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Bayesian estimation for nonlinear stochastic hybrid systems with state dependent transitions

Bayesian estimation for nonlinear stochastic hybrid systems with state dependent transitions
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摘要 The Bayesian approach is considered as the most general formulation of the state estimation for dynamic systems. However, most of the existing Bayesian estimators of stochastic hybrid systems only focus on the Markov jump system, few liter- ature is related to the estimation problem of nonlinear stochastic hybrid systems with state dependent transitions. According to this problem, a new methodology which relaxes quite a restrictive as- sumption that the mode transition process must satisfy Markov properties is proposed. In this method, a general approach is presented to model the state dependent transitions, the state and output spaces are discreted into cell space which handles the nonlinearities and computationally intensive problem offline. Then maximum a posterior estimation is obtained by using the Bayesian theory. The efficacy of the estimator is illustrated by a simulated example . The Bayesian approach is considered as the most general formulation of the state estimation for dynamic systems. However, most of the existing Bayesian estimators of stochastic hybrid systems only focus on the Markov jump system, few liter- ature is related to the estimation problem of nonlinear stochastic hybrid systems with state dependent transitions. According to this problem, a new methodology which relaxes quite a restrictive as- sumption that the mode transition process must satisfy Markov properties is proposed. In this method, a general approach is presented to model the state dependent transitions, the state and output spaces are discreted into cell space which handles the nonlinearities and computationally intensive problem offline. Then maximum a posterior estimation is obtained by using the Bayesian theory. The efficacy of the estimator is illustrated by a simulated example .
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2012年第2期242-249,共8页 系统工程与电子技术(英文版)
基金 supported by the National Natural Science Foundation of China (60974001 61104121) the Fundamental Research Funds for the Central Universities (JUDCF11039)
关键词 Bayesian estimation nonlinear stochastic hybrid sys- tem state dependent transition cell space. Bayesian estimation, nonlinear stochastic hybrid sys- tem, state dependent transition, cell space.
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