A nested divide-and-conquer method for tensor Sylvester equations with positive definite hierarchically semiseparable coefficients
Abstract
Linear systems with a tensor product structure arise naturally when considering the discretization of Laplace type differential equations or, more generally, multidimensional operators with separable coefficients. In this work, we focus on the numerical solution of linear systems of the form (I … I A1+… + Ad I … I)x=b, where the matrices At∈ Rn× n are symmetric positive definite and belong to the class of hierarchically semiseparable matrices. We propose and analyze a nested divide-and-conquer scheme, based on the technology of low-rank updates, that attains the quasi-optimal computational cost O(nd ((n) + ()2 + () (ε-1))) where is the condition number of the linear system, and ε the target accuracy. Our theoretical analysis highlights the role of inexactness in the nested calls of our algorithm and provides worst case estimates for the amplification of the residual norm. The performances are validated on 2D and 3D case studies.
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