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Rolling bearing fault diagnosis based on time-delayed feedback monostable stochastic resonance and adaptive minimum entropy deconvolution

机译:基于时间延迟反馈的滚动轴承故障诊断单稳态随机共振和自适应最小熵折叠

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摘要

Rolling bearings are the key components in the modern machinery, and tough operation environments often make them prone to failure. However, due to the influence of the transmission path and background noise, the useful feature information relevant to the bearing fault contained in the vibration signals is weak, which makes it difficult to identify the fault symptom of rolling bearings in time. Therefore, the paper proposes a novel weak signal detection method based on time-delayed feedback monostable stochastic resonance (TFMSR) system and adaptive minimum entropy deconvolution (MED) to realize the fault diagnosis of rolling bearings. The MED method is employed to preprocess the vibration signals, which can deconvolve the effect of transmission path and clarify the defect-induced impulses. And a modified power spectrum kurtosis (MPSK) index is constructed to realize the adaptive selection of filter length in the MED algorithm. By introducing the time-delayed feedback item in to an over-damped monostable system, the TFMSR method can effectively utilize the historical information of input signal to enhance the periodicity of SR output, which is beneficial to the detection of periodic signal. Furthermore, the influence of time delay and feedback intensity on the SR phenomenon is analyzed, and by selecting appropriate time delay, feedback intensity and re-scaling ratio with genetic algorithm, the SR can be produced to realize the resonance detection of weak signal. The combination of the adaptive MED (AMED) method and TFMSR method is conducive to extracting the feature information from strong background noise and realizing the fault diagnosis of rolling bearings. Finally, some experiments and engineering application are performed to evaluate the effectiveness of the proposed AMED-TFMSR method in comparison with a traditional bistable SR method. (C) 2017 Elsevier Ltd. All rights reserved.
机译:滚动轴承是现代机械中的关键部件,艰难的操作环境通常会使它们容易发生。然而,由于传输路径和背景噪声的影响,与振动信号中包含的轴承故障相关的有用特征信息较弱,这使得难以识别滚动轴承的故障症状。因此,本文提出了一种基于时间延迟反馈单稳态随机共振(TFMSR)系统和自适应最小熵解卷(MED)的新型弱信号检测方法,实现滚动轴承的故障诊断。采用MED方法预处理振动信号,该振动信号可以破坏传输路径的效果并阐明缺陷诱导的脉冲。构造修改的功率谱峰值(MPSK)指数以实现MED算法中的滤波器长度的自适应选择。通过将时间延迟的反馈项目引入过阻尼的单稳态系统中,TFMSR方法可以有效地利用输入信号的历史信息来增强SR输出的周期性,这有利于定期信号的检测。此外,分析了时间延迟和反馈强度对SR现象的影响,并通过选择与遗传算法的适当的时间延迟,反馈强度和再缩放比,SR可以制造以实现弱信号的共振检测。 Adaptive Med(AMED)方法和TFMSR方法的组合有利于从强大的背景噪声中提取特征信息,实现滚动轴承的故障诊断。最后,进行了一些实验和工程应用,以评估所提出的AMED-TFMSR方法的有效性与传统的双稳态SR方法相比。 (c)2017 Elsevier Ltd.保留所有权利。

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