Fault diagnosis for rolling bearing early fault based on standardization transformation stochastic resonance

Ming-Ming Zhu, L. Jia, Xiukun Wei
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引用次数: 1

Abstract

It is very hard to detect the early fault of rolling bearing with classical methods when the fault signal energy is too low and the noise is too strong. Stochastic resonance (SR) theory is a method to enhance the weak signal submerged in strong noise. But classic SR is hard applied to practice for large parameters problem. The existing large parameter stochastic resonance models (LPSR) need either high sampling frequency or long sampling data length. A novel method named standardization transformation stochastic resonance (STSR) is proposed in this paper to solve the large parameter problem with low sampling frequency and short sampling data length. The proposed STSR is compared with other two LPSR models by simulation. A novel fault diagnosis for rolling bearing early fault based on STSR is also proposed in this paper. It is applied to detecting the early fault of a deep groove ball rolling bearing successfully. The practical application and the contrast between the other two LPSR methods verify the effectiveness of fault diagnosis for rolling bearing early fault based on STSR.
基于标准化变换随机共振的滚动轴承早期故障诊断
当故障信号能量过低、噪声太强时,用经典方法很难检测到滚动轴承的早期故障。随机共振理论是一种增强淹没在强噪声中的弱信号的方法。但是经典SR很难应用于大参数问题的实践。现有的大参数随机共振模型要么需要较高的采样频率,要么需要较长的采样数据长度。针对采样频率低、采样数据长度短的大参数问题,提出了标准化变换随机共振(STSR)方法。通过仿真比较了本文提出的两种LPSR模型。本文还提出了一种基于STSR的滚动轴承早期故障诊断方法。将其成功地应用于深沟球滚动轴承的早期故障检测。实际应用和其他两种LPSR方法的对比验证了基于STSR的滚动轴承早期故障诊断的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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