Multi-almost periodicity and invariant basins of general neural networks under almost periodic stimuli
Abstract
In this paper, we investigate convergence dynamics of 2N almost periodic encoded patterns of general neural networks (GNNs) subjected to external almost periodic stimuli, including almost periodic delays. Invariant regions are established for the existence of 2N almost periodic encoded patterns under two classes of activation functions. By employing the property of M-cone and inequality technique, attracting basins are estimated and some criteria are derived for the networks to converge exponentially toward 2N almost periodic encoded patterns. The obtained results are new, they extend and generalize the corresponding results existing in previous literature.
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