Department of Astronomy and Physics, Lycoming College, Williamsport, Pennsylvania 17701, USA.
Chaos. 2013 Sep;23(3):033110. doi: 10.1063/1.4813865.
Recently, Wiebe and Virgin [Chaos 22, 013136 (2012)] developed an algorithm which detects chaos by analyzing a time series' power spectrum which is computed using the Discrete Fourier Transform (DFT). Their algorithm, like other time series characterization algorithms, requires that the time series be regularly sampled. Real-world data, however, are often irregularly sampled, thus, making the detection of chaotic behavior difficult or impossible with those methods. In this paper, a characterization algorithm is presented, which effectively detects chaos in irregularly sampled time series. The work presented here is a modification of Wiebe and Virgin's algorithm and uses the Lomb-Scargle Periodogram (LSP) to compute a series' power spectrum instead of the DFT. The DFT is not appropriate for irregularly sampled time series. However, the LSP is capable of computing the frequency content of irregularly sampled data. Furthermore, a new method of analyzing the power spectrum is developed, which can be useful for differentiating between chaotic and non-chaotic behavior. The new characterization algorithm is successfully applied to irregularly sampled data generated by a model as well as data consisting of observations of variable stars.
最近,Wiebe 和 Virgin [Chaos 22, 013136 (2012)] 开发了一种算法,通过分析使用离散傅里叶变换 (DFT) 计算的时间序列的功率谱来检测混沌。他们的算法与其他时间序列特征化算法一样,要求时间序列进行规则采样。然而,实际数据通常是不规则采样的,因此,这些方法很难或不可能检测到混沌行为。在本文中,提出了一种有效的算法,可以有效地检测不规则采样时间序列中的混沌。本文的工作是对 Wiebe 和 Virgin 算法的修改,使用 Lomb-Scargle 周期图 (LSP) 代替 DFT 来计算序列的功率谱。DFT 不适用于不规则采样的时间序列。然而,LSP 能够计算不规则采样数据的频率内容。此外,还开发了一种分析功率谱的新方法,该方法可用于区分混沌和非混沌行为。新的特征化算法成功地应用于由模型生成的不规则采样数据以及由变星观测组成的数据。