Adaptive mixed GMsFEM for flows in heterogeneous media
Ho Yuen Chan, Eric T. Chung, Yalchin Efendiev

TL;DR
This paper introduces two adaptive basis enrichment strategies for the mixed GMsFEM to efficiently solve flow problems in heterogeneous media, improving convergence and capturing complex effects.
Contribution
It develops and analyzes offline and online adaptive methods for basis enrichment in mixed GMsFEM, enhancing solution accuracy in heterogeneous media.
Findings
Online method outperforms offline in capturing distant effects.
Both methods converge faster than uniform enrichment.
Proper initial basis selection leads to contrast-independent convergence.
Abstract
In this paper, we present two adaptive methods for the basis enrichment of the mixed Generalized Multiscale Finite Element Method (GMsFEM) for solving the flow problem in heterogeneous media. We develop an a-posteriori error indicator which depends on the norm of a local residual operator. Based on this indicator, we construct an offline adaptive method to increase the number of basis functions locally in coarse regions with large local residuals. We also develop an online adaptive method which iteratively enriches the function space by adding new functions computed based on the residual of the previous solution and special minimum energy snapshots. We show theoretically and numerically the convergence of the two methods. The online method is, in general, better than the offline method as the online method is able to capture distant effects (at a cost of online computations), and both…
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