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Compressive Sensing of Roller Bearing Faults via Harmonic Detection from Under-Sampled Vibration Signals

机译:通过从欠采样振动信号中进行谐波检测对滚动轴承故障进行压缩感知

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摘要

The Shannon sampling principle requires substantial amounts of data to ensure the accuracy of on-line monitoring of roller bearing fault signals. Challenges are often encountered as a result of the cumbersome data monitoring, thus a novel method focused on compressed vibration signals for detecting roller bearing faults is developed in this study. Considering that harmonics often represent the fault characteristic frequencies in vibration signals, a compressive sensing frame of characteristic harmonics is proposed to detect bearing faults. A compressed vibration signal is first acquired from a sensing matrix with information preserved through a well-designed sampling strategy. A reconstruction process of the under-sampled vibration signal is then pursued as attempts are conducted to detect the characteristic harmonics from sparse measurements through a compressive matching pursuit strategy. In the proposed method bearing fault features depend on the existence of characteristic harmonics, as typically detected directly from compressed data far before reconstruction completion. The process of sampling and detection may then be performed simultaneously without complete recovery of the under-sampled signals. The effectiveness of the proposed method is validated by simulations and experiments.
机译:香农采样原理要求大量数据,以确保在线监测滚动轴承故障信号的准确性。由于繁琐的数据监视,经常会遇到挑战,因此,本研究开发了一种针对压缩振动信号的新方法,用于检测滚子轴承故障。考虑到谐波经常代表振动信号中的故障特征频率,提出了一种特征谐波的压缩感知框架来检测轴承故障。首先从感测矩阵获取压缩的振动信号,并通过精心设计的采样策略保留信息。然后尝试进行欠采样振动信号的重建过程,尝试通过压缩匹配追踪策略从稀疏测量中检测特征谐波。在提出的方法中,轴承故障特征取决于特征谐波的存在,通常在重建完成之前就直接从压缩数据中检测出特征谐波。然后可以同时执行采样和检测过程,而无需完全恢复欠采样信号。仿真和实验验证了该方法的有效性。

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