SIAM Journal on Control and Optimization


Approximate Nonlinear Filtering for a Two-Dimensional Diffusion with One-Dimensional Observations in a Low Noise Channel

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Article Data

History

Published online: 26 July 2006

Publication Data

ISSN (print): 0363-0129
ISSN (online): 1095-7138
CODEN: sjcodc

The asymptotic behavior of a nonlinear continuous time filtering problem is studied when the variance of the observation noise tends to 0. We suppose that the signal is a two-dimensional process from which only one of the components is noisy and that a one-dimensional function of this signal, depending only on the unnoisy component, is observed in a low noise channel. An approximate filter is considered in order to solve this problem. Under some detectability assumptions, we prove that the filtering error converges to 0, and an upper bound for the convergence rate is given. The efficiency of the approximate filter is compared with the efficiency of the optimal filter, and the order of magnitude of the error between the two filters, as the observation noise vanishes, is obtained.

Copyright © 2003 Society for Industrial and Applied Mathematics

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Efficiency of an approximate filter for a particular class of nonlinear diffusions with observations corrupted by small noise. Proceedings of the 39th IEEE Conference on Decision and Control (Cat. No.00CH37187), 1599-1601. Crossref