English

Optimal prediction for radiative transfer: A new perspective on moment closure

Mathematical Physics 2023-08-17 v4 math.MP Numerical Analysis Computational Physics

Abstract

Moment methods are classical approaches that approximate the mesoscopic radiative transfer equation by a system of macroscopic moment equations. An expansion in the angular variables transforms the original equation into a system of infinitely many moments. The truncation of this infinite system is the moment closure problem. Many types of closures have been presented in the literature. In this note, we demonstrate that optimal prediction, an approach originally developed to approximate the mean solution of systems of nonlinear ordinary differential equations, can be used to derive moment closures. To that end, the formalism is generalized to systems of partial differential equations. Using Gaussian measures, existing linear closures can be re-derived, such as PNP_N, diffusion, and diffusion correction closures. This provides a new perspective on several approximations done in the process and gives rise to ideas for modifications to existing closures.

Keywords

Cite

@article{arxiv.0806.4707,
  title  = {Optimal prediction for radiative transfer: A new perspective on moment closure},
  author = {Martin Frank and Benjamin Seibold},
  journal= {arXiv preprint arXiv:0806.4707},
  year   = {2023}
}

Comments

15 pages; version 4: sections removed, major reformulations

R2 v1 2026-06-21T10:55:26.141Z