Enhancing the Classification Performance of Machine Learning Techniques by Using Hjorth's and Other Statistical Parameters for Precise Tracking of Naturally Evolving Faults in Ball Bearings

Sameera Mufazzal, S. Muzakkir, Sidra Khanam
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引用次数: 3

Abstract

The research on identification of artificially induced faults in bearing is available in abundance in the past literature, however, the diagnosis becomes more challenging when the fault evolves naturally inside the bearing, and especially when its stages need to be precisely tracked. The conventional statistical features used commonly in the past literature do not uniquely characterize the fault status, and yield satisfactory results only in limited cases, like those for artificial faults. In this work, a new combination of fault descriptors, including three Hjorth's parameters, three statistical features and an entropy measure, is proposed and its effectiveness has been analyzed on classification performances of k-Nearest Neighbor (k-NN) and Support Vector Machine (SVM). Two datasets comprising the signals of run-to-failure tests were taken from Intelligent Maintenance Systems (IMS) and the Paderborn university repository. The data were categorized into large number of classes to closely indicate the actual fault type and size. Compared to conventional statistical features, the new combination was able to enhance the classification accuracy of k-NN and SVM, respectively, from 91.3% to 99.9%, and from 94.8% to 99.7% in the case of IMS dataset, and from 94.1% to 98.5%, and from 94.7% to 98.4% in the case of Paderborn dataset. In addition to accuracy, the performance metrics, including precision, recall, and F1-score were also improved using the proposed combinatory features.
利用Hjorth和其他统计参数提高机器学习技术的分类性能,以精确跟踪滚珠轴承自然演化故障
以往文献中对轴承人工诱发故障的识别研究较多,但当故障在轴承内部自然演化时,特别是需要精确跟踪故障阶段时,诊断难度较大。过去文献中常用的传统统计特征不能唯一地表征故障状态,并且只能在有限的情况下(如人为故障)产生令人满意的结果。本文提出了一种新的故障描述符组合,包括三个Hjorth参数、三个统计特征和一个熵测度,并分析了其对k-最近邻(k-NN)和支持向量机(SVM)分类性能的影响。包含运行到故障测试信号的两个数据集取自智能维护系统(IMS)和帕德博恩大学存储库。数据被分成大量的类,以密切地显示实际的故障类型和大小。与传统统计特征相比,新的组合能够将k-NN和SVM的分类准确率分别从IMS数据集的91.3%提高到99.9%,从94.8%提高到99.7%,在Paderborn数据集从94.1%提高到98.5%,从94.7%提高到98.4%。除了准确性之外,使用所提出的组合特征,性能指标,包括精度,召回率和f1分数也得到了改善。
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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