混合变延迟记忆器随机神经网络的状态估计

Pub Date : 2023-01-01 DOI:10.18514/mmn.2023.4028
Ramasamy Saravanakumar, Hemen Dutta
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State estimation of memristor-based stochastic neural networks with mixed variable delays
. This paper studies the state estimation problem for memristor-based stochastic neural networks (MSNNs) with mixed variable delays. A new Lyapunov-Krasovskii functional (LKF) with quadruple integral terms is incorporated. Then, asymptotic stability conditions are established for the error system using a linear matrix inequality technique. The estimator gain can be obtained by solving the linear matrix inequalities. Numerical simulations are given to demonstrate the effectiveness and superiority of the new scheme.
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