Probabilistic Machine Learning to Improve Generalisation of Data-Driven Turbulence Modelling

01/23/2023
by   Joel Ho, et al.
0

A probabilistic machine learning model is introduced to augment the k-ω SST turbulence model in order to improve the modelling of separated flows and the generalisability of learnt corrections. Increasingly, machine learning methods have been used to leverage experimental and high-fidelity data, improving the accuracy of the Reynolds Averaged Navier Stokes (RANS) turbulence models widely used in industry. A significant challenge for such methods is their ability to generalise to unseen geometries and flow conditions. Furthermore, heterogeneous datasets containing a mix of experimental and simulation data must be efficiently handled. In this work, field inversion and an ensemble of Gaussian Process Emulators (GPEs) is employed to address both of these challenges. The ensemble model is applied to a range of benchmark test cases, demonstrating improved turbulence modelling for cases with separated flows with adverse pressure gradients, where RANS simulations are understood to be unreliable. Perhaps more significantly, the simulation reverted to the uncorrected model in regions of the flow exhibiting physics outside of the training data.

READ FULL TEXT

page 14

page 17

page 18

research
11/01/2022

A unified method of data assimilation and turbulence modeling for separated flows at high Reynolds numbers

In recent years, machine learning methods represented by deep neural net...
research
09/13/2023

Generalizable improvement of the Spalart-Allmaras model through assimilation of experimental data

This study focuses on the use of model and data fusion for improving the...
research
08/19/2018

Prediction of Reynolds Stresses in High-Mach-Number Turbulent Boundary Layers using Physics-Informed Machine Learning

Modeled Reynolds stress is a major source of model-form uncertainties in...
research
01/29/2023

Physics-agnostic and Physics-infused machine learning for thin films flows: modeling, and predictions from small data

Numerical simulations of multiphase flows are crucial in numerous engine...
research
03/23/2021

Out-of-Distribution Detection of Melanoma using Normalizing Flows

Generative modelling has been a topic at the forefront of machine learni...
research
05/22/2023

Gibbs free energies via isobaric-isothermal flows

We present a machine-learning model based on normalizing flows that is t...
research
05/17/2020

Data-driven learning of robust nonlocal physics from high-fidelity synthetic data

A key challenge to nonlocal models is the analytical complexity of deriv...

Please sign up or login with your details

Forgot password? Click here to reset