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A new music-empirical wavelet transform methodology for time-frequency analysis of noisy nonlinear and non-stationary signals

机译:一种新的音乐-经验小波变换方法,用于时频分析有噪声的非线性和非平稳信号

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摘要

The goal of signal processing is to estimate the contained frequencies and extract subtle changes in the signals. In this paper, a new adaptive multiple signal classification-empirical wavelet transform (MUSIC-EWT) methodology is presented for accurate time-frequency representation of noisy non-stationary and nonlinear signals. It uses the MUSIC algorithm to estimate the contained frequencies in the signal and build the appropriate boundaries to create the wavelet filter bank. Then, the EWT decomposes the time series signal into a set of frequency bands according to the estimated boundaries. Finally, the Hilbert transform is applied to observe the evolution of calculated frequency bands over time. The usefulness and effectiveness of the proposed methodology are validated using two simulated signals and an ECG signal obtained experimentally. The results demonstrate clearly that the proposed methodology is immune to noise and capable of estimating the optimal boundaries to isolate the frequencies from noise and estimate the main frequencies with high accuracy, especially the closely-spaced frequencies. (C) 2015 Elsevier Inc. All rights reserved.
机译:信号处理的目的是估计包含的频率并提取信号中的细微变化。本文提出了一种新的自适应多信号分类-经验小波变换(MUSIC-EWT)方法,用于噪声和非平稳信号的准确时频表示。它使用MUSIC算法估计信号中包含的频率,并建立适当的边界以创建小波滤波器组。然后,EWT根据估计的边界将时间序列信号分解为一组频带。最后,希尔伯特变换用于观察计算的频带随时间的演变。使用两个模拟信号和通过实验获得的ECG信号验证了所提出方法的有效性和有效性。结果清楚地表明,所提出的方法不受噪声影响,并且能够估计最佳边界以将频率与噪声隔离并以高精度估计主要频率,尤其是紧密间隔的频率。 (C)2015 Elsevier Inc.保留所有权利。

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