Machine learning moment closure models for the radiative transfer equation IV: enforcing symmetrizable hyperbolicity in two dimensions
Juntao Huang

TL;DR
This paper extends machine learning-based moment closure models for the radiative transfer equation to two dimensions, ensuring symmetrizable hyperbolicity and improving upon classical models.
Contribution
It introduces a framework for learning closure models in 2D that guarantees symmetrizable hyperbolicity through explicit algebraic conditions.
Findings
The framework preserves the classical $P_N$ model structure.
It guarantees symmetrizable hyperbolicity via learned parameters.
Numerical results show improved accuracy over classical $P_N$ models.
Abstract
This is our fourth work in the series on machine learning (ML) moment closure models for the radiative transfer equation (RTE). In the first three papers of this series, we considered the RTE in slab geometry in 1D1V (i.e. one dimension in physical space and one dimension in angular space), and introduced a gradient-based ML moment closure [1], then enforced the hyperbolicity through a symmetrizer [2], or together with physical characteristic speeds by learning the eigenvalues of the Jacobian matrix [3]. Here, we extend our framework to the RTE in 2D2V (i.e. two dimensions in physical space and two dimensions in angular space). The main idea is to preserve the leading part of the classical model and modify only the highest-order block row. By analyzing the structural properties of the model, we show that its coefficient matrices are symmetric and admit a block-tridiagonal…
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