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Sparsity-aware tight frame learning for rotary machine fault diagnosis

机译:稀疏感知紧密框架学习用于旋转机械故障诊断

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It is a challenging problem to find sufficiently sparse approximation dictionaries tailed to machine vibration signals with different failure modes. Therefore, this paper describes and analyzes a novel tight frame learning scheme for machine fault diagnosis. The objective cost is evolved by integrating the tight frame constraint into the popular dictionary learning model. The resulting tight frame design strategy thus could be formulated as a nonconvex optimization problem which can be solved by alternatively implementing hard thresholding operation and singular value decomposition. Then, fault information is sparsely represented over the learned dictionary and could be effectively detected through sparse pursuit techniques. Compared with the state of the art analytic wavelet tight frame, the proposed algorithm has two main advantages: firstly, the tight frame filters are directly learned from the noisy signals and thus the sparse intrinsic structures of feature information could be profoundly captured. Secondly, sparse level of representation coefficients is promoted largely and the process of extracting fault feature information is highly adaptive. Moreover, the performance of the proposed framework is evaluated through numerical experiments and its superiority with respect to the analytic wavelet tight frame is further demonstrated through performing the diagnosis of an engineering gearbox.
机译:找到足够稀疏的近似字典来处理具有不同故障模式的振动信号是一个具有挑战性的问题。因此,本文描述并分析了一种新的用于机器故障诊断的紧密框架学习方案。通过将紧框架约束集成到流行的字典学习模型中,可以演化出目标成本。因此,可以将最终的紧密框架设计策略表述为非凸优化问题,可以通过交替执行硬阈值运算和奇异值分解来解决。然后,将故障信息稀疏地表示在所学习的词典上,并且可以通过稀疏追踪技术对其进行有效检测。与现有技术的解析小波紧框架相比,该算法具有两个主要优点:首先,直接从噪声信号中学习紧框架滤波器,从而可以深刻地捕获特征信息的稀疏内在结构。其次,极大地提高了表示系数的稀疏程度,并且提取故障特征信息的过程具有高度的适应性。此外,通过数值实验评估了所提出框架的性能,并通过执行工程齿轮箱的诊断进一步证明了其相对于解析小波紧框架的优越性。

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