A Novel Method to Classify Rolling Element Bearing Faults Using K-Nearest Neighbor Machine Learning Algorithm

IF 1.8 Q2 ENGINEERING, MULTIDISCIPLINARY
More A. Vishwendra, Pratiksha S. Salunkhe, Shivanjali V. Patil, Sumit A. Shinde, P. V. Shinde, R. Desavale, P. M. Jadhav, Dr. Nagaraj V. Dharwadkar
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引用次数: 4

Abstract

A novel method is proposed in this work for the classification of fault in the ball bearings. Applications of K-nearest neighbor (KNN) techniques are increasing, which redefines the state-of-the-art technology for defect diagnosis and classification. Vibration characteristics of deep groove ball bearing with different defects are studied in this paper. Experimentation is conducted at different loads and speeds with artificially created defects, and vibration data are processed using kurtosis to find frequency band of interest and amplitude demodulation (Envelope spectrum analysis). Bearing fault amplitudes are extracted from the filtered signal spectrum at bearing characteristic frequency. The decision of fault classification is made using a KNN machine learning classifier by training feature data. The training features are created using characteristics amplitude at different fault and bearing conditions. The results showed that the KNN's accuracies are 100% and 97.3% when applied to two different experimental databases. The quantitative results of the KNN classifier are applied as the guidance for investigating the type of defects of bearing. The KNN Classifier method proved to be an effective method to quantify defects and significantly improve classification efficiency.
基于k -最近邻机器学习算法的滚动轴承故障分类新方法
本文提出了一种新的滚珠轴承故障分类方法。k -最近邻(KNN)技术的应用越来越多,它重新定义了最先进的缺陷诊断和分类技术。研究了含不同缺陷的深沟球轴承的振动特性。实验在不同的负载和速度下进行,并人工制造缺陷,并使用峰度处理振动数据以找到感兴趣的频带和幅度解调(包络谱分析)。在轴承特征频率处,从滤波后的信号频谱中提取轴承故障幅值。通过训练特征数据,利用KNN机器学习分类器进行故障分类决策。利用不同故障和承载条件下的特征幅值生成训练特征。结果表明,在两种不同的实验数据库中,KNN的准确率分别为100%和97.3%。将KNN分类器的定量结果作为研究轴承缺陷类型的指导。事实证明,KNN分类器方法是一种有效的缺陷量化方法,可以显著提高分类效率。
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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来源期刊
CiteScore
5.20
自引率
13.60%
发文量
34
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