Adaptive time step control for multirate infinitesimal methods
Alex C. Fish, Daniel R. Reynolds

TL;DR
This paper develops and evaluates adaptive time step controllers for multirate infinitesimal methods, enhancing efficiency and accuracy in solving problems with multiple time scales.
Contribution
It extends single-rate adaptive control techniques to multirate methods, introducing polynomial-based controllers and error estimation strategies for improved adaptivity.
Findings
Controllers achieve desired accuracy with minimal effort
Error estimation strategies improve robustness
Performance surpasses non-adaptive approaches
Abstract
Multirate methods have been used for decades to temporally evolve initial-value problems in which different components evolve on distinct time scales, and thus use of different step sizes for these components can result in increased computational efficiency. Generally, such methods select these different step sizes based on experimentation or stability considerations. For problems that evolve on a single time scale, adaptivity approaches that strive to control local temporal error are widely used to achieve numerical results of a desired accuracy with minimal computational effort, while alleviating the need for manual experimentation with different time step sizes. However, there is a notable gap in the publication record on the development of adaptive time-step controllers for multirate methods. In this paper, we extend the single-rate controller work of Gustafsson (1994) to the…
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Taxonomy
TopicsNumerical methods for differential equations · Model Reduction and Neural Networks · Iterative Methods for Nonlinear Equations
