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首页> 外文期刊>Journal of Sound and Vibration >Weighted low-rank sparse model via nuclear norm minimization for bearing fault detection
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Weighted low-rank sparse model via nuclear norm minimization for bearing fault detection

机译:通过核规范最小化对轴承故障检测的加权低级稀疏模型

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It is a fundamental task in the machine fault diagnosis community to detect impulsive signatures generated by the localized faults of bearings. The main goal of this paper is to exploit the low-rank physical structure of periodic impulsive features and further establish a weighted low-rank sparse model for bearing fault detection. The proposed model mainly consists of three basic components: an adaptive partition window, a nuclear norm regularization and a weighted sequence. Firstly, due to the periodic repetition mechanism of impulsive feature, an adaptive partition window could be designed to transform the impulsive feature into a data matrix. The highlight of partition window is to accumulate all local feature information and align them. Then, all columns of the data matrix share similar waveforms and a core physical phenomenon arises, i.e., these singular values of the data matrix demonstrates a sparse distribution pattern. Therefore, a nuclear norm regularization is enforced to capture that sparse prior. However, the nuclear norm regularization treats all singular values equally and thus ignores one basic fact that larger singular values have more information volume of impulsive features and should be preserved as much as possible. Therefore, a weighted sequence with adaptively tuning weights inversely proportional to singular amplitude is adopted to guarantee the distribution consistence of large singular values. On the other hand, the proposed model is difficult to solve due to its non-convexity and thus a new algorithm is developed to search one satisfying stationary solution through alternatively implementing one proximal operator operation and least-square fitting. Moreover, the sensitivity analysis and selection principles of algorithmic parameters are comprehensively investigated through a set of numerical experiments, which shows that the proposed method is robust and only has a few adjustable parameters. Lastly, the proposed model is applied to the win
机译:它是机器故障诊断群落中的一个基本任务,以检测由轴承局部故障产生的冲动签名。本文的主要目的是利用周期性冲动特征的低级别物理结构,并进一步建立了用于轴承故障检测的加权低级稀疏模型。所提出的模型主要由三个基本组件组成:自适应分区窗口,核规范正则化和加权序列。首先,由于脉冲特征的周期性重复机制,可以设计自适应分区窗口以将脉冲特征转换为数据矩阵。分区窗口的亮点是累计所有本地特征信息并对齐它们。然后,数据矩阵的所有列共享相似的波形和核心物理现象,即数据矩阵的这些奇异值演示了稀疏的分布模式。因此,强制执行核规范规则,以捕获此稀疏性。然而,核规范正规平均处理所有奇值值,因此忽略了一个基本事实,即较大的奇异值具有更多信息脉冲特征的信息,并且应尽可能地保存。因此,采用具有与奇异幅度成反比的自适应调谐重量的加权序列来保证大量奇异值的分布一致。另一方面,由于其非凸度,难以解决所提出的模型,因此开发了一种新的算法,以通过替代地实现一个近端操作员操作和最小二乘配件来搜索一个满足固定解决方案的算法。此外,通过一组数值实验综合研究了算法参数的灵敏度分析和选择原理,这表明所提出的方法是坚固的,并且仅具有少量可调参数。最后,所提出的模型适用于胜利

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