Periodic solutions of high-order Cohen–Grossberg neural networks with distributed delays

Abstract A class of high-order Cohen–Grossberg neural networks with distributed delays is investigated in this paper. Sufficient conditions to guarantee the uniqueness and global exponential stability of periodic solutions of such networks are established by using suitable Lypunov function and the properties of M-matrix. The results in this paper improve the earlier publications.

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