Robust stator fault detection under load variation in induction motors using AI techniques

Negin Lashkari, Hamid Fekri Azgomi, J. Poshtan, M. Poshtan
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引用次数: 5

Abstract

Detection of stator faults in their early stage is of great importance since they propagate rapidly and may cause further damage to the motor. Some variations in induction motors such as torque load anomalies must be considered in order to reliably detect stator faults. This paper presents robust artificial intelligence (AI) techniques for interturn short circuit (ITSC) fault detection of stator in three phase induction motors. In this work, the focus is first on the application of artificial neural networks and then fuzzy logic systems to reduce significantly the effect of load variations on fault detection procedure. The proposed ANN methodology has the merit to detect and locate ITSC fault, while the Fuzzy approach is capable of detecting and diagnosing the severity of ITSC fault. The simulation and experimental results are also given to verify the efficiency of both approaches under ITSC fault and load change.
基于人工智能技术的异步电动机负载变化下的鲁棒定子故障检测
由于定子故障传播迅速,并可能对电机造成进一步的损坏,因此早期检测定子故障非常重要。为了可靠地检测定子故障,必须考虑异步电动机的一些变化,如转矩负载异常。提出了一种基于鲁棒人工智能的三相异步电动机定子匝间短路故障检测技术。在这项工作中,重点首先是应用人工神经网络,然后是模糊逻辑系统,以显著减少负载变化对故障检测过程的影响。该方法具有检测和定位ITSC故障的优点,而模糊方法能够检测和诊断ITSC故障的严重程度。仿真和实验结果验证了两种方法在ITSC故障和负荷变化情况下的有效性。
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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