用谐波分解增强非平稳信号缺失数据的输入

Joaquin Ruiz, Hau-tieng Wu, Marcelo A. Colominas
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引用次数: 0

摘要

处理具有缺失值的时间序列,包括那些受低质量或过饱和影响的时间序列,是一个重大的信号处理挑战。恢复这些缺失值的任务,被称为imputation,已经导致了几种算法的发展。然而,我们已经观察到,当时间序列表现出非平稳振荡行为时,这些算法的有效性趋于降低。在本文中,我们引入了一种新的算法——谐波电平插值(HaLI),它提高了现有的振荡时间序列插值算法的性能。在运行任意选择的输入算法后,HaLI利用基于初始输入的自适应非谐波模型的谐波分解来提高振荡时间序列的输入精度。对合成信号和真实信号进行的实验评估一致表明,ali增强了现有估算算法的性能。该算法作为易于使用的Matlab代码公开提供给其他研究人员使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Missing Data Imputation of Non-stationary Signals with Harmonic Decomposition
Dealing with time series with missing values, including those afflicted by low quality or over-saturation, presents a significant signal processing challenge. The task of recovering these missing values, known as imputation, has led to the development of several algorithms. However, we have observed that the efficacy of these algorithms tends to diminish when the time series exhibit non-stationary oscillatory behavior. In this paper, we introduce a novel algorithm, coined Harmonic Level Interpolation (HaLI), which enhances the performance of existing imputation algorithms for oscillatory time series. After running any chosen imputation algorithm, HaLI leverages the harmonic decomposition based on the adaptive nonharmonic model of the initial imputation to improve the imputation accuracy for oscillatory time series. Experimental assessments conducted on synthetic and real signals consistently highlight that HaLI enhances the performance of existing imputation algorithms. The algorithm is made publicly available as a readily employable Matlab code for other researchers to use.
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