Distinguishing chaos from random fractal sequences by the comparison of forward and backward predictions: utilization of the difference in time reversal symmetry of time series

M. Naito, N. Tanaka, H. Okamoto
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引用次数: 0

Abstract

The authors propose a method for distinguishing chaos from random fractal sequences which have been difficult to discriminate from chaos. In the proposed method, the time series is predicted both in the forward direction and in the backward direction, and the accuracy of the two types of predictions is compared. They show, considering the time reversal symmetry of time series, that if the time series is chaotic and originates from a dissipative dynamical system, the accuracy is in general better for the forward prediction than for the backward prediction, whereas the accuracy is the same if the time series is a random fractal sequence. The method is also applicable to distinguishing between chaos and stationary noise. It is possible to give a quantitative evaluation of the distinction without a large amount of data or calculation.
通过前后向预测的比较来区分混沌与随机分形序列:利用时间序列时间反转对称性的差异
本文提出了一种将混沌与随机分形序列区分开来的方法。该方法对时间序列进行了正向和反向预测,并对两种预测的精度进行了比较。结果表明,考虑到时间序列的时间反转对称性,如果时间序列是混沌的,并且起源于耗散的动力系统,正前预测的精度一般优于后向预测,而如果时间序列是随机分形序列,正后预测的精度是相同的。该方法同样适用于混沌噪声和平稳噪声的区分。不需要大量的数据或计算,就可以对这种区别进行定量评价。
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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