Algorithms for Sparse Linear Systems
Author(s)
Scott, Jennifer
Tůma, Miroslav
Language
EnglishAbstract
Large sparse linear systems of equations are ubiquitous in science, engineering and beyond. This open access monograph focuses on factorization algorithms for solving such systems. It presents classical techniques for complete factorizations that are used in sparse direct methods and discusses the computation of approximate direct and inverse factorizations that are key to constructing general-purpose algebraic preconditioners for iterative solvers. A unified framework is used that emphasizes the underlying sparsity structures and highlights the importance of understanding sparse direct methods when developing algebraic preconditioners. Theoretical results are complemented by sparse matrix algorithm outlines. This monograph is aimed at students of applied mathematics and scientific computing, as well as computational scientists and software developers who are interested in understanding the theory and algorithms needed to tackle sparse systems. It is assumed that the reader has completed a basic course in linear algebra and numerical mathematics.
Keywords
Sparse Matrices; Algebraic Preconditioners; Sparse Direct Methods; Incomplete Factorizations; Approximate InversesDOI
10.1007/978-3-031-25820-6ISBN
9783031258206, 9783031258190, 9783031258206Publisher
Springer NaturePublisher website
https://www.springernature.com/gp/products/booksPublication date and place
Cham, 2023Grantor
Imprint
BirkhäuserSeries
Nečas Center Series,Classification
Numerical analysis
Algebra
Maths for scientists