Is the Classic Convex Decomposition Optimal for Bound-Preserving Schemes in Multiple Dimensions?
Shumo Cui, Shengrong Ding, Kailiang Wu

TL;DR
This paper demonstrates that the classic convex decomposition used in bound-preserving schemes is not optimal in multiple dimensions and introduces a new, more efficient decomposition that allows larger stable time steps.
Contribution
The authors develop a novel convex decomposition for multidimensional polynomial spaces that is proven to be optimal and more efficient than the classic tensor product approach.
Findings
The new decomposition achieves larger BP CFL conditions.
It requires fewer nodes than the classic decomposition.
Numerical tests confirm improved efficiency and stability.
Abstract
Since proposed in [X. Zhang and C.-W. Shu, J. Comput. Phys., 229: 3091--3120, 2010], the Zhang--Shu framework has attracted extensive attention and motivated many bound-preserving (BP) high-order discontinuous Galerkin and finite volume schemes for various hyperbolic equations. A key 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, which helps to rewrite high-order schemes as convex combinations of formally first-order schemes. The classic convex decomposition originally proposed by Zhang and Shu has been widely used over the past decade. It was verified, only for the 1D quadratic and cubic polynomial spaces, that the classic decomposition is optimal in the sense of achieving the mildest BP CFL condition. Yet, it remained unclear whether the classic decomposition…
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Taxonomy
TopicsAdvanced Numerical Methods in Computational Mathematics · Computational Fluid Dynamics and Aerodynamics · Numerical methods for differential equations
