Finite Element Error Estimates for Critical Growth Semilinear Problems without Angle Conditions
Randolph E. Bank, Michael Holst, Ryan Szypowski, Yunrong Zhu

TL;DR
This paper develops finite element error estimates for semilinear elliptic problems with critical growth, removing the need for restrictive angle conditions by relying on the continuous maximum principle and growth conditions.
Contribution
It introduces a new approach to derive a priori error estimates without angle conditions, addressing a major gap in nonlinear finite element approximation theory.
Findings
Error estimates obtained without angle conditions
Pointwise control achieved via continuous maximum principle
Numerical experiments confirm theoretical results
Abstract
In this article we consider a priori error and pointwise estimates for finite element approximations of solutions to semilinear elliptic boundary value problems in d>=2 space dimensions, with nonlinearities satisfying critical growth conditions. It is well-understood how mesh geometry impacts finite element interpolant quality, and leads to the reasonable notion of shape regular simplex meshes. It is also well-known how to perform both mesh generation and simplex subdivision, in arbitrary space dimension, so as to guarantee the entire hierarchy of nested simplex meshes produced through subdivision continue to satisfy shape regularity. However, much more restrictive angle conditions are needed for basic a priori quasi-optimal error estimates, as well as for a priori pointwise estimates. These angle conditions, which are particularly difficult to satisfy in three dimensions in any type of…
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Taxonomy
TopicsAdvanced Numerical Methods in Computational Mathematics · Differential Equations and Numerical Methods · Advanced Mathematical Modeling in Engineering
