基于最小二乘误差的时变加权经验模态分解优化信号重构

Aydin Kizilkaya, M. D. Elbi, Ali Kirkbas
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引用次数: 2

摘要

经验模态分解(EMD)是一种有效的非线性和非平稳信号分析工具。将此工具应用于任何给定的信号,会发现一组有限的振荡模式,称为本征模态函数(IMFs)和残差。所有提取的imf和残差之和重建原始信号,没有任何信息损失。虽然EMD满足完美的重构特性,但它并不基于任何最优性准则。这是一个重要的问题,特别是在使用EMD从其噪声版本重建原始信号时。此时,需要一种更灵活的EMD形式。关于这个问题,最近只开发了几个公式。除此之外,本文还提出了一种新的信号重构算法——时变加权EMD算法。该算法在最小二乘误差意义上是最优的,并试图通过时变加权IMFs和残差信号的和来重建原始信号。仿真结果表明,该算法在去噪后重建期望信号方面优于现有算法。
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Least-squares error based optimal signal reconstruction using time-varying weighted empirical mode decomposition
The empirical mode decomposition (EMD) is a popular tool that is valid for nonlinear and nonstationary signal analysis. Applying this tool to any given signal reveals a finite set of oscillatory modes termed intrinsic mode functions (IMFs) and a residual. The sum of all extracted IMFs and the residual reconstructs the original signal without any information loss. Although the EMD satisfies the perfect reconstruction property, it is not based on any optimality criterion. This is an important issue especially in using the EMD for reconstructing the original signal from its noisy versions. At this point, a more flexible form of the EMD is required. Related to this issue, recently, only a few formulations are developed. In addition to these ones, in this paper, a new signal reconstruction algorithm termed time-varying weighted EMD is proposed. This algorithm is optimal in the least-squares error sense and tries to reconstruct the original signal by the sum of time-varying weighted IMFs and residual signal. It is demonstrated by simulations that the proposed algorithm introduces superior performance than that of the existing ones in reconstructing the desired signal after denoising.
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