Abstract :
The paper is devoted to establishing strong consistency of estimates of nonlinear characteristics of dynamic stochastic systems. To describe the shape of the nonlinearities, regression functions, i.e. conditional expectations of a variable with respect to another one, are used. In turn, the nonlinear regression functions are estimated by algorithms using the kernel-type approaches, which are suitable under fairly mild assumptions with respect to the system description. Within the approach, the key issue of the present paper is considering a case of mutually dependent observations in contrast to conventional nonparametric approaches based on regression estimates, which impose rather restrictive limitations on sampled data, e.g. mutual independence, various mixing conditions, etc., while such assumptions are not always acceptable within dynamic system considerations.
Keywords :
control nonlinearities; nonlinear control systems; recursive estimation; regression analysis; sampled data systems; stochastic systems; conditional expectations; dynamic stochastic systems; dynamic system considerations; kernel-type approaches; mutually dependent observations; nonlinear characteristics; nonlinear regression functions; recursive regression estimation; sampled data; Estimation; Nonlinear dynamical systems; Stochastic systems; Dependent observations; Identification; Kernel-type estimation; Nonlinear systems; Recursive algorithms;