A probabilistic, data-driven closure model for RANS simulations with aleatoric, model uncertainty
Atul Agrawal, Phaedon-Stelios Koutsourelakis

TL;DR
This paper introduces a Bayesian, data-driven closure model for RANS simulations that accounts for aleatoric uncertainty, using neural networks and sparse data to improve flow predictions with quantified uncertainty.
Contribution
It presents a novel probabilistic closure model combining neural networks, Bayesian inference, and sparse data training for improved RANS simulation accuracy.
Findings
Accurately predicts flow quantities in separated flows.
Quantifies model uncertainty effectively.
Demonstrates robustness with sparse, indirect data.
Abstract
We propose a data-driven, closure model for Reynolds-averaged Navier-Stokes (RANS) simulations that incorporates aleatoric, model uncertainty. The proposed closure consists of two parts. A parametric one, which utilizes previously proposed, neural-network-based tensor basis functions dependent on the rate of strain and rotation tensor invariants. This is complemented by latent, random variables which account for aleatoric model errors. A fully Bayesian formulation is proposed, combined with a sparsity-inducing prior in order to identify regions in the problem domain where the parametric closure is insufficient and where stochastic corrections to the Reynolds stress tensor are needed. Training is performed using sparse, indirect data, such as mean velocities and pressures, in contrast to the majority of alternatives that require direct Reynolds stress data. For inference and learning, a…
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Taxonomy
TopicsModel Reduction and Neural Networks · Probabilistic and Robust Engineering Design · Fluid Dynamics and Vibration Analysis
MethodsLib · Variational Inference
