Extended dissipativity-based synchronization of Markov jump neural networks subject to partially known transition and mode detection information

Neurocomputing(2023)

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摘要
This paper addresses the extended dissipativity-based synchronization problem of Markov jump neural networks with partially known probability information by using a detector from the hidden Markov model, where the partially known probability may exist in one of the transition probability matrix and detection probability matrix, or both of them simultaneously. By using such a hidden Markov model, an extended stochastic dissipative synchronization criterion for neural networks with partially known probability information is established, and a novel design method is given with the help of an improved activation function dividing method. Finally, the validity of the proposed approach is demonstrated by two numerical examples.
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关键词
Markov jump neural networks,Hidden Markov model,Dissipativity analysis,Partially known information
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