Identification of high order closure terms from fully kinetic simulations using machine learning

10/19/2021
by   Brecht Laperre, et al.
0

Simulations of large-scale plasma systems are typically based on fluid approximations. However, these methods do not capture the small-scale physical processes available to fully kinetic models. Traditionally, empirical closure terms are used to express high order moments of the Boltzmann equation, e.g. the pressure tensor and heat flux. In this paper, we propose different closure terms extracted using machine learning techniques as an alternative. We show in this work how two different machine learning models, a multi-layer perceptron and a gradient boosting regressor, can synthesize higher-order moments extracted from a fully kinetic simulation. The accuracy of the models and their ability to generalize are evaluated and compared to a baseline model. When trained from more extreme simulations, the models showed better extrapolation in comparison to traditional simulations, indicating the importance of outliers. We learn that both models can capture heat flux and pressure tensor very well, with the gradient boosting regressor being the most stable of the two models in terms of the accuracy. The performance of the tested models in the regression task opens the way for new experiments in multi-scale modelling.

READ FULL TEXT

page 11

page 23

page 29

research
05/12/2021

Machine learning moment closure models for the radiative transfer equation I: directly learning a gradient based closure

In this paper, we take a data-driven approach and apply machine learning...
research
05/28/2019

Deep Learning Moment Closure Approximations using Dynamic Boltzmann Distributions

The moments of spatial probabilistic systems are often given by an infin...
research
10/07/2021

Learning invariance preserving moment closure model for Boltzmann-BGK equation

As one of the main governing equations in kinetic theory, the Boltzmann ...
research
09/02/2021

Machine learning moment closure models for the radiative transfer equation III: enforcing hyperbolicity and physical characteristic speeds

This is the third paper in a series in which we develop machine learning...
research
05/30/2021

Machine learning moment closure models for the radiative transfer equation II: enforcing global hyperbolicity in gradient based closures

This is the second paper in a series in which we develop machine learnin...
research
04/27/2021

Deep Learning of the Eddington Tensor in the Core-collapse Supernova Simulation

We trained deep neural networks (DNNs) as a function of the neutrino ene...

Please sign up or login with your details

Forgot password? Click here to reset