Fractal Analysis of Time-Series Data Sets: Methods and Challenges

I. Pilgrim, Richard J. K. Taylor
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引用次数: 19

Abstract

Many methods exist for quantifying the fractal characteristics of a structure via a fractal dimension. As a traditional example, a fractal dimension of a spatial fractal structure may be quantified via a box-counting fractal analysis that probes a man-ner in which the structure fills space. However, such spatial analyses generally are not well-suited for the analysis of so-called “ time-series ” fractals, which may exhibit exact or statistical self-affinity but which inherently lack well-defined spatial characteristics. In this chapter, we introduce and investigate a variety of fractal analysis techniques directed to time-series structures. We investigate the fidelity of such techniques by applying each technique to sets of computer-generated time-series data sets with well-defined fractal characteristics. Additionally, we investigate the inherent challenges in quantifying fractal characteristics (and indeed of verifying the presence of such fractal characteristics) in time-series traces modeled to resemble physical data sets.
时间序列数据集的分形分析:方法与挑战
有许多方法可以通过分形维数来量化结构的分形特征。作为一个传统的例子,空间分形结构的分形维数可以通过盒计数分形分析来量化,该分形分析探讨了结构填充空间的方式。然而,这种空间分析通常不适合分析所谓的“时间序列”分形,这些分形可能表现出精确或统计上的自亲和性,但本质上缺乏明确的空间特征。在本章中,我们介绍和研究了各种分形分析技术,这些技术是针对时间序列结构的。我们通过将每种技术应用于具有良好定义的分形特征的计算机生成的时间序列数据集集来研究这些技术的保真度。此外,我们研究了在模拟类似物理数据集的时间序列轨迹中量化分形特征(以及验证这种分形特征的存在)的固有挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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