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基于凸优化的三元经验模态分解在滚动轴承状态识别中的应用。

Trivariate Empirical Mode Decomposition via Convex Optimization for Rolling Bearing Condition Identification.

机构信息

Key Laboratory of Metallurgical Equipment and Control Technology, Wuhan University of Science and Technology, Ministry of Education, Wuhan 430081, China.

Hubei Key Laboratory of Mechanical Transmission and Manufacturing Engineering, Wuhan University of Science and Technology, Wuhan 430081, China.

出版信息

Sensors (Basel). 2018 Jul 18;18(7):2325. doi: 10.3390/s18072325.

Abstract

As a multichannel signal processing method based on data-driven, multivariate empirical mode decomposition (MEMD) has attracted much attention due to its potential ability in self-adaption and multi-scale decomposition for multivariate data. Commonly, the uniform projection scheme on a hypersphere is used to estimate the local mean. However, the unbalanced data distribution in high-dimensional space often conflicts with the uniform samples and its performance is sensitive to the noise components. Considering the common fact that the vibration signal is generated by three sensors located in different measuring positions in the domain of the structural health monitoring for the key equipment, thus a novel trivariate empirical mode decomposition via convex optimization was proposed for rolling bearing condition identification in this paper. For the trivariate data matrix, the low-rank matrix approximation via convex optimization was firstly conducted to achieve the denoising. It is worthy to note that the non-convex penalty function as a regularization term is introduced to enhance the performance. Moreover, the non-uniform sample scheme was determined by applying singular value decomposition (SVD) to the obtained low-rank trivariate data and then the approach used in conventional MEMD algorithm was employed to estimate the local mean. Numerical examples of synthetic defined by the fault model and real data generated by the fault rolling bearing on the experimental bench are provided to demonstrate the fruitful applications of the proposed method.

摘要

作为一种基于数据驱动的多通道信号处理方法,多元经验模态分解(MEMD)由于其在多变量数据的自适应和多尺度分解方面的潜在能力而受到广泛关注。通常,使用超球面上的均匀投影方案来估计局部均值。然而,高维空间中数据分布的不平衡经常与均匀样本发生冲突,并且其性能对噪声分量很敏感。考虑到振动信号通常是由结构健康监测领域中位于不同测量位置的三个传感器产生的这一常见事实,因此本文提出了一种通过凸优化进行的新型三元经验模态分解方法,用于滚动轴承的状态识别。对于三元数据矩阵,首先通过凸优化进行低秩矩阵逼近,以实现去噪。值得注意的是,引入了非凸惩罚函数作为正则项,以增强性能。此外,通过对获得的低秩三元数据应用奇异值分解(SVD)来确定非均匀样本方案,然后采用传统 MEMD 算法中的方法来估计局部均值。通过故障模型定义的合成数值示例和实验台上的故障滚动轴承生成的实际数据,验证了所提出方法的有益应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1cf4/6069037/00b76d9d7d72/sensors-18-02325-g001.jpg

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