Broken rotor bar detection in inverter-fed induction motors by time-corrected instantaneous frequency spectrogram

A. García-Perez, R. Romero-Troncoso, D. Camarena-Martinez, R. Osornio-Rios, J. Amezquita-Sanchez
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引用次数: 9

Abstract

Fault detection in induction motors in non-stationary regimes managed by inverters is an existing industrialized demand. Inverter-fed machines have being used due to their adjustable velocity and quick dynamic response, although the injection of objectionable frequency components. The condition monitoring of these motors can significantly reduce the cost of maintenance in the early detection of faults. Under this special performing situation, many of the identification methods researched have problems in distinguishing induction motor failures. This paper introduces an identification methodology founded on the mixed handling of two techniques: Time-corrected instantaneous frequency and the Spectrogram, also known as reassigned spectrogram, where a thresholding is used so that any element with values smaller than the signal-noise-rate are set to zero, and the noise is reduced in the final spectrogram. The suggested method is tested in an inverter-fed induction motor at the time of startup continue by a steady-state condition. It was confirmed its effectiveness to find one broken rotor bar. From the obtained results, the suggested method confirms to be precise enough to identify the failure progression in the time-frequency domain under various operating conditions (startup and steady-state conditions) in inverter-fed induction motors.
用时间校正瞬时频谱图检测变频异步电动机转子断条
异步电动机在逆变器管理下的非平稳状态下的故障检测是一个已经存在的工业化需求。逆变电机由于其可调的速度和快速的动态响应而被使用,尽管注入了令人反感的频率成分。对这些电机进行状态监测,可以在故障的早期发现中显著降低维护成本。在这种特殊的运行情况下,许多已研究的识别方法在识别异步电动机故障方面存在问题。本文介绍了一种基于两种技术混合处理的识别方法:时间校正瞬时频率和谱图,也称为重新分配谱图,其中使用阈值,使任何值小于信噪比的元素被设置为零,并在最终谱图中降低噪声。该方法在变频感应电动机启动时进行了稳态测试。通过对转子断条的查找,验证了该方法的有效性。结果表明,该方法能够准确地识别变频异步电动机在不同工况(启动工况和稳态工况)下的时频域故障进程。
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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