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Investigation on full ceramic bearing fault diagnostics using vibration and AE sensors

机译:使用振动和AE传感器调查全陶瓷轴承故障诊断

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Full ceramic bearings are considered the first step towards full ceramic and oil free engines in the future. Few researches on full ceramic bearing fault diagnostics using both vibration and acoustic emission (AE) sensors have been reported. In this paper, a research investigation on full ceramic bearing fault diagnostics using vibration and AE sensors is reported. The research utilizes empirical mode decomposition (EMD) to pre-process both vibration and AE signals and a novel multidimensional vibration and AE fault feature extraction method is developed to generate the condition indicators (CIs). These CIs are used to build a fault classifier using a k-nearest neighbor (KNN) algorithm. Seeded fault tests on full ceramic bearing outer race, inner race, balls, and cage are conducted on a bearing fault diagnostic test rig and both vibration signals and AE burst type signals are collected. The effectiveness of the vibration and AE based diagnostic techniques is validated using real full ceramic bearing seeded fault test data. A comparison of fault diagnostic performance between vibration and AE sensors is provided.
机译:全陶瓷轴承被认为是未来全陶瓷和无油发动机的第一步。已经报道了使用振动和声发射(AE)传感器的全部陶瓷轴承故障诊断的少数研究。本文报道了使用振动和AE传感器的全陶瓷轴承故障诊断研究。该研究利用经验模式分解(EMD)预处理振动和AE信号,开发了新的多维振动和AE故障特征提取方法以产生条件指示器(CIS)。这些CIS用于使用K-CORMATE邻居(KNN)算法构建故障分类器。在轴承故障诊断试验台上进行全陶瓷轴承外圈,内圈,球和笼上的播种机故障测试,并收集振动信号和AE突发型信号。使用真正的全陶瓷轴承接种故障测试数据验证了振动和AE基诊断技术的有效性。提供了振动与AE传感器之间的故障诊断性能的比较。

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