288 pp. per issue
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Neural Computation

December 2007, Vol. 19, No. 12, Pages 3392-3420
(doi: 10.1162/neco.2007.19.12.3392)
© 2007 Massachusetts Institute of Technology
Multiple Almost Periodic Solutions in Nonautonomous Delayed Neural Networks
Article PDF (1.24 MB)

A general methodology that involves geometric configuration of the network structure for studying multistability and multiperiodicity is developed. We consider a general class of nonautonomous neural networks with delays and various activation functions. A geometrical formulation that leads to a decomposition of the phase space into invariant regions is employed. We further derive criteria under which the n-neuron network admits 2n exponentially stable sets. In addition, we establish the existence of 2n exponentially stable almost periodic solutions for the system, when the connection strengths, time lags, and external bias are almost periodic functions of time, through applying the contraction mapping principle. Finally, three numerical simulations are presented to illustrate our theory.