First-Order Greedy Invariant-Domain Preserving Approximation for Hyperbolic Problems: Scalar Conservation Laws, and p-System

IF 3.3 2区 数学 Q1 MATHEMATICS, APPLIED Journal of Scientific Computing Pub Date : 2024-06-27 DOI:10.1007/s10915-024-02592-4
Jean-Luc Guermond, Matthias Maier, Bojan Popov, Laura Saavedra, Ignacio Tomas
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Abstract

The paper focuses on first-order invariant-domain preserving approximations of hyperbolic systems. We propose a new way to estimate the artificial viscosity that has to be added to make explicit, conservative, consistent numerical methods invariant-domain preserving and entropy inequality compliant. Instead of computing an upper bound on the maximum wave speed in Riemann problems, we estimate a minimum wave speed in the said Riemann problems such that the approximation satisfies predefined invariant-domain properties and predefined entropy inequalities. This technique eliminates non-essential fast waves from the construction of the artificial viscosity, while preserving pre-assigned invariant-domain properties and entropy inequalities.

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双曲问题的一阶贪婪无域保留逼近:标量守恒定律和 p 系统
本文的重点是双曲系统的一阶不变域保持近似。我们提出了一种估算人工粘度的新方法,这种方法必须添加人工粘度,才能使显式、保守、一致的数值方法保持不变域和符合熵不等式。我们不是计算黎曼问题中最大波速的上限,而是估计上述黎曼问题中的最小波速,从而使近似满足预定义的不变域属性和预定义的熵不等式。这种技术在构建人工粘性时消除了非必要的快波,同时保留了预先指定的不变域属性和熵不等式。
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来源期刊
Journal of Scientific Computing
Journal of Scientific Computing 数学-应用数学
CiteScore
4.00
自引率
12.00%
发文量
302
审稿时长
4-8 weeks
期刊介绍: Journal of Scientific Computing is an international interdisciplinary forum for the publication of papers on state-of-the-art developments in scientific computing and its applications in science and engineering. The journal publishes high-quality, peer-reviewed original papers, review papers and short communications on scientific computing.
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