State Estimation of Markovian Jump Neural Networks with Mixed Time Delays

This paper is concerned with the state estimation problem of Markovian jump neural networks with discrete and distributed delays. A stochastic Lyapunov functional with a triple-integral term is constructed to handle it. A delay-dependent design criterion is derived such that the resulting error system is mean square exponentially stable with a prescribed decay rate. The gain matrices of the state estimator and the decay rate can be obtained by solving some coupled linear matrix inequalities.

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