Estimation of sensitive parameters of chaotic system from noisy scalar series

Zheng Wei Zhang, Yang Yu Fan, Kai Bin Wang

Research output: Contribution to journalArticlepeer-review

Abstract

By exploiting the inherent properties of chaotic system and making use of the underlying information contained in the noisy observational series, a new method for estimating the sensitive parameters only from the noisy observational series of a state variable was developed. The problem of error propagation caused by the positive Lyapunov exponent was settled effectively. This method stems from the thought of the constrained two-point boundary value problem, so it is different from principle the traditional trajectory shadowing methods which must take into account the one-step error and the hyperbolic property of the system. It is also different from common noise reduction techniques which can not obtain a true orbit to shadow the noisy observation series. The evolvement process and performance of this method were analyzed. As a byproduct, the method also provided a practical signal compression/code technique for a class of high dimensional nonlinear systems which are not hyperbolic.

Original languageEnglish
Pages (from-to)3318-3320+3357
JournalXitong Fangzhen Xuebao / Journal of System Simulation
Volume19
Issue number14
StatePublished - 20 Jul 2007

Keywords

  • Gauss-Newton algorithm
  • Multipoint boundary-value problem
  • Noisy observational series
  • Sensitive parameters
  • Signal compression

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