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Exponential decay for a system of equations with distributed delays. (English) Zbl 1435.34073
Summary: We prove convergence of solutions to zero in an exponential manner for a system of ordinary differential equations. The feature of this work is that it deals with nonlinear non-Lipschitz and unbounded distributed delay terms involving non-Lipschitz and unbounded activation functions.
MSC:
34K25 Asymptotic theory of functional-differential equations
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