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Data Mining Based Full Ceramic Bearing Fault Diagnostic System Using AE Sensors

机译:基于数据挖掘的AE传感器全陶瓷轴承故障诊断系统

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摘要

Full ceramic bearings are considered the first step toward full ceramic, oil-free engines in the future. No research on full ceramic bearing fault diagnostics using acoustic emission (AE) sensors has been reported. Unlike their steel counterparts, signal processing methods to extract effective AE fault characteristic features and fault diagnostic systems for full ceramic bearings have not been developed. In this paper, a data mining based full ceramic bearing diagnostic system using AE based condition indicators (CIs) is presented. The system utilizes a new signal processing method based on Hilbert Huang transform to extract AE fault features for the computation of CIs. These CIs are used to build a data mining based fault classifier using a $k$-nearest neighbor algorithm. Seeded fault tests on full ceramic bearing outer race, inner race, balls, and cage are conducted on a bearing diagnostic test rig and AE burst data are collected. The effectiveness of the developed fault diagnostic system is validated using real full ceramic bearing seeded fault test data.
机译:全陶瓷轴承被认为是未来向全陶瓷,无油发动机迈出的第一步。尚无关于使用声发射(AE)传感器进行全陶瓷轴承故障诊断的研究的报道。不同于钢铁同行,尚未开发出提取有效AE故障特征的信号处理方法和全陶瓷轴承的故障诊断系统。本文提出了一种基于数据挖掘的,基于AE的状态指示器(CI)的全陶瓷轴承诊断系统。该系统利用基于Hilbert Huang变换的新信号处理方法来提取AE故障特征以进行CI的计算。这些配置项用于使用$ k $-最近邻居算法构建基于数据挖掘的故障分类器。在轴承诊断测试台上对全陶瓷轴承外圈,内圈,球和保持架进行了种子故障测试,并收集了AE爆破数据。已开发的故障诊断系统的有效性通过使用完整的陶瓷轴承实际故障测试数据进行了验证。

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