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Adaptive Mesh Refinement Algorithms for Parallel Unstructured Finite Element Codes
Author(s) -
I. D. Parsons,
Jerome Solberg
Publication year - 2006
Publication title -
osti oai (u.s. department of energy office of scientific and technical information)
Language(s) - English
Resource type - Reports
DOI - 10.2172/899100
Subject(s) - computer science , polygon mesh , adaptive mesh refinement , finite element method , implementation , computational science , estimator , multiprocessing , software , algorithm , parallel computing , theoretical computer science , mathematics , software engineering , programming language , statistics , physics , computer graphics (images) , thermodynamics
This project produced algorithms for and software implementations of adaptive mesh refinement (AMR) methods for solving practical solid and thermal mechanics problems on multiprocessor parallel computers using unstructured finite element meshes. The overall goal is to provide computational solutions that are accurate to some prescribed tolerance, and adaptivity is the correct path toward this goal. These new tools will enable analysts to conduct more reliable simulations at reduced cost, both in terms of analyst and computer time. Previous academic research in the field of adaptive mesh refinement has produced a voluminous literature focused on error estimators and demonstration problems; relatively little progress has been made on producing efficient implementations suitable for large-scale problem solving on state-of-the-art computer systems. Research issues that were considered include: effective error estimators for nonlinear structural mechanics; local meshing at irregular geometric boundaries; and constructing efficient software for parallel computing environments

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