Optimizing multigrid reduction-in-time (MGRIT) and Parareal coarse-grid operators for linear advection
Hans De Sterck, Robert D. Falgout, Stephanie Friedhoff, Oliver A., Krzysik, Scott P. MacLachlan

TL;DR
This paper enhances multigrid reduction-in-time and Parareal methods for linear advection by optimizing coarse-grid operators through characteristic tracking, achieving scalable convergence and significant speed-ups in hyperbolic PDE simulations.
Contribution
It introduces an optimization-based approach to improve coarse-grid operators in MGRIT and Parareal for hyperbolic PDEs, addressing previous scalability issues.
Findings
Achieved scalable convergence with optimized coarse-grid operators.
Demonstrated significant parallel speed-ups over sequential methods.
Validated approach across various schemes and discretizations.
Abstract
Parallel-in-time methods, such as multigrid reduction-in-time (MGRIT) and Parareal, provide an attractive option for increasing concurrency when simulating time-dependent PDEs in modern high-performance computing environments. While these techniques have been very successful for parabolic equations, it has often been observed that their performance suffers dramatically when applied to advection-dominated problems or purely hyperbolic PDEs using standard rediscretization approaches on coarse grids. In this paper, we apply MGRIT or Parareal to the constant-coefficient linear advection equation, appealing to existing convergence theory to provide insight into the typically non-scalable or even divergent behavior of these solvers for this problem. To overcome these failings, we replace rediscretization on coarse grids with improved coarse-grid operators that are computed by applying…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
