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An underdamped stochastic resonance method with stable-state matching for incipient fault diagnosis of rolling element bearings

机译:稳态匹配的阻尼不足随机共振方法在滚动轴承早期故障诊断中的应用

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摘要

Most traditional overdamped monostable, bistable and even tristable stochastic resonance (SR) methods have three shortcomings in weak characteristic extraction: (1) their potential structures characterized by single stable-state type are insufficient to match with the complicated and diverse mechanical vibration signals; (2) they vulnerably suffer the interference from multiscale noise and largely depend on the help of highpass filters whose parameters are selected subjectively, probably resulting in false detection; and (3) their rescaling factors are fixed as constants generally, thereby ignoring the synergistic effect among vibration signals, potential structures and rescaling factors. These three shortcomings have limited the enhancement ability of SR. To explore the SR potential, this paper initially investigates the SR in a multistable system by calculating its output spectral amplification, further analyzes its output frequency response numerically, then examines the effect of both damping and rescaling factors on output responses and finally presents a promising underdamped SR method with stable-state matching for incipient bearing fault diagnosis. This method has three advantages: (1) the diversity of stable-state types in a multistable potential makes it easy to match with various vibration signals; (2) the underdamped multistable SR, equivalent to a moving nonlinear bandpass filter that is dependent on the rescaling factors, is able to suppress the multiscale noise; and (3) the synergistic effect among vibration signals, potential structures and rescaling and damping factors is achieved using quantum genetic algorithms whose fitness functions are new weighted signal-to-noise ratio (WSNR) instead of SNR. Therefore, the proposed method is expected to possess good enhancement ability. Simulated and experimental data of rolling element bearings demonstrate its effectiveness. The comparison results show that the proposed method is able to obtain higher amplitude at target frequency and larger output WSNR, and performs better than traditional SR methods.
机译:大多数传统的过阻尼单稳态,双稳态甚至三稳态随机共振(SR)方法在弱特征提取中都有三个缺点:(1)其具有单一稳态类型特征的潜在结构不足以与复杂多样的机械振动信号相匹配; (2)它们很容易受到多尺度噪声的干扰,并且在很大程度上取决于主观选择参数的高通滤波器的帮助,可能导致错误检测; (3)它们的缩放因子通常固定为常数,从而忽略了振动信号,潜在结构和缩放因子之间的协同效应。这三个缺点限制了SR的增强能力。为了探索SR的潜力,本文首先通过计算其输出频谱放大率来研究多稳态系统中的SR,然后进一步数值分析其输出频率响应,然后研究阻尼和缩放因子对输出响应的影响,最后提出有希望的欠阻尼稳态匹配的SR方法用于轴承初始故障诊断。该方法具有三个优点:(1)在多稳态电势中稳态类型的多样性使其易于匹配各种振动信号; (2)欠阻尼的多稳态SR等效于依赖于缩放因子的移动非线性带通滤波器,能够抑制多尺度噪声; (3)使用适合度函数为新的加权信噪比(WSNR)而不是SNR的量子遗传算法,实现了振动信号,潜在结构以及缩放和阻尼因子之间的协同效应。因此,预期该方法具有良好的增强能力。滚动轴承的仿真和实验数据证明了其有效性。比较结果表明,该方法能够在目标频率下获得更高的幅度,并具有更大的输出WSNR,并且比传统的SR方法具有更好的性能。

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