Intelligent Bearing Fault Diagnosis Method Based on HNR Envelope and Classification Using Supervised Machine Learning Algorithms

IF 0.5 Q4 ENGINEERING, ELECTRICAL & ELECTRONIC Advances in Electrical and Electronic Engineering Pub Date : 2021-12-30 DOI:10.15598/aeee.v19i4.4183
I. Ouachtouk, Soumia El Hani, K. Dahi
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Abstract

Research on data-driven bearing fault diagnosis techniques has recently drawn more and more attention due to the availability of massive condition monitoring data. The research work presented in this paper aims to develop an architecture for the detection and diagnosis of bearing faults in the induction machines. The developed data-oriented architecture uses vibration signals collected by sensors placed on the machine, which is based, in the first place, on the extraction of fault indicators based on the harmonics-to-noise ratio envelope. Normalisation is then applied to the extracted indicators to create a well-processed data set. The evolution of these indicators will be studied afterwards according to the type and severity of defects using sequential backward selection technique. Supervised machine learning classification methods are developed to classify the measurements described by the feature vector with respect to the known modes of operation. In the last phase concerning decision making, ten classifiers are tested and applied based on the selected and combined indicators. The developed classification methods allow classifying the observations, with respect to the different modes of bearing condition (outer race, inner race fault or healthy condition). The proposed method is validated on data collected using an experimental bearing test bench. The experimental results indicate that the proposed architecture achieves high accuracy in bearing fault detection under all operational conditions. The results show that, compared to some proposed approaches, our proposed architecture can achieve better performance overall in terms of the number of optimal features and the accuracy of the tests.
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基于HNR包络和有监督机器学习算法分类的轴承故障智能诊断方法
近年来,由于大量状态监测数据的可用性,数据驱动轴承故障诊断技术的研究越来越受到重视。本文的研究工作旨在开发一种用于感应电机轴承故障检测和诊断的体系结构。所开发的面向数据的体系结构使用放置在机器上的传感器收集的振动信号,首先是基于基于谐波噪声比包络的故障指标提取。然后将标准化应用于提取的指标,以创建处理良好的数据集。根据缺陷的类型和严重程度,使用顺序逆向选择技术对这些指标的演化进行研究。开发了有监督的机器学习分类方法,以根据已知的操作模式对特征向量描述的测量进行分类。在决策的最后一个阶段,根据选择和组合的指标对十个分类器进行测试和应用。所开发的分类方法允许根据轴承状态的不同模式(外圈、内圈故障或健康状态)对观测结果进行分类。利用轴承试验台采集的数据对该方法进行了验证。实验结果表明,该方法在各种工况下均能达到较高的轴承故障检测精度。结果表明,与已有的方法相比,我们提出的体系结构在最优特征的数量和测试的准确性方面总体上取得了更好的性能。
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来源期刊
Advances in Electrical and Electronic Engineering
Advances in Electrical and Electronic Engineering ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
1.30
自引率
33.30%
发文量
30
审稿时长
25 weeks
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