Fault Classification of Induction Motor Bearing Using Adaptive Neuro Fuzzy Inference System

K. Gowthami, L. Kalaivani
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引用次数: 4

Abstract

The current research of smart fault diagnosis is to mine different characteristics of a signal from vibration of a machine that can differentiate unusual fault categories. Generally the mechanical data which was observed from machines are having unique features. Based on the prior knowledge and previously obtained features, the inputs are given to artificial intelligent techniques for fault classification. In this paper, neuro fuzzy and neural network based fault classification techniques are proposed. This paper mainly comprises two main parts such as feature mining and fault categorization. To extract valid information or set of features from the vibration signal, various recent techniques included in the feature mining and lessening modules. Samples are collected from Case Western Reserve University Bearing Data Center and, more samples are obtained from matlab. Statistical features of a signal are evaluated using matlab. The samples obtained are given to neural network for training, testing and validation. The statistical features are given as input to Adaptive Neuro Fuzzy Inference System (ANFIS) for fault classification. An experimental result shows that training, testing and validation using neural network and fault classification using Adaptive Neuro fuzzy Inference System producing better results.
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基于自适应神经模糊推理系统的异步电机轴承故障分类
智能故障诊断目前的研究方向是挖掘机器振动信号的不同特征,从而区分异常故障的类别。一般来说,从机器上观测到的力学数据都有其独特的特征。基于先验知识和先前获得的特征,将输入信息提供给人工智能技术进行故障分类。本文提出了基于神经模糊和神经网络的故障分类技术。本文主要包括特征挖掘和故障分类两个主要部分。为了从振动信号中提取有效的信息或特征集,特征挖掘和减小模块中包含了各种最新技术。样本来自凯斯西储大学轴承数据中心,更多的样本来自matlab。利用matlab对信号的统计特征进行了评估。将得到的样本交给神经网络进行训练、测试和验证。将统计特征作为自适应神经模糊推理系统(ANFIS)的输入,用于故障分类。实验结果表明,采用神经网络进行训练、测试和验证,采用自适应神经模糊推理系统进行故障分类,效果较好。
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