Finite-time Anti-synchronization of Stochastic Delayed Memristive Neural Networks

In this paper, the finite time anti-synchronization of stochastic memristive neural network has been investigated under the framework of Filippov sense. To obtain the anti-synchronization, firstly, we discussed both continuous and discontinuous control, respectively. Then, the new switching controller is presented considering the characteristic of continuous and discontinuous controllers. Correspondingly, some useful results are established, meanwhile, a numerical example is given to illustrate the effectiveness of obtained results.

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