Determining Solutions of Fuzzy Cellular Neural Networks with Fluctuating Delays

Ivan P. Stanimirovic

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This pap er deals with the problem of nonp erio dic arrange ments for fuzzy cell neural
systems with fluctuating delays. By utiliz ing c ompre ssion mapping and Krasnoselski’s
settled p oint hyp othesis and developing some appropriate Lyapunov functionals, ade quate
conditions are s et up for the presence and worldwide exp onential solidness of solutions of
FCNNs with fluctuating delays. In addition, illustrative examples are set up to exhibit a
mo del.


Cellular neural networks; fuzzy; fluctuating delays; nonperiodic solutions

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