检测非平稳信号的周期性行为

V. Venkatachalam, J. Aravena
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引用次数: 5

摘要

本文介绍了非平稳信号的多分辨率分析结果,目的是检测潜在的周期现象。采用系数阈值法进行小波包分析是检测的基础。通过对潮汐微观环境下沉积物电化学氧化还原电位的实验数据分析,说明了该方法的有效性。该技术的意义在于,它可以从被灾难性和随机事件破坏的实验数据中提取周期现象,提供基本周期分量的特征,并给出偏离周期行为的程度的估计。因此,它在分析准周期信号(如心电图)中具有潜在的应用,其中准周期性程度的确定至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting periodic behaviour in nonstationary signals
This paper presents results on the multiresolution analysis of nonstationary signals with the objective of detecting underlying periodic phenomena. Wavelet packet analysis with coefficient thresholding is the basis for the detection. The effectiveness of the method is illustrated by analyzing experimental data on sediment electrochemical redox potential in a tidal microcosm. The significance of the technique is that it can extract periodic phenomena from experimental data corrupted by catastrophic and random events, provide a signature of the basic periodic component, and give an estimate of the degree of deviation from periodic behaviour. Consequently, it has potential applications in the analysis of quasi-periodic signals such as electrocardiograms (ECGs), where the determination of the extent of quasi-periodicity is of critical importance.
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