Title of article :
A new approximate inverse preconditioner based on the Vaidya’s maximum spanning tree for matrix equation AXB = C
Author/Authors :
Rezaei ، K. - Ferdowsi University o , Rahbarnia ، F. - Ferdowsi University o , Toutounian ، F. - Ferdowsi University o
Pages :
16
From page :
1
To page :
16
Abstract :
We propose a new preconditioned global conjugate gradient (PGLCG) method for the solution of matrix equation AXB = C, where A and B are sparse Stieltjes matrices. The preconditioner is based on the support graph preconditioners. By using Vaidya’s maximum spanning tree precon ditioner and BFS algorithm, we present a new algorithm for computing the approximate inverse preconditioners for matrices A and B and constructing a preconditioner for the matrix equation AXB = C. This preconditioner does not require solving any linear systems and is highly parallelizable. Numerical experiments are given to show the efficiency of the new algorithm on CPU and GPU for the solution of large sparse matrix equation.
Keywords :
Krylov subspace methods , matrix equation , approximate inverse preconditioner , global conjugate gradient , support graph preconditioner ,
Journal title :
Iranian Journal of Numerical Analysis and Optimization
Serial Year :
2019
Journal title :
Iranian Journal of Numerical Analysis and Optimization
Record number :
2461214
Link To Document :
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