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Synthesis versus analysis priors via generalized minimax- concave penalty for sparsity-assisted machinery fault diagnosis

机译:通过广义最小且稀疏机械故障诊断的透明最小距离综合与分析前沿

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摘要

Sparse priors for signals play a key role in sparse signal modeling, and sparsity-assisted signal processing techniques have been studied widely for machinery fault diagnosis. In this paper, synthesis and analysis priors are introduced for sparse regularization problems via the generalized minimax-concave (GMC) penalty to improve the performance of signal denoising or signal decomposition for the purpose of machinery fault diagnosis. Firstly, the GMC-synthesis and GMC-analysis methods are proposed simultaneously for sparse regularization. Secondly, the gap between GMC-synthesis and GMC-analysis is explored systematically via theoretical and numerical analysis, especially via comparing the performance of GMC-synthesis and GMC-analysis for machinery fault diagnosis, including bearing fault diagnosis and gearbox fault diagnosis. Thirdly, a majorization-minimization-like (MM-like) algorithm is proposed to solve the optimization problem of GMC-synthesis and GMC-analysis. Furthermore, the early stop criterion and the adaptive strategy for regularization parameter selection is also provided in this paper. The results of the numerical simulation, experiment verification, and practical applications show that GMC-synthesis performs better for fault feature extraction than GMC-analysis and the other methods, including l(1)-synthesis, l(1)-analysis, and spectral kurtosis. (C) 2019 Elsevier Ltd. All rights reserved.
机译:用于信号的稀疏电视在稀疏信号建模中发挥关键作用,并且已经广泛研究了稀疏辅助信号处理技术以进行机械故障诊断。在本文中,通过广义最低限度凹版(GMC)惩罚引入了用于稀疏正则化问题的合成和分析前沿,以提高信号去噪或信号分解的性能,以实现机械故障诊断。首先,同时提出GMC合成和GMC分析方法,以稀疏正则化。其次,通过理论和数值分析系统地探讨了GMC合成和GMC分析之间的差距,特别是通过比较GMC合成和GMC分析的机械故障诊断,包括轴承故障诊断和变速箱故障诊断。第三,提出了一种多大化最小化(MM类似)算法来解决GMC合成和GMC分析的优化问题。此外,本文还提供了早期停止标准和正则化参数选择的自适应策略。数值模拟,实验验证和实际应用的结果表明,GMC合成比GMC分析和其他方法对故障特征提取更好,包括L(1) - 合成,L(1) - 分析和光谱Kurtosis。 (c)2019 Elsevier Ltd.保留所有权利。

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