随机艾伦-卡恩方程的自适应时间步进方案的强收敛性

IF 2.3 2区 数学 Q1 MATHEMATICS, APPLIED
Chuchu Chen, Tonghe Dang, Jialin Hong
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引用次数: 0

摘要

根据 Beccari 等人 (2019) 的研究可知,对于随机 Allen-Cahn 方程,具有统一时间步长的标准显式欧拉方案(如指数欧拉和线性隐式欧拉方案)虽然计算效率高,但可能会发散。为了克服发散问题,本文提出并分析了自适应时间步长方案,该方案在每次迭代时调整时间步长,以控制数值解的不稳定性。在自适应时间步函数适当受限的前提下,建立了数值解在 $\mathscr{C}(\mathscr{O})$-norm 和 $\dot{H}^{\beta }(\mathscr{O})$-norm 下的先验估计,这在收敛性分析中起着关键作用。我们证明,自适应时间步进方案在时间上以 $\frac{beta }{2}$ 的阶强收敛,在空间上以 $\frac{beta }{d}$ 的阶强收敛,其中 $d$ ($d=1,2,3$)为维度,$\beta 在 (0,2]$ 内。数值实验表明,自适应时间步长方案实施简单,计算成本低于统一时间步长方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strong convergence of adaptive time-stepping schemes for the stochastic Allen–Cahn equation
It is known from Beccari et al. (2019) that the standard explicit Euler-type scheme (such as the exponential Euler and the linear-implicit Euler schemes) with a uniform timestep, though computationally efficient, may diverge for the stochastic Allen–Cahn equation. To overcome the divergence, this paper proposes and analyzes adaptive time-stepping schemes, which adapt the timestep at each iteration to control numerical solutions from instability. The a priori estimates in $\mathscr{C}(\mathscr{O})$-norm and $\dot{H}^{\beta }(\mathscr{O})$-norm of numerical solutions are established provided the adaptive timestep function is suitably bounded, which plays a key role in the convergence analysis. We show that the adaptive time-stepping schemes converge strongly with order $\frac{\beta }{2}$ in time and $\frac{\beta }{d}$ in space with $d$ ($d=1,2,3$) being the dimension and $\beta \in (0,2]$. Numerical experiments show that the adaptive time-stepping schemes are simple to implement and at a lower computational cost than a scheme with the uniform timestep.
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来源期刊
IMA Journal of Numerical Analysis
IMA Journal of Numerical Analysis 数学-应用数学
CiteScore
5.30
自引率
4.80%
发文量
79
审稿时长
6-12 weeks
期刊介绍: The IMA Journal of Numerical Analysis (IMAJNA) publishes original contributions to all fields of numerical analysis; articles will be accepted which treat the theory, development or use of practical algorithms and interactions between these aspects. Occasional survey articles are also published.
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