Reproducing kernel method for the numerical solution of the 1D Swift–Hohenberg equation

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摘要

The Swift–Hohenberg equation is a nonlinear partial differential equation of fourth order that models the formation and evolution of patterns in a wide range of physical systems. We study the 1D Swift–Hohenberg equation in order to demonstrate the utility of the reproducing kernel method. The solution is represented in the form of a series in the reproducing kernel space, and truncating this series representation we obtain the n-term approximate solution. In the first approach, we aim to explain how to construct a reproducing kernel method without using Gram-Schmidt orthogonalization, as orthogonalization is computationally expensive. This approach will therefore be most practical for obtaining numerical solutions. Gram-Schmidt orthogonalization is later applied in the second approach, despite the increased computational time, as this approach will prove theoretically useful when we perform a formal convergence analysis of the reproducing kernel method for the Swift–Hohenberg equation. We demonstrate the applicability of the method through various test problems for a variety of initial data and parameter values.

论文关键词:Swift–Hohenberg equation,Reproducing kernel method,Boundary value problem,Convergence analysis

论文评审过程:Received 19 November 2017, Revised 1 May 2018, Accepted 1 July 2018, Available online 1 August 2018, Version of Record 1 August 2018.

论文官网地址:https://doi.org/10.1016/j.amc.2018.07.006