Homogenization of Maximal Monotone Vector Fields via Selfdual Variational Calculus
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Bibliographic record
Abstract
Abstract We use the theory of selfdual Lagrangians to give a variational approach to the homogenization of equations in divergence form, that are driven by a periodic family of maximal monotone vector fields. The approach has the advantage of using Γ-convergence methods for corresponding functionals just as in the classical case of convex potentials, as opposed to the graph convergence methods used in the absence of potentials. A new variational formulation for the homogenized equation is also given.
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|---|---|---|
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