A weighted nonconvex sparse representation with high-pass filter function for fault diagnosis of rolling bearing

Yuanhang Sun, Jianbo Yu
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Abstract

Vibration signal analysis is one of the most effective and convenient method for fault diagnosis in rolling bearing. A challenging problem is how to extract the fault features from the noisy signal accurately. In this paper, a novel sparse representation algorithm, a weighted nonconvex sparse representation with high-pass filter function (WNCSR-HPF) is proposed for bearing fault feature extraction. WNCSR-HPF is developed based on a weighted nonconvex sparse regularization term, which can remove the noise interference and promote sparsity. Moreover, an adaptive setup method of regularization parameter is proposed for improving the applicability of WNCSR-HPF. The majorization-minimization (MM)-based algorithm is developed for solving the objective optimization problem in this paper. A simulation signal and a bearing vibration signal are used to illustrate the effectiveness of WNCSR-HPF for fault feature extraction. The experimental results show that WNCSR-HPF has the good performance on the fault feature extraction.
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基于高通滤波函数的加权非凸稀疏表示滚动轴承故障诊断
振动信号分析是滚动轴承故障诊断中最有效、最便捷的方法之一。如何准确地从噪声信号中提取故障特征是一个具有挑战性的问题。本文提出了一种新的稀疏表示算法——带高通滤波函数的加权非凸稀疏表示(WNCSR-HPF),用于轴承故障特征提取。WNCSR-HPF基于加权非凸稀疏正则化项,可以去除噪声干扰,提高稀疏性。为了提高WNCSR-HPF的适用性,提出了一种正则化参数的自适应设置方法。针对目标优化问题,提出了一种基于最大-最小的算法。仿真信号和轴承振动信号验证了WNCSR-HPF在故障特征提取中的有效性。实验结果表明,WNCSR-HPF在故障特征提取方面具有良好的性能。
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