Title :
Recursive identification of continuous-time linear stochastic systems - Convergence w.p.1 and in Lq
Author :
Gerencser, Laszlo ; Prokaj, Vilmos
Author_Institution :
MTA SZTAKI, Budapest, Hungary
Abstract :
We present a convergence theorem for a computable continuous-time recursive maximum likelihood method with resetting, under realistic conditions. Resetting takes place if the estimator process hits the boundary of a pre-specified compact domain, or if the rate of change, in a stochastic sense, of the parameter process would hit a fixed threshold. The modified recursive maximum likelihood estimator converges to the true value of the parameter almost surely and in Lq for any q, provided that the threshold imposed on the rate of change of the parameter is sufficiently small. We also show that the rate of convergence in Lq is O(T-1/2). The proof, the outline of which will be given, is based on an extension of the scheme of Benveniste, Metivier and Priouret (BMP) to estimation problems described in terms of continuous-time linear stochastic systems.
Keywords :
continuous time systems; linear systems; maximum likelihood estimation; recursive estimation; stochastic systems; computable continuous-time recursive maximum likelihood method; continuous-time linear stochastic systems; convergence theorem; estimator process; recursive identification; resetting; Approximation methods; Convergence; Discrete wavelet transforms; Equations; Maximum likelihood estimation; Stochastic systems;
Conference_Titel :
Control Conference (ECC), 2009 European
Conference_Location :
Budapest
Print_ISBN :
978-3-9524173-9-3