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  4. On the Use of Reduced Basis Methods to Accelerate and Stabilize the Parareal Method
 
conference paper

On the Use of Reduced Basis Methods to Accelerate and Stabilize the Parareal Method

Chen, Feng
•
Hesthaven, Jan S.  
•
Zhu, Xueyu
Quarteroni, A
•
Rozza, G
2014
Reduced Order Methods For Modeling And Computational Reduction
Workshop on Reduced Basis, POD and Reduced Order Methods for Model and Computational Reduction: towards Real-time Computing and Visualization'

We propose a modified parallel-in-time - parareal-multi-level time integration method that, in contrast to previously proposed methods, employs a coarse solver based on a reduced model, built from the information obtained from the fine solver at each iteration. This approach is demonstrated to offer two substantial advantages: it accelerates convergence of the original parareal method for similar problems and the reduced basis stabilizes the parareal method for purely advective problems where instabilities are known to arise. When combined with empirical interpolation methods (EIM), we develop this approach to solve both linear and nonlinear problems and highlight the minimal changes required to utilize this algorithm to accelerate existing implementations. We illustrate the advantages through algorithmic design, through analysis of stability, convergence, and computational complexity, and through several numerical examples.

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CECAM-Revised.pdf

Type

Postprint

Version

http://purl.org/coar/version/c_ab4af688f83e57aa

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openaccess

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570.73 KB

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Adobe PDF

Checksum (MD5)

21a617edbbef31383355b46b521898a0

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