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首页> 外文期刊>Journal of Nondestructive Evaluation >Manifold Learning Using Linear Local Tangent Space Alignment (LLTSA) Algorithm for Noise Removal in Wavelet Filtered Vibration Signal
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Manifold Learning Using Linear Local Tangent Space Alignment (LLTSA) Algorithm for Noise Removal in Wavelet Filtered Vibration Signal

机译:采用线性局部切线空间对准(LLTSA)算法的歧管学习,用于在小波滤波振动信号中噪声去除算法

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摘要

A denoising procedure is proposed to remove both out-band and in-band noise for extraction of weak bursts in signal obtained from defective bearing. Energy of continuous wavelet scalogram is computed and the band having higher energy is selected to remove the out-band noise. Signals of selected band are brought together to form a high-dimensional waveform feature space. Further, low dimensional waveform manifold is formed using linear local tangent space alignment (LLTSA) algorithm to remove in-band noise. A criterion, entitled as frequency factor is also proposed to determine the optimum neighbour size of LLTSA. The two complicated conditions are chosen to demonstrate the effectiveness of the technique in the extraction of bursts in the noisy situations. A significant improvement in the signal to noise ratio is observed when in-band noise is removed using manifold learning by LLTSA algorithm. The experimental result reveals the success of the proposed denoising procedure in extraction of defect features, even in the case of noisy condition.
机译:提出了一种去噪程序,以消除外带和带内噪声,以提取从缺陷轴承获得的信号中的弱爆发。计算连续小波标量程图的能量,选择具有更高能量的频带以去除外带噪声。所选频带的信号被赋予形成高维波形特征空间。此外,使用线性局部切线空间对准(LLTSA)算法形成低尺寸波形歧管以去除带内噪声。还提出了一种标准,其被赋予频率因子以确定LLTSA的最佳邻居大小。选择两个复杂的条件,以证明该技术在嘈杂情况下提取爆发的有效性。当使用LLTSA算法使用歧管学习去除带内噪声时,观察到信噪比的显着改善。实验结果表明,即使在嘈杂的情况下,也揭示了提出的去噪程序提取缺陷特征的成功。

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