Tangent-Space Multiscale Manifold Methods for Nonlinear Elliptic Problems
Abstract
We introduce a tangent-space multiscale manifold method for nonlinear heterogeneous elliptic problems.
The method represents the fine-scale solution by a nonlinear reconstruction of a coarse state.
The ideal reconstruction eliminates fine scales through a constrained variational problem, and the computable reconstruction approximates this map by localized nonlinear patch solves blended with a partition of unity.
Because the approximation set is a nonlinear manifold, the coarse equation is posed with tangent multiscale test functions.
We also formulate a network-interpolated variant in which only the restricted patch outputs used by the partition-of-unity blend, together with their tangent actions, are approximated by local learned maps.
For heterogeneous monotone nonlinear diffusion, we record the structural monotonicity, differentiability, patch-map regularity, and conditional perturbation estimates that separate the geometric stability mechanism from localization, residual, and optional learning defects.
A rigorous a priori theory for the decay of the localization defect, and the resulting convergence rates in the coarse mesh size, is deferred to a separate analysis; here these defects are controlled conditionally and their decay is demonstrated numerically.
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