这个意义上说,抑制FFC结果有助于改善IM在低负荷下运行的状态监测结果。这项工作提出了使用遗传算法来估计和抑制带有BRB的IM当前信号中的FFC。实验结果表明,即使电机工作在低频率或低负荷下,使用该技术也能更好、更容易地识别出BRB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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