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基于分段非对称双稳系统中随机共振的增强故障诊断

Enhanced fault diagnosis via stochastic resonance in a piecewise asymmetric bistable system.

作者信息

Li Yongge, Zhu Qixiao, Xu Yong, Tian Ruilan

机构信息

School of Mathematics and Statistics, Northwestern Polytechnical University, Xi'an 710072, China.

MOE Key Laboratory for Complexity Science in Aerospace, Northwestern Polytechnical University, Xi'an 710072, China.

出版信息

Chaos. 2024 Jan 1;34(1). doi: 10.1063/5.0188335.

Abstract

Weak fault signals are often overwhelmed by strong noise or interference. The key issue in fault diagnosis is to accurately extract useful fault characteristics. Stochastic resonance is an important signal processing method that utilizes noise to enhance weak signals. In this paper, to address the issues of output saturation and imperfect optimization of potential structure models in classical bistable stochastic resonance (CBSR), we propose a piecewise asymmetric stochastic resonance system. A two-state model is used to theoretically derive the output signal-to-noise ratio (SNR) of the bistable system under harmonic excitations, which is compared with the SNR of CBSR to demonstrate the superiority of the method. The method is then applied to fault data. The results indicate that it can achieve a higher output SNR and higher spectral peaks at fault characteristic frequencies/orders, regardless of whether the system operates under fixed or time-varying speed conditions. This study provides new ideas and theoretical guidance for improving the accuracy and reliability of fault diagnosis technology.

摘要

微弱故障信号常常被强噪声或干扰所淹没。故障诊断中的关键问题是准确提取有用的故障特征。随机共振是一种利用噪声增强微弱信号的重要信号处理方法。本文针对经典双稳随机共振(CBSR)中存在的输出饱和以及势阱结构模型优化不完善的问题,提出了一种分段非对称随机共振系统。采用二态模型从理论上推导了双稳系统在谐波激励下的输出信噪比(SNR),并与CBSR的SNR进行比较以证明该方法的优越性。然后将该方法应用于故障数据。结果表明,无论系统在固定转速还是时变转速条件下运行,该方法都能在故障特征频率/阶次处实现更高的输出SNR和更高的频谱峰值。本研究为提高故障诊断技术的准确性和可靠性提供了新的思路和理论指导。

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