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Stator Fault Detection and Diagnosis of a Induction Motor Using Neuro Fuzzy Logic

机译:基于神经模糊逻辑的异步电动机定子故障检测与诊断

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摘要

Many researches dealt with the problem of induction motors fault detection and diagnosis. The major difficulty is the lack of an accurate model that describes a fault motor. Moreover, experienced engineers are often required to interpret measurement data that are frequently inconclusive. A neuro fuzzy logic approach may help to diagnose induction motor faults. In fact, neuro fuzzy logic is reminiscent of human thinking processes and natural language enabling decisions to be made based on vague information. Therefore, this study applies fuzzy logic to induction motors fault detection and diagnosis. The motor condition is described using linguistic variables. Neuro fuzzy subsets and the corresponding membership functions describe stator current amplitudes. A knowledge base, comprising rule and data bases is built to support the fuzzy inference. The induction motor condition is diagnosed using a compositional rule of fuzzy inference using Matlab/ Simulink.
机译:许多研究涉及感应电动机故障检测和诊断的问题。主要困难是缺乏描述故障电动机的准确模型。而且,经常需要经验丰富的工程师来解释经常不确定的测量数据。神经模糊逻辑方法可能有助于诊断感应电动机故障。实际上,神经模糊逻辑使人联想到人类的思维过程和自然语言,从而能够基于模糊的信息做出决策。因此,本研究将模糊逻辑应用于感应电动机的故障检测与诊断。使用语言变量描述运动条件。神经模糊子集和相应的隶属函数描述了定子电流幅度。建立包括规则和数据库的知识库以支持模糊推理。使用Matlab / Simulink使用模糊推理的合成规则来诊断感应电动机的状态。

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