Title :
Optimal Estimation in the Presence of Unknown Parameters
Author :
Hilborn, C.G., Jr. ; Lainiotis, Demetrios G.
Author_Institution :
Bell Telephone Laboratories, Inc., Winston-Salem, N.C.
Abstract :
An adaptive approach is presented for optimal estimation of a sampled stochastic process with finite-state unknown parameters. It is shown that, for processes with an implicit generalized Markov property, the optimal (conditional mean) state estimates can be formed from 1) a set of optimal estimates based on known parameters, and 2) a set of "learning" statistics which are recursively updated. The formulation thus provides a separation technique which simplifies the optimal solution of this class of nonlinear estimation problems. Examples of the separation technique are given for prediction of a non-Gaussian Markov process with unknown parameters and for filtering the state of a Gauss-Markov process with unknown parameters. General results are given on the convergence of optimal estimation systems operating in the presence of unknown parameters. Conditions are given under which a Bayes optimal (conditional mean) adaptive estimation system will converge in performance to an optimal system which is "told" the value of unknown parameters.
Keywords :
Adaptive estimation; Filtering; Gaussian processes; Parameter estimation; Probability distribution; Recursive estimation; State estimation; Statistics; Stochastic processes; Uncertainty;
Journal_Title :
Systems Science and Cybernetics, IEEE Transactions on
DOI :
10.1109/TSSC.1969.300242