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TQWT-based multi-scale dictionary learning for rotating machinery fault diagnosis

机译:基于TQWT的多尺度字典学习旋转机械故障诊断

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摘要

It is a challenging problem to extract periodic impulses submerged in the heavy background noise for fault diagnosis of rotating machinery. Thus, in this paper, we propose a novel algorithm named tunable Q-factor wavelet transform(TQWT)-based multi-scale dictionary learning for dealing with this problem. The algorithm exploits TQWT to decompose the measured vibration signal into different scales, and then it adopts K-SVD which can also be replaced with other more efficient dictionary learning algorithm to learn dictionaries at different scales. Once done, it employs a global maximum a posteriori estimator and inverse TQWT to extract feature signal. By comparison with TQWT-denoising and K-SVD-denoising, the proposed algorithm enjoys two main advantages: 1) the dictionaries learnt by our algorithm have the multi-scale characteristic which is essential to deal with non-stationary signal. 2) the dictionaries are learnt from noisy signals itself and thus are adaptive to different types of feature information. Effectiveness of our proposed algorithm is demonstrated by numerical simulation and fault diagnosis of motor bearing.
机译:提取在重型背景噪声中浸没在旋转机械故障诊断中的周期性冲击是一个挑战性问题。因此,在本文中,我们提出了一种名为可调谐Q因子小波变换(TQWT)的新型算法,用于处理此问题的基于多尺度字典学习。该算法利用TQWT将测量的振动信号分解为不同的尺度,然后采用K-SVD,其也可以用其他更有效的字典学习算法替换以在不同尺度处学习词典。一旦完成,它就会使用全局最大的后验估计器和反向TQWT来提取特征信号。通过比较TQWT去噪和K-SVD去噪,所提出的算法享有两个主要优点:1)我们的算法学习的字典具有对处理非静止信号至关重要的多种特性。 2)从嘈杂的信号本身学习该词典,因此对不同类型的特征信息自适应。通过电动机轴承的数值模拟和故障诊断,证明了我们所提出的算法的有效性。

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