Probabilistic Flux Limiters
- URL: http://arxiv.org/abs/2405.08185v1
- Date: Mon, 13 May 2024 21:06:53 GMT
- Title: Probabilistic Flux Limiters
- Authors: Nga T. T. Nguyen-Fotiadis, Robert Chiodi, Michael McKerns, Daniel Livescu, Andrew Sornborger,
- Abstract summary: A popular method to virtually eliminate Gibbs oscillations in under-resolved simulations is to use a flux limiter.
Here, we introduce a conceptually distinct type of flux limiter that is designed to handle the effects of randomness in the model.
We show that a machine learned, probabilistic flux limiter may be used in a shock capturing code to more accurately capture shock profiles.
- Score: 0.873811641236639
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The stable numerical integration of shocks in compressible flow simulations relies on the reduction or elimination of Gibbs phenomena (unstable, spurious oscillations). A popular method to virtually eliminate Gibbs oscillations caused by numerical discretization in under-resolved simulations is to use a flux limiter. A wide range of flux limiters has been studied in the literature, with recent interest in their optimization via machine learning methods trained on high-resolution datasets. The common use of flux limiters in numerical codes as plug-and-play blackbox components makes them key targets for design improvement. Moreover, while aleatoric (inherent randomness) and epistemic (lack of knowledge) uncertainty is commonplace in fluid dynamical systems, these effects are generally ignored in the design of flux limiters. Even for deterministic dynamical models, numerical uncertainty is introduced via coarse-graining required by insufficient computational power to solve all scales of motion. Here, we introduce a conceptually distinct type of flux limiter that is designed to handle the effects of randomness in the model and uncertainty in model parameters. This new, {\it probabilistic flux limiter}, learned with high-resolution data, consists of a set of flux limiting functions with associated probabilities, which define the frequencies of selection for their use. Using the example of Burgers' equation, we show that a machine learned, probabilistic flux limiter may be used in a shock capturing code to more accurately capture shock profiles. In particular, we show that our probabilistic flux limiter outperforms standard limiters, and can be successively improved upon (up to a point) by expanding the set of probabilistically chosen flux limiting functions.
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