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首页> 外文期刊>Mechanism and Machine Theory: Dynamics of Machine Systems Gears and Power Trandmissions Robots and Manipulator Systems Computer-Aided Design Methods >Compound fault identification of rolling element bearing based on adaptive resonant frequency band extraction
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Compound fault identification of rolling element bearing based on adaptive resonant frequency band extraction

机译:基于自适应谐振频带提取的滚动元件轴承复合故障识别

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摘要

The high frequency resonance (HFR) technique is regarded as a powerful tool for fault diagnosis of rolling element bearings. Different from the usage of the HFR in single fault, the determination of multiple resonant frequency bands under the compound faults and extraneous random impulses is still a challenging task. This paper develops a novel compound fault identification method based on adaptive resonant frequency band extraction. The improved redundant second generation wavelet packet transform is first presented to decompose vibration signal into various narrow bands for providing a fine separation of fault signatures. Then the squared envelope spectrum sparsity criteria is designed to quantify fault characteristics buried in narrow frequency bands. Consequently, the squared envelope spectrum sparsogram is constructed to highlight optimal resonant bands, and the compound faults can be well detected by band-pass filtering and envelope analysis. The numerical and experimental results confirm effectiveness and superiority of the proposed method, which is more sensitive to fault-related impulses and robust to extraneous interferences. (c) 2020 Elsevier Ltd. All rights reserved.
机译:高频谐振(HFR)技术被认为是滚动元件轴承故障诊断的强大工具。与单一故障的HFR的使用不同,在复合故障和外来随机冲动下的多个谐振频带的测定仍然是一个具有挑战性的任务。本文开发了一种基于自适应谐振频带提取的新型复合故障识别方法。首先呈现改进的冗余第二代小波分组变换以将振动信号分解成各种窄带,用于提供故障签名的精细分离。然后,平方包络谱稀疏标准旨在量化埋在窄频带中的故障特性。因此,构造平方包络谱间谍图以突出显示最佳谐振条带,并且通过带通滤波和包络分析可以良好地检测复合故障。数值和实验结果证实了该方法的有效性和优越性,对故障相关的冲动和对外干扰更敏感。 (c)2020 elestvier有限公司保留所有权利。

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