On Optimal Cell Average Decomposition for High-Order Bound-Preserving Schemes of Hyperbolic Conservation Laws
Shumo Cui, Shengrong Ding, Kailiang Wu

TL;DR
This paper systematically studies the problem of finding optimal cell average decompositions to enhance high-order bound-preserving schemes for hyperbolic conservation laws, improving efficiency and CFL conditions.
Contribution
It establishes the theory for optimal cell average decomposition in 1D and 2D, proving classic CAD optimal in some spaces and proposing new quasi-optimal CADs for others.
Findings
Classic CAD is optimal for 1D P^k and 2D Q^k spaces.
For 2D P^k spaces, the classic CAD is not optimal.
Proposed quasi-optimal CADs significantly improve efficiency with minimal implementation changes.
Abstract
This paper presents the first systematic study on the fundamental problem of seeking optimal cell average decomposition (OCAD), which arises from constructing efficient high-order bound-preserving (BP) numerical methods within Zhang--Shu framework. Since proposed in 2010, Zhang--Shu framework has attracted extensive attention and been applied to developing many high-order BP discontinuous Galerkin and finite volume schemes for various hyperbolic equations. An essential ingredient in the framework is the decomposition of the cell averages of the numerical solution into a convex combination of the solution values at certain quadrature points. The classic CAD originally proposed by Zhang and Shu has been widely used in the past decade. However, the feasible CADs are not unique, and different CAD would affect the theoretical BP CFL condition and thus the computational costs. Zhang and Shu…
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Taxonomy
TopicsComputational Fluid Dynamics and Aerodynamics · Advanced Numerical Methods in Computational Mathematics · Numerical methods for differential equations
