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JOURNALS // Theory of Stochastic Processes // Archive

Theory Stoch. Process., 2007 Volume 13(29), Issue 2, Pages 166–181 (Mi thsp195)

Robust filtering of stochastic processes

Mikhail Moklyachuk, Aleksandr Masyutka

Department of Probability Theory and Mathematical Statistics, Kyiv National Taras Shevchenko University, Kyiv 01033, Ukraine

Abstract: The considered problem is estimation of the unknown value of the functional $A\vec{\xi}=\int^\infty_0\vec{a}(t)\vec{\xi}(-t)dt$ which depends on the unknown values of a multidimensional stationary stochastic process $\vec{\xi}(t)$ based on observations of the process $\vec{\xi}(t)+ vec{\eta}(t)$ for $t\leq0.$ Formulas are obtained for calculation the mean square error and the spectral characteristic of the optimal estimate of the functional under the condition that the spectral density matrix $F(\lambda)$ of the signal process $\vec{\xi}(t)$ and the spectral density matrix $G(\lambda)$ of the noise process $\vec{\eta}(t)$ are known. The least favorable spectral densities and the minimax-robust spectral characteristic of the optimal estimate of the functional $A\vec{\xi}$ are found for concrete classes $D = D_F\times D_G$ of spectral densities under the condition that spectral density matrices $F(\lambda)$ and $G(\lambda)$ are not known, but classes $D = D_F\times D_G$ of admissible spectral densities are given.

Keywords: Stationary stochastic process, filtering, robust estimate, observations with noise, mean square error, least favorable spectral densities, minimax-robust spectral characteristic.

MSC: 60G10, 62M20, 60G35, 93E10, 93E11

Language: English



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