Fault diagnosis of VSI fed induction motor drive using fuzzy logic approach

G. J. Naveena, Murugesh Dodakundi, Anand Layadgundi
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引用次数: 5

Abstract

Monitoring the condition of induction motors is becoming highly important in various industries. There are many more condition monitoring methods including thermal monitoring, vibration monitoring,chemical monitoring and acoustic emission monitoring. But all monitoring methods require costlier sensors or specialized tools whereas current monitoring methods do not require additional sensors. This is because of electrical quantities associated with the electrical motors such as current and voltage are measured by using current and potential transformers that are installed always as a part of protection scheme. The output point of view current monitoring is non-interfering and implemented in the motor control center remotely from the motors being monitored. The present work intends the current monitoring method is applied to detect the various types of faults in induction motor such as electrically related faults. Knowledge based fuzzy logic approach helps in diagnosing the induction motor faults. Actually, fuzzy logic is just like a human intelligent processes and natural language enabling decisions to be made based on obscure information. Therefore, current work enforces fuzzy logic to induction motor fault spotting and resolving. The motor condition is identified by using linguistic variables. Fault condition is diagnosed based on the current amplitude in addition to the knowledge is expressed in membership function and fuzzy rules. The model is designed in MATLAB/SIMULINK with the data obtained under both healthy and different faulty conditions.
基于模糊逻辑方法的VSI馈电异步电动机故障诊断
感应电动机的状态监测在各个行业中变得越来越重要。状态监测方法有很多,包括热监测、振动监测、化学监测和声发射监测。但所有的监测方法都需要昂贵的传感器或专门的工具,而目前的监测方法不需要额外的传感器。这是因为与电动机相关的电量,如电流和电压,是通过使用电流和电位互感器来测量的,这些互感器总是作为保护方案的一部分安装的。输出视点电流监测是无干扰的,并且在远离被监测电机的电机控制中心实现。本工作旨在将现有的监测方法应用于感应电动机的各种类型故障的检测,如电气相关故障。基于知识的模糊逻辑方法有助于异步电动机故障诊断。实际上,模糊逻辑就像人类的智能过程和自然语言,可以根据模糊的信息做出决策。因此,目前的工作将模糊逻辑应用到感应电机故障的发现和解决中。使用语言变量来识别运动状态。除了用隶属函数和模糊规则表示知识外,还基于电流幅值进行故障诊断。在MATLAB/SIMULINK中设计了该模型,并在健康和不同故障条件下获得了数据。
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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