Title :
Optimal Filtering for Discrete-Time Linear Systems With Multiplicative White Noise Perturbations and Periodic Coefficients
Author_Institution :
Inst. of Math. ”Simion Stoilow”, Bucharest, Romania
Abstract :
In this technical brief, the problem of the estimation of a remote signal generated by a discrete-time dynamical system with periodic coefficients subject to multiplicative and additive white noise perturbations is investigated. To measure the quality of the estimation achieved by an admissible filter, we introduced a performance criterion described by the Cesaro limit of the mean square of the deviation between the estimated signal zF(t) and the remote signal z(t). The dimension of the state space of the admissible filters is not prefixed. The state-space representation of the optimal filter is constructed based on the unique periodic solution of a discrete-time linear equation together with the stabilizing solution of a suitable discrete-time Riccati equation with periodic coefficients.
Keywords :
Riccati equations; discrete time systems; estimation theory; filtering theory; linear systems; optimal control; periodic control; stability; state-space methods; white noise; Cesaro limit; additive white noise perturbations; admissible filter; discrete-time Riccati equation; discrete-time dynamical system; discrete-time linear equation; discrete-time linear systems; estimated signal; estimation quality; mean square; multiplicative noise; multiplicative white noise perturbations; optimal filtering; performance criterion; periodic coefficients; periodic solution; remote signal estimation; stabilizing solution; state space; state-space representation; Aerospace electronics; Equations; Estimation; Linear systems; Mathematical model; Stochastic systems; Tin; Discrete-time Riccati equations; discrete-time stochastic systems; multiplicative and additive white noise perturbations; periodic coefficients; signal filtering;
Journal_Title :
Automatic Control, IEEE Transactions on
DOI :
10.1109/TAC.2012.2215534