Adaptive change of basis in entropy-based moment closures for linear kinetic equations
Graham W. Alldredge, Cory D. Hauck, Dianne P. O'Leary, Andr\'e L. Tits

TL;DR
This paper introduces an adaptive basis change method in entropy-based moment closures for linear kinetic equations, improving numerical stability and efficiency near the boundary of the realizable set.
Contribution
The authors develop a practical algorithm using a Cholesky-based basis change to enhance the conditioning of the dual problem in entropy-based moment closures.
Findings
Adaptive basis reduces the need for regularization.
Fixed quadrature scheme maintains computational consistency.
Algorithm performs well on benchmark problems.
Abstract
Entropy-based (M_N) moment closures for kinetic equations are defined by a constrained optimization problem that must be solved at every point in a space-time mesh, making it important to solve these optimization problems accurately and efficiently. We present a complete and practical numerical algorithm for solving the dual problem in one-dimensional, slab geometries. The closure is only well-defined on the set of moments that are realizable from a positive underlying distribution, and as the boundary of the realizable set is approached, the dual problem becomes increasingly difficult to solve due to ill-conditioning of the Hessian matrix. To improve the condition number of the Hessian, we advocate the use of a change of polynomial basis, defined using a Cholesky factorization of the Hessian, that permits solution of problems nearer to the boundary of the realizable set. We also…
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