基于新型双光谱变化检测的机器状态监测

Hyeonsu Park, Byungchul Jang, E. Powers, W. Grady, A. Arapostathis
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引用次数: 11

摘要

由于损坏或异常状态机通常会产生高度非线性的信号,因此需要使用一种能够有效检测和分析非线性信号的工具。由于双相干性是相互作用频率分量之间相位耦合的度量,因此提出了这种非线性分析的双相干性。然而,由于难以区分健康机器的固有非线性特征和故障机器的非线性特征,双相干在机器状态监测中存在一定的困难。为了解决这一问题,我们提出了一种利用双谱变化检测(BCD)来检测和分析机器故障的新方法。所提出的BCD方法的主要优点是它可以抑制正常机器的固有非线性特征,而强调故障引起的非线性特征。因此,该方法能够区分故障诱发的非线性和固有的非线性,是一种强而灵敏的故障诊断方法。实验结果证明了该方法的有效性和统计稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Condition Monitoring Utilizing a Novel Bispectral Change Detection
Since a damaged or abnormal-state machine often generates highly nonlinear signals, it is desirable to use a tool that can effectively detect and analyze nonlinear signatures. The bicoherence has been proposed for such nonlinear analysis since it is a measure of the phase coupling between interacting frequency components. However, the bicoherence has some difficulties in machine condition monitoring due to the challenge of distinguishing between the intrinsic nonlinear signature of a healthy machine and the nonlinear signature of a faulted machine. To address this issue, we propose a novel method exploiting the bispectral change detection (BCD) to detect and analyze the machine faults. The principal advantages of the proposed BCD method are that it can suppress the intrinsic nonlinear signature of healthy machines and emphasize the fault-induced nonlinearities. Therefore, the proposed BCD method can discriminate between fault-induced nonlinearities and intrinsic nonlinearities, and thus can be a strong and sensitive diagnostic for machine faults. The usefulness and statistical robustness of this method are demonstrated via some experimental results.
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