Gao J B, Hu J, Tung W W, Cao Y H
Department of Electrical and Computer Engineering, University of Florida, Gainesville, Florida 32611, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2006 Dec;74(6 Pt 2):066204. doi: 10.1103/PhysRevE.74.066204. Epub 2006 Dec 13.
Time series from complex systems with interacting nonlinear and stochastic subsystems and hierarchical regulations are often multiscaled. In devising measures characterizing such complex time series, it is most desirable to incorporate explicitly the concept of scale in the measures. While excellent scale-dependent measures such as epsilon entropy and the finite size Lyapunov exponent (FSLE) have been proposed, simple algorithms have not been developed to reliably compute them from short noisy time series. To promote widespread application of these concepts, we propose an efficient algorithm to compute a variant of the FSLE, the scale-dependent Lyapunov exponent (SDLE). We show that with our algorithm, the SDLE can be accurately computed from short noisy time series and readily classify various types of motions, including truly low-dimensional chaos, noisy chaos, noise-induced chaos, random 1/f alpha and alpha-stable Levy processes, stochastic oscillations, and complex motions with chaotic behavior on small scales but diffusive behavior on large scales. To our knowledge, no other measures are able to accurately characterize all these different types of motions. Based on the distinctive behaviors of the SDLE for different types of motions, we propose a scheme to distinguish chaos from noise.
具有相互作用的非线性和随机子系统以及层次规则的复杂系统的时间序列通常是多尺度的。在设计表征此类复杂时间序列的度量时,最理想的是在度量中明确纳入尺度概念。虽然已经提出了诸如ε熵和有限尺寸李雅普诺夫指数(FSLE)等优秀的尺度相关度量,但尚未开发出简单算法来从短噪声时间序列可靠地计算它们。为了促进这些概念的广泛应用,我们提出了一种有效算法来计算FSLE的一个变体,即尺度相关李雅普诺夫指数(SDLE)。我们表明,使用我们的算法,可以从短噪声时间序列准确计算SDLE,并轻松对各种类型的运动进行分类,包括真正的低维混沌、噪声混沌、噪声诱导混沌、随机1/fα和α稳定列维过程、随机振荡以及在小尺度上具有混沌行为但在大尺度上具有扩散行为的复杂运动。据我们所知,没有其他度量能够准确表征所有这些不同类型的运动。基于SDLE对不同类型运动的独特行为,我们提出了一种区分混沌与噪声的方案。