Classification of Induction Motor Bearing Failures Through Retro-Propagation Neural Network Algorithm and Adaptive Neuro-Fuzzy Inference System of Type Takagi-Sugeno

Abla Bouguern, S. Ghoudelbourk, A. Boukadoum
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引用次数: 1

Abstract

The goal of this work was to study the best technique for fault diagnosis in bearing induction motors. Degraded operating modes may occur during the life of the induction motors. One of the main causes of these failures is the defects of the bearings. To improve the operational safety of the drives, monitoring facilities can be placed to perform preventive maintenance. We present a classification of the vibration vector signal based on the vibration data obtained from the vector signal for four types of bearing defects (healthy, ball defect, inner ring and outer ring defect). The automatic diagnosis of these vectors is performed using artificial intelligence techniques that combine retro-propagation neural network algorithm and fuzzy inference system adaptive network of type Takagi-Sugeno. These techniques give accurate results that are confirmed by numerical simulation.
基于反向传播神经网络算法和Takagi-Sugeno型自适应神经模糊推理系统的感应电机轴承故障分类
本工作的目的是研究轴承感应电机故障诊断的最佳技术。在感应电动机的使用寿命期间,可能会出现劣化的工作模式。这些故障的主要原因之一是轴承的缺陷。为了提高驱动器的操作安全性,可以放置监控设施来进行预防性维护。针对四种类型的轴承缺陷(健康缺陷、钢球缺陷、内圈缺陷和外圈缺陷),提出了一种基于矢量信号的振动矢量信号分类方法。利用人工智能技术,结合逆向传播神经网络算法和Takagi-Sugeno型模糊推理系统自适应网络,对这些向量进行自动诊断。数值模拟结果证实了这些方法的准确性。
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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