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从随机强迫映射的时间序列中检测混沌确定性。

Detection of chaotic determinism in time series from randomly forced maps.

作者信息

Chon K H, Kanters J K, Cohen R J, Holstein-Rathlou N H

机构信息

Harvard-MIT Division of Health Sciences and Technology, Cambridge, MA, USA.

出版信息

Physica D. 1997;99:471-86. doi: 10.1016/s0167-2789(96)00159-5.

Abstract

Time series from biological system often display fluctuations in the measured variables. Much effort has been directed at determining whether this variability reflects deterministic chaos, or whether it is merely "noise". Despite this effort, it has been difficult to establish the presence of chaos in time series from biological sytems. The output from a biological system is probably the result of both its internal dynamics, and the input to the system from the surroundings. This implies that the system should be viewed as a mixed system with both stochastic and deterministic components. We present a method that appears to be useful in deciding whether determinism is present in a time series, and if this determinism has chaotic attributes, i.e., a positive characteristic exponent that leads to sensitivity to initial conditions. The method relies on fitting a nonlinear autoregressive model to the time series followed by an estimation of the characteristic exponents of the model over the observed probability distribution of states for the system. The method is tested by computer simulations, and applied to heart rate variability data.

摘要

生物系统的时间序列通常会显示出测量变量的波动。人们已经付出了很多努力来确定这种变异性是反映了确定性混沌,还是仅仅是“噪声”。尽管做出了这些努力,但要确定生物系统时间序列中是否存在混沌仍然很困难。生物系统的输出可能是其内部动力学以及来自周围环境对系统的输入共同作用的结果。这意味着该系统应被视为一个具有随机和确定性成分的混合系统。我们提出了一种方法,该方法似乎有助于确定时间序列中是否存在确定性,如果这种确定性具有混沌属性,即导致对初始条件敏感的正特征指数。该方法依赖于对时间序列拟合一个非线性自回归模型,然后在系统状态的观测概率分布上估计该模型的特征指数。该方法通过计算机模拟进行了测试,并应用于心率变异性数据。

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