懒小波和DCT在振动信号压缩中的应用

A. Okassa, J. P. Ngantcha, A. Ndtoungou, P. Ele
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引用次数: 1

摘要

在这项研究中,我们压缩和解压缩振动信号从球轴承的功能。本文采用的压缩振动数据的方法是通过减少样本的频谱冗余来减小数据的大小。我们已经使用了DCT,这是公认的代表性的简约和漂白能力。为了减少算法的执行时间,我们使用了Lazy小波。这个小波将原始信号分成两个大小为原始信号一半的信号。对原始信号的两半进行并行处理,减少了算法的计算量。我们在相同的量化和编码条件下分别使用三种压缩算法测试(压缩然后解压缩)这些信号。这些是基于DCT、WHT和与DCT相关的懒小波的算法。在测量信噪比、MFD、MSE、PRD和CR的基础上进行的比较允许保留基于使用Lazy小波和离散余弦变换的算法。结果被认为是非常令人鼓舞的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Lazy Wavelet and DCT for Vibration Signal Compression
In this study, we compress and decompress the vibration signals from the functioning of a ball bearing. The methodology used to compress the vibration data in this study is to reduce the size of the data by reducing the spectral redundancy of the samples. We have used the DCT, which is recognized for its representational parsimony and bleaching power. To reduce the execution time of the algorithm, we used the Lazy wavelet. This wavelet separates the original signal into two signals half the size of the original signal. Parallel processing of two halves of the original signal reduces the computational load of the algorithm. We tested (compressed and then decompressed) these signals using three compression algorithms separately under the same quantification and coding conditions. These are the algorithms based on DCT, WHT and the Lazy Wavelet associated with DCT. The comparison made on the basis of the measurements of SNR, MFD, MSE, PRD and CR allowed to retain the algorithm based on the use of the Lazy wavelet and the discrete cosine transform. The results are considered very encouraging.
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