Title :
Robust steady-state filtering for systems with deterministic and stochastic uncertainties
Author :
Wang, Fan ; Balakrishnan, Venkataramanan
Author_Institution :
Motorola Inc., Arlington Heights, IL, USA
Abstract :
For uncertain systems containing both deterministic and stochastic uncertainties, we consider two problems of optimal filtering. The first is the design of a linear time-invariant filter that minimizes an upper bound on the mean energy gain between the noise affecting the system and the estimation error. The second is the design of a linear time-invariant filter that minimizes an upper bound on the asymptotic mean square estimation error when the plant is driven by a white noise. We present filtering algorithms that solve each of these problems, with the filter parameters determined via convex optimization based on linear matrix inequalities. We demonstrate the performance of these robust algorithms on a numerical example consisting of the design of equalizers for a communication channel.
Keywords :
convex programming; equalisers; filtering theory; linear matrix inequalities; mean square error methods; minimisation; parameter estimation; stochastic systems; uncertain systems; white noise; asymptotic mean square estimation error; communication channel equalizers; convex optimization; deterministic uncertainties; linear filter; linear matrix inequalities; linear time-invariant filter; minimization; optimal filtering; robust steady-state filtering; signal estimation; stochastic uncertainties; white noise; Estimation error; Filtering; Noise robustness; Nonlinear filters; Steady-state; Stochastic resonance; Stochastic systems; Uncertain systems; Uncertainty; Upper bound;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2003.816861