改进的电机转子断条检测算法

J. Vico, I. Voloh, D. Stankovic, Zhiying Zhang
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引用次数: 9

摘要

电动机转子断条是鼠笼式异步电动机的主要故障形式之一。目前研究的转子棒故障识别方法有:电机电流特征分析、噪声测量、振动监测、温度监测、电磁场监测、红外识别、射频发射监测等。最常用的方法被称为电机电流特征分析(MCSA)。它是基于对电机电流的信号分析,通过用于电机保护目的的常规电流互感器获得。通过电流波形-时域分析很难检测转子断条对定子电流的影响,而在频域上通过分析频率分布谱可以确定转子断条对定子电流的影响。影响电机断条可靠检测的因素很多;电机负载,系统频率和电机速度,电机结构等。一种新的算法考虑了所有这些因素,以适应不断变化的电机运行条件。此外,通过学习健康电机的频谱特征,可以使转子棒损坏的检测更加确定。本文对该算法在不同系统和工况的异步电动机上进行了广泛的测试,并给出了测试结果。还介绍了从实地设施中吸取的经验教训。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced algorithm for motor rotor broken bar detection
Motor rotor broken bar is one of the predominant failure modes of squirrel cage induction motors. There are numerous researched methods for identifying rotor bar faults: motor current signature analysis, acoustic noise measurements, vibration monitoring, temperature monitoring, electromagnetic field monitoring, infrared recognition, radio frequency emissions monitoring, etc. The most frequently used method is called the Motor Current Signature Analysis (MCSA). It is based on a signal analysis of the motor current, obtained via a regular current transformer used for motor protection purposes. It is difficult to detect rotor bar failures by looking into the currents waveform-time domain analysis, however impact of rotor broken bars to the stator currents can be determined by analyzing spectrum of frequency distribution in the frequency domain. Many factors affect reliable detection of the motor broken bar; motor load, system frequency and motor speed, construction of the motor etc. A new algorithm takes into account all these factors to adapt to a changing operational condition of the motor. Also, by learning the healthy motor frequency spectrum signature, the detection of a broken rotor bar can be made even more deterministic. The new algorithm was extensively tested on the induction motors with different system and motor conditions-results of this testing are presented. Lessons learned from the field installations are presented as well.
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