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Fault Diagnosis Using Neural–Fuzzy Technique Based on the Simulation Results of Stator Faults for a Three-Phase Induction Motor Drive System

机译:基于三相异步电动机驱动器定子故障仿真结果的神经模糊技术的故障诊断

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Nowadays, induction machines are known as workhorse and play an important role in manufacturing environments mainly due to their low cost, reasonably small size, ruggedness, low maintenance, and operation with an easily available power supply. Therefore, the diagnostic technology of this type of machine is mainly considered and proposed from industry and scientist academia. Several studies show that approximately 30-40% of induction machine faults are stator faults. The fault diagnosis of electrical machines has progressed in recent years from traditional to artificial intelligence (AI) techniques. This paper presents a general review of the principle of AI-based diagnostic methods first. It covers the recent development and the system structure, about expert system (ES), artificial neural network (ANN), fuzzy logic system (FLS), and combined structure, like Neural-Fuzzy, based fault diagnostic strategies. Finally, a Neural-Fuzzy technique is used in this paper to perform the stator fault diagnosis for induction machine. The simulation results verified the technique proposed.
机译:如今,感应电机被称为“主力马”,在制造环境中起着重要作用,主要是由于它们的低成本,合理的小尺寸,坚固耐用,维护成本低以及易于获得电源的操作。因此,这种机器的诊断技术主要是由工业界和科学家学术界考虑和提出的。多项研究表明,感应电机故障中约有30-40%是定子故障。近年来,电机的故障诊断已从传统技术发展到人工智能(AI)技术。本文首先概述了基于AI的诊断方法的原理。它涵盖了有关专家系统(ES),人工神经网络(ANN),模糊逻辑系统(FLS)以及基于故障诊断策略的组合结构(如神经模糊)的最新发展和系统结构。最后,本文采用神经模糊技术对异步电机进行定子故障诊断。仿真结果验证了所提出的技术。

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