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首页> 外文期刊>Applied mathematics and computation >OBTAINING INITIAL PARAMETER ESTIMATES FOR CHAOTIC DYNAMICAL SYSTEMS USING LINEAR ASSOCIATIVE MEMORIES
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OBTAINING INITIAL PARAMETER ESTIMATES FOR CHAOTIC DYNAMICAL SYSTEMS USING LINEAR ASSOCIATIVE MEMORIES

机译:利用线性联想记忆获得混沌动力学系统的初始参数估计

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摘要

Parameter estimation problems for nonlinear dynamical sg stems are typically formulated as nonlinear optimization problems. For such problems, one has the usual difficulty that standard successive approximation schemes generally require good initial parameter estimates in order to converge to the truth. The linear associative memory method has demonstrated its effectiveness in obtaining useful initial parameter estimates for simple nonlinear dynamical systems. No work, however, has yet been done to apply this method to a chaotic system. This paper initiates' such a study using the logistic map, which is capable of generating mathematical chaos. Supervised training was conducted between system parameters and system outputs to construct optimal memory matrices. Untrained system outputs were then used together with the memory matrices to estimate system parameters. Very accurate parameter estimates were obtained for noise-free system outputs. Good parameter estimates were obtained for system outputs corrupted by noise. A ''rule of thumb'' is suggested that can be used to aid in a successful search for true parameter values if the initial training range is not located ''near'' them. [References: 6]
机译:非线性动力学sg茎的参数估计问题通常被表述为非线性优化问题。对于这样的问题,人们通常会遇到困难,即标准的逐次逼近方案通常需要良好的初始参数估计才能收敛到真相。线性联想记忆方法已经证明了其在获得简单非线性动力学系统有用的初始参数估计值方面的有效性。但是,尚未进行将这种方法应用于混沌系统的工作。本文使用能够产生数学混乱的逻辑图来启动此类研究。在系统参数和系统输出之间进行有监督的训练,以构建最佳的存储矩阵。然后将未经训练的系统输出与内存矩阵一起使用,以估计系统参数。对于无噪声的系统输出,获得了非常准确的参数估计。对于被噪声破坏的系统输出,可以获得良好的参数估计。如果初始训练范围不在“附近”,则建议使用“经验法则”来帮助成功搜索真实参数值。 [参考:6]

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