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Feature Enhancement via Balanced Non-convex Regularization for Rotary Machine Fault Diagnosis

机译:通过平衡非凸正常化进行旋转机器故障诊断功能增强

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Feature detection from compound vibration signal is a fundamental task for rotary machine fault diagnosis. Dual synthesis sparse decomposition (DSSD) based on convex regularization is an effective framework for signal decomposition and feature detection. However, the decomposed components via convex regularization are often underestimated, which is unfavorable to feature detection. Therefore, this paper describes and analyzes a novel dual enhanced sparse decomposition (DESD) framework based on the balanced decomposition model and non-convex regularization. The balanced model bridges the synthesis-based and analysis-based model, and balances the fidelity, sparsity, and smoothness of the solution. Besides, the non-convex minimax-concave (MC) penalty is used as the regularization terms in the framework to better estimate the signal values than convex regularization. The proposed framework is formulated as a minimization problem involving a data fidelity term, two balanced regularization terms and two synthesis non-convex regularization terms on wavelet-domain sparsity. Then, the proposed framework is solved by a variable splitting strategy and alternating direction method of multiplier (ADMM). Moreover, adaptive selection rules for the regularization parameters are investigated in detail through the comprehensive numerical studies. Numerical simulations and experimental signal analysis validate that the proposed method has better performance than the DSSD method with convex regularization on the feature enhancement and detection.
机译:复合振动信号的特征检测是旋转机器故障诊断的基本任务。基于凸正规化的双合成稀疏分解(DSSD)是信号分解和特征检测的有效框架。然而,通过凸正规化的分解组分通常被低估,这是不利的特征检测。因此,本文介绍并分析了基于平衡分解模型和非凸正则化的新型双重增强稀疏分解(DESD)框架。平衡模型桥接基于合成和基于分析的模型,并平衡解决方案的保真度,稀疏性和平滑度。此外,非凸极限凹入(MC)惩罚用作框架中的正则化术语,以更好地估计比凸正规化的信号值。该框架被制定为涉及数据保真术语,两个平衡正则化术语和两种合成非凸正则化术语的最小化问题。然后,通过乘法器(ADMM)的可变分割策略和交替方向方法来解决所提出的框架。此外,通过综合数值研究详细研究了正则化参数的自适应选择规则。数值模拟和实验信号分析验证了所提出的方法比具有凸正则化的DSSD方法更好的性能,在特征增强和检测中。

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