Data-driven time parallelism via forecasting
Kevin Carlberg, Lukas Brencher, Bernard Haasdonk, Andrea Barth

TL;DR
This paper introduces a data-driven time parallelism method for solving ODE systems efficiently, leveraging low-dimensional bases and forecasting techniques within the parareal framework, especially suited for POD-based reduced-order models.
Contribution
The paper presents novel data-driven initialization and coarse propagation techniques for time parallelism, improving efficiency and stability in solving ODEs, particularly for reduced-order models.
Findings
Achieves near-ideal speedups in numerical experiments.
Effective for POD-based reduced-order models.
Global-forecast initialization with local-forecast coarse propagator performs best.
Abstract
This work proposes a data-driven method for enabling the efficient, stable time-parallel numerical solution of systems of ordinary differential equations (ODEs). The method assumes that low-dimensional bases that accurately capture the time evolution of the state are available. The method adopts the parareal framework for time parallelism, which is defined by an initialization method, a coarse propagator, and a fine propagator. Rather than employing usual approaches for initialization and coarse propagation, we propose novel data-driven techniques that leverage the available time-evolution bases. The coarse propagator is defined by a forecast (proposed in Ref. [12]) applied locally within each coarse time interval, which comprises the following steps: (1) apply the fine propagator for a small number of time steps, (2) approximate the state over the entire coarse time interval using…
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