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Main Authors: Chen, Liang, Chen, Yaru, Li, Qiuqi, Zhang, Zhiwen
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2304.05708
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author Chen, Liang
Chen, Yaru
Li, Qiuqi
Zhang, Zhiwen
author_facet Chen, Liang
Chen, Yaru
Li, Qiuqi
Zhang, Zhiwen
contents In this work, we propose a new stochastic domain decomposition method for solving steady-state partial differential equations (PDEs) with random inputs. Based on the efficiency of the Variable-separation (VS) method in simulating stochastic partial differential equations (SPDEs), we extend it to stochastic algebraic systems and apply it to stochastic domain decomposition. The resulting Stochastic Domain Decomposition based on the Variable-separation method (SDD-VS) effectively addresses the ``curse of dimensionality" by leveraging the explicit representation of stochastic functions derived from physical systems. The SDD-VS method aims to obtain a separated representation of the solution for the stochastic interface problem. To enhance efficiency, an offline-online computational decomposition is introduced. In the offline phase, the affine representation of stochastic algebraic systems is obtained through the successive application of the VS method. This serves as a crucial foundation for the SDD-VS method. In the online phase, the interface unknowns of SPDEs are estimated using a quasi-optimal separated representation, enabling the construction of efficient surrogate models for subproblems. The effectiveness of the proposed method is demonstrated via the numerical results of three concrete examples.
format Preprint
id arxiv_https___arxiv_org_abs_2304_05708
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Stochastic Domain Decomposition Based on Variable-Separation Method
Chen, Liang
Chen, Yaru
Li, Qiuqi
Zhang, Zhiwen
Numerical Analysis
In this work, we propose a new stochastic domain decomposition method for solving steady-state partial differential equations (PDEs) with random inputs. Based on the efficiency of the Variable-separation (VS) method in simulating stochastic partial differential equations (SPDEs), we extend it to stochastic algebraic systems and apply it to stochastic domain decomposition. The resulting Stochastic Domain Decomposition based on the Variable-separation method (SDD-VS) effectively addresses the ``curse of dimensionality" by leveraging the explicit representation of stochastic functions derived from physical systems. The SDD-VS method aims to obtain a separated representation of the solution for the stochastic interface problem. To enhance efficiency, an offline-online computational decomposition is introduced. In the offline phase, the affine representation of stochastic algebraic systems is obtained through the successive application of the VS method. This serves as a crucial foundation for the SDD-VS method. In the online phase, the interface unknowns of SPDEs are estimated using a quasi-optimal separated representation, enabling the construction of efficient surrogate models for subproblems. The effectiveness of the proposed method is demonstrated via the numerical results of three concrete examples.
title Stochastic Domain Decomposition Based on Variable-Separation Method
topic Numerical Analysis
url https://arxiv.org/abs/2304.05708