Controllable Markov Jump Processes. I. Optimum Filtering Based on Complex Observations


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Abstract

The first part of the paper is devoted to justifying the possibility of the correct description of a controllable stochastic observation system. The state is a Markov jump process, and the observations are a combination of continuous, discrete, and counting processes. A martingale problem of the system under study is solved: it is shown that there exists a canonical probability space with filtration such that under any admissible control, this system is stochastic differential with the martingales on the right-hand side. Further, for this system there exists a solution of the optimal in the mean square sense filtering problem given the compound observations. The filtering estimate is presented in the form of a continuous-discrete stochastic system with the martingales on the right-hand side. The article contains a description of a numerical algorithm implementing both process modeling in the considered observation system and the proposed solution for the filtering problem.

About the authors

A. V. Borisov

Institute of Informatics Problems, Russian Academy of Sciences (IPI RAN)

Author for correspondence.
Email: aborisov@frccsc.ru
Russian Federation, Moscow, 119333

G. B. Miller

Institute of Informatics Problems, Russian Academy of Sciences (IPI RAN)

Email: aborisov@frccsc.ru
Russian Federation, Moscow, 119333

A. I. Stefanovich

Institute of Informatics Problems, Russian Academy of Sciences (IPI RAN)

Email: aborisov@frccsc.ru
Russian Federation, Moscow, 119333


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