Some theoretical and numerical results for delayed neural field equations |
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Authors: | Gré gory Faye |
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Affiliation: | NeuroMathComp Laboratory, INRIA, Sophia Antipolis, CNRS, ENS Paris, France |
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Abstract: | In this paper we study neural field models with delays which define a useful framework for modeling macroscopic parts of the cortex involving several populations of neurons. Nonlinear delayed integro-differential equations describe the spatio-temporal behavior of these fields. Using methods from the theory of delay differential equations, we show the existence and uniqueness of a solution of these equations. A Lyapunov analysis gives us sufficient conditions for the solutions to be asymptotically stable. We also present a fairly detailed study of the numerical computation of these solutions. This is, to our knowledge, the first time that a serious analysis of the problem of the existence and uniqueness of a solution of these equations has been performed. Another original contribution of ours is the definition of a Lyapunov functional and the result of stability it implies. We illustrate our numerical schemes on a variety of examples that are relevant to modeling in neuroscience. |
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Keywords: | Neural fields Nonlinear integro-differential equations Delays Lyapunov functional Pattern formation Numerical schemes |
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