Hu Jing, Tung Wen-wen, Gao Jianbo, Cao Yinhe
Department of Electrical and Computer Engineering, University of Florida, Gainesville, Florida 32611, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2005 Nov;72(5 Pt 2):056207. doi: 10.1103/PhysRevE.72.056207. Epub 2005 Nov 14.
In time series analysis, it has been considered of key importance to determine whether a complex time series measured from the system is regular, deterministically chaotic, or random. Recently, Gottwald and Melbourne have proposed an interesting test for chaos in deterministic systems. Their analyses suggest that the test may be universally applicable to any deterministic dynamical system. In order to fruitfully apply their test to complex experimental data, it is important to understand the mechanism for the test to work, and how it behaves when it is employed to analyze various types of data, including those not from clean deterministic systems. We find that the essence of their test can be described as to first constructing a random walklike process from the data, then examining how the variance of the random walk scales with time. By applying the test to three sets of data, corresponding to (i) 1/falpha noise with long-range correlations, (ii) edge of chaos, and (iii) weak chaos, we show that the test mis-classifies (i) both deterministic and weakly stochastic edge of chaos and weak chaos as regular motions, and (ii) strongly stochastic edge of chaos and weak chaos, as well as 1/falpha noise as deterministic chaos. Our results suggest that, while the test may be effective to discriminate regular motion from fully developed deterministic chaos, it is not useful for exploratory purposes, especially for the analysis of experimental data with little a priori knowledge. A few speculative comments on the future of multiscale nonlinear time series analysis are made.
在时间序列分析中,确定从系统测量得到的复杂时间序列是规则的、确定性混沌的还是随机的,被认为至关重要。最近,戈特瓦尔德和墨尔本提出了一种针对确定性系统中混沌的有趣检验方法。他们的分析表明,该检验可能普遍适用于任何确定性动力系统。为了有效地将他们的检验应用于复杂的实验数据,理解检验起作用的机制以及在用于分析各种类型的数据(包括那些并非来自纯净确定性系统的数据)时的表现非常重要。我们发现,他们检验的本质可以描述为首先从数据构建一个类似随机游走的过程,然后考察随机游走的方差如何随时间变化。通过将该检验应用于三组数据,分别对应(i)具有长程相关性的1/fα噪声,(ii)混沌边缘,以及(iii)弱混沌,我们表明该检验会将(i)确定性和弱随机的混沌边缘以及弱混沌误分类为规则运动,并且(ii)强随机的混沌边缘和弱混沌以及1/fα噪声误分类为确定性混沌。我们的结果表明,虽然该检验可能有效地将规则运动与充分发展的确定性混沌区分开来,但它对于探索性目的并无用处,尤其是对于几乎没有先验知识的实验数据分析。我们对多尺度非线性时间序列分析的未来提出了一些推测性评论。