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首页> 外文期刊>Chaos, Solitons and Fractals: Applications in Science and Engineering: An Interdisciplinary Journal of Nonlinear Science >Tracing initial conditions, historical evolutionary path and parameters of chaotic processes from a short segment of scalar time series
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Tracing initial conditions, historical evolutionary path and parameters of chaotic processes from a short segment of scalar time series

机译:从标量时间序列的一小段追踪初始条件,历史演化路径和混沌过程的参数

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摘要

An iterative optimization method is used to uncover unobserved initial state (t = 0). historical evolutionary path (t < t(0)) and parameters of a chaotic process from a segment of scalar time series (t(0) less than or equal to t less than or equal to t(1), t(0) > 0). Given the system structure, we can precisely estimate the model parameters, recover the trajectory components unobserved. identify the state of all variables at the beginning (t = to) of the observed time series. and trace the historical evolution of the system back to a long time interval (0 less than or equal to t < t(0)). Chaotic time series of Lorenz system and Rossler system are utilized for illustration. The results show that the method is effective and tolerant to large mismatches between the guessed and actual values of the initial state and parameters. (C) 2004 Elsevier Ltd. All rights reserved.
机译:迭代优化方法用于发现未观察到的初始状态(t = 0)。历史进化路径(t 0)。给定系统结构,我们可以精确估计模型参数,恢复未观察到的轨迹分量。在观察到的时间序列的开始(t = to)确定所有变量的状态。并将系统的历史演变追溯到很长的时间间隔(0小于或等于t

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