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Sparsity-aware tight frame learning with adaptive subspace recognition for multiple fault diagnosis

机译:稀疏感知紧密帧学习与自适应子空间识别,用于多故障诊断

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摘要

It is a challenging problem to design excellent dictionaries to sparsely represent diverse fault information and simultaneously discriminate different fault sources. Therefore, this paper describes and analyzes a novel multiple feature recognition framework which incorporates the tight frame learning technique with an adaptive subspace recognition strategy. The proposed framework consists of four stages. Firstly, by introducing the tight frame constraint into the popular dictionary learning model, the proposed tight frame learning model could be formulated as a nonconvex optimization problem which can be solved by alternatively implementing hard thresholding operation and singular value decomposition. Secondly, the noises are effectively eliminated through transform sparse coding techniques. Thirdly, the denoised signal is decoupled into discriminative feature subspaces by each tight frame filter. Finally, in guidance of elaborately designed fault related sensitive indexes, latent fault feature subspaces can be adaptively recognized and multiple faults are diagnosed simultaneously. Extensive numerical experiments are sequently implemented to investigate the sparsifying capability of the learned tight frame as well as its comprehensive denoising performance. Most importantly, the feasibility and superiority of the proposed framework is verified through performing multiple fault diagnosis of motor bearings. Compared with the state-of-the-art fault detection techniques, some important advantages have been observed: firstly, the proposed framework incorporates the physical prior with the data-driven strategy and naturally multiple fault feature with similar oscillation morphology can be adaptively decoupled. Secondly, the tight frame dictionary directly learned from the noisy observation can significantly promote the sparsity of fault features compared to analytical tight frames. Thirdly, a satisfactory complete signal space description property is guaranteed and thus weak feature leakage problem is avoided compared to typical learning methods.
机译:设计出色的词典来稀疏表示各种故障信息并同时区分不同的故障源是一个具有挑战性的问题。因此,本文描述并分析了一种新颖的多特征识别框架,该框架结合了紧密框架学习技术和自适应子空间识别策略。拟议的框架包括四个阶段。首先,通过将紧框架约束引入流行的字典学习模型中,可以将提出的紧框架学习模型表示为非凸优化问题,可以通过交替执行硬阈值运算和奇异值分解来解决。其次,通过变换稀疏编码技术有效地消除了噪声。第三,每个紧密帧滤波器将去噪后的信号解耦到鉴别特征子空间。最后,在精心设计的与故障相关的敏感指标的指导下,可以自适应地识别潜在的故障特征子空间,并同时诊断多个故障。随后进行了广泛的数值实验,以研究所学习的紧框架的稀疏能力及其综合降噪性能。最重要的是,通过对电机轴承进行多次故障诊断,验证了所提出框架的可行性和优越性。与最新的故障检测技术相比,已经观察到了一些重要的优点:首先,所提出的框架将物理先验与数据驱动策略结合在一起,并且自然可以自适应地解耦具有相似振荡形态的多个故障特征。其次,与分析紧框架相比,从噪声观察中直接学习的紧框架字典可以显着提高故障特征的稀疏性。第三,与常规学习方法相比,保证了令人满意的完整信号空间描述特性,从而避免了弱特征泄漏问题。

著录项

  • 来源
    《Mechanical systems and signal processing》 |2017年第9期|499-524|共26页
  • 作者单位

    State Key Laboratory for Manufacturing Systems Engineering, Xi'an Jiaotong University, Xi'an 710049, China,Collaborative Innovation Center of High-End Manufacturing Equipment, Xi'an Jiaotong University, Xi'an 710054, China;

    State Key Laboratory for Manufacturing Systems Engineering, Xi'an Jiaotong University, Xi'an 710049, China,Collaborative Innovation Center of High-End Manufacturing Equipment, Xi'an Jiaotong University, Xi'an 710054, China;

    State Key Laboratory for Manufacturing Systems Engineering, Xi'an Jiaotong University, Xi'an 710049, China,Department of Mathematics, University of California, Los Angeles, CA 90095, USA;

    State Key Laboratory for Manufacturing Systems Engineering, Xi'an Jiaotong University, Xi'an 710049, China,Collaborative Innovation Center of High-End Manufacturing Equipment, Xi'an Jiaotong University, Xi'an 710054, China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Sparse representation; Dictionary learning; Transform sparse coding; Discriminative indexes; Nonconvex optimization; Multiple feature decoupling;

    机译:稀疏表示;字典学习;变换稀疏编码;判别指标;非凸优化;多特征去耦;

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