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Weak Fault Signal Detection of Rotating Machinery Based on Multistable Stochastic Resonance and VMD-AMD

机译:基于多稳态随机共振和VMD-AMD的旋转机械弱故障信号检测

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摘要

For solving detection problems of multifrequency weak signals in noisy background, a novel weak signal detection method based on variational mode decomposition (VMD) and rescaling frequency-shifted multistable stochastic resonance (RFMSR) with analytical mode decomposition (AMD) is proposed. In this method, different signal frequency bands are processed by rescaling subsampling compression to make each frequency band meet the conditions of stochastic resonance. Before the enhanced signal components are synthesized, they are processed to achieve the enhanced signal by means of AMD, leaving only the enhanced sections of the signal. The processed signal is decomposed into intrinsic mode functions (IMF) by VMD, in order to require the detection of weak multifrequency signals. The experimental analysis of the rolling bearing inner ring fault and gear fault diagnosis demonstrate that the proposed method can not only enhance signal amplitude, reduce false components, and improve the VMD algorithm’s accuracy, but also effectively detect weak multifrequency signals submerged by noise.
机译:为了解决噪声背景下的多频弱信号检测问题,提出了一种基于变模分解(VMD)和带解析模式分解(AMD)的按比例缩放频移多稳态随机共振(RFMSR)的弱信号检测方法。在这种方法中,通过重新缩放二次采样压缩来处理不同的信号频带,以使每个频带都满足随机共振的条件。在合成增强信号成分之前,它们会通过AMD进行处理以获得增强信号,仅留下信号的增强部分。 VMD将处理后的信号分解为固有模式函数(IMF),以要求检测弱的多频信号。对滚动轴承内圈故障和齿轮故障诊断的实验分析表明,该方法不仅可以提高信号幅度,减少虚假分量,提高VMD算法的精度,而且可以有效地检测出被噪声淹没的微弱多频信号。

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