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A One-Versus-All Class Binarization Strategy for Bearing Diagnostics of Concurrent Defects

机译:用于对并发缺陷进行轴承诊断的一类全类二值化策略

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摘要

In bearing diagnostics using a data-driven modeling approach, a concern is the need for data from all possible scenarios to build a practical model for all operating conditions. This paper is a study on bearing diagnostics with the concurrent occurrence of multiple defect types. The authors are not aware of any work in the literature that studies this practical problem. A strategy based on one-versus-all (OVA) class binarization is proposed to improve fault diagnostics accuracy while reducing the number of scenarios for data collection, by predicting concurrent defects from training data of normal and single defects. The proposed OVA diagnostic approach is evaluated with empirical analysis using support vector machine (SVM) and C4.5 decision tree, two popular classification algorithms frequently applied to system health diagnostics and prognostics. Statistical features are extracted from the time domain and the frequency domain. Prediction performance of the proposed strategy is compared with that of a simple multi-class classification, as well as that of random guess and worst-case classification. We have verified the potential of the proposed OVA diagnostic strategy in performance improvements for single-defect diagnosis and predictions of BPFO plus BPFI concurrent defects using two laboratory-collected vibration data sets.
机译:在使用数据驱动的建模方法进行轴承诊断时,需要考虑所有可能情况下的数据,以建立适用于所有工况的实用模型。本文是对同时发生多种缺陷类型的轴承诊断的研究。作者不了解研究此实际问题的文献资料。提出了一种基于全民(OVA)二值化的策略,通过从正常和单个缺陷的训练数据中预测并发缺陷,提高故障诊断的准确性,同时减少用于数据收集的方案数量。通过使用支持向量机(SVM)和C4.5决策树的经验分析,对提出的OVA诊断方法进行了评估,这两种流行的分类算法经常应用于系统健康诊断和预测。从时域和频域提取统计特征。将所提策略的预测性能与简单的多类分类以及随机猜测和最坏情况分类的预测性能进行了比较。我们已经使用两个实验室收集的振动数据集验证了所提出的OVA诊断策略在改进单缺陷诊断和BPFO加上BPFI并发缺陷的预测性能方面的潜力。

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