Maximum-Principle-Preserving Local Discontinuous Galerkin Methods for Allen-Cahn Equations

Jie Du , Eric Chung , Yang Yang

Communications on Applied Mathematics and Computation ›› 2021, Vol. 4 ›› Issue (1) : 353 -379.

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Communications on Applied Mathematics and Computation ›› 2021, Vol. 4 ›› Issue (1) : 353 -379. DOI: 10.1007/s42967-020-00118-x
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Maximum-Principle-Preserving Local Discontinuous Galerkin Methods for Allen-Cahn Equations

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Abstract

In this paper, we study the classical Allen-Cahn equations and investigate the maximum-principle-preserving (MPP) techniques. The Allen-Cahn equation has been widely used in mathematical models for problems in materials science and fluid dynamics. It enjoys the energy stability and the maximum-principle. Moreover, it is well known that the Allen-Cahn equation may yield thin interface layer, and nonuniform meshes might be useful in the numerical solutions. Therefore, we apply the local discontinuous Galerkin (LDG) method due to its flexibility on h-p adaptivity and complex geometry. However, the MPP LDG methods require slope limiters, then the energy stability may not be easy to obtain. In this paper, we only discuss the MPP technique and use numerical experiments to demonstrate the energy decay property. Moreover, due to the stiff source given in the equation, we use the conservative modified exponential Runge-Kutta methods and thus can use relatively large time step sizes. Thanks to the conservative time integration, the bounds of the unknown function will not decay. Numerical experiments will be given to demonstrate the good performance of the MPP LDG scheme.

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Jie Du, Eric Chung, Yang Yang. Maximum-Principle-Preserving Local Discontinuous Galerkin Methods for Allen-Cahn Equations. Communications on Applied Mathematics and Computation, 2021, 4(1): 353-379 DOI:10.1007/s42967-020-00118-x

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Funding

National Natural Science Foundation of China(11801302)

Hong Kong RGC General Research Fund(14304217)

National Science Foundation(DMS-1818467)

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