COMP-PHFLU-DYNCOMLMay 20, 2019

Leveraging Bayesian Analysis To Improve Accuracy of Approximate Models

arXiv:1905.08227v112 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of refining approximate models in computational physics, particularly for turbulence, though it is incremental as it builds on existing Bayesian and surrogate methods.

The paper tackled the problem of improving the accuracy of approximate models for multiscale dynamical systems by using hierarchical Bayesian analysis to uncover physical dependencies and enhance model structure, demonstrating this in a turbulence closure model with potential general applicability.

We focus on improving the accuracy of an approximate model of a multiscale dynamical system that uses a set of parameter-dependent terms to account for the effects of unresolved or neglected dynamics on resolved scales. We start by considering various methods of calibrating and analyzing such a model given a few well-resolved simulations. After presenting results for various point estimates and discussing some of their shortcomings, we demonstrate (a) the potential of hierarchical Bayesian analysis to uncover previously unanticipated physical dependencies in the approximate model, and (b) how such insights can then be used to improve the model. In effect parametric dependencies found from the Bayesian analysis are used to improve structural aspects of the model. While we choose to illustrate the procedure in the context of a closure model for buoyancy-driven, variable-density turbulence, the statistical nature of the approach makes it more generally applicable. Towards addressing issues of increased computational cost associated with the procedure, we demonstrate the use of a neural network based surrogate in accelerating the posterior sampling process and point to recent developments in variational inference as an alternative methodology for greatly mitigating such costs. We conclude by suggesting that modern validation and uncertainty quantification techniques such as the ones we consider have a valuable role to play in the development and improvement of approximate models.

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