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Error Estimates for Advanced Galerkin Methods

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Error Estimates for Advanced Galerkin Methods Synopsis

This monograph provides a compendium of established and novel error estimation procedures applied in the field of Computational Mechanics. It also includes detailed derivations of these procedures to offer insights into the concepts used to control the errors obtained from employing Galerkin methods in finite and linearized hyperelasticity. The Galerkin methods introduced are considered advanced methods because they remedy certain shortcomings of the well-established finite element method, which is the archetypal Galerkin (mesh-based) method. In particular, this monograph focuses on the systematical derivation of the shape functions used to construct both Galerkin mesh-based and meshfree methods. The mesh-based methods considered are the (conventional) displacement-based, (dual-)mixed, smoothed, and extended finite element methods. In addition, it introduces the element-free Galerkin and reproducing kernel particle methods as representatives of a class of Galerkin meshfree methods. Including illustrative numerical examples relevant to engineering with an emphasis on elastic fracture mechanics problems, this monograph is intended for students, researchers, and practitioners aiming to increase the reliability of their numerical simulations and wanting to better grasp the concepts of Galerkin methods and associated error estimation procedures.

About This Edition

ISBN: 9783030061722
Publication date: 8th November 2019
Author: Marcus Olavi Rüter
Publisher: Springer Nature Switzerland AG
Format: Hardback
Pagination: 496 pages
Series: Lecture Notes in Applied and Computational Mechanics
Genres: Engineering: Mechanics of solids
Numerical analysis
Artificial intelligence