Proximal Galerkin: A Structure-Preserving Finite Element Method for Pointwise Bound Constraints

IF 2.5 1区 数学 Q2 COMPUTER SCIENCE, THEORY & METHODS
Brendan Keith, Thomas M. Surowiec
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Abstract

The proximal Galerkin finite element method is a high-order, low iteration complexity, nonlinear numerical method that preserves the geometric and algebraic structure of pointwise bound constraints in infinite-dimensional function spaces. This paper introduces the proximal Galerkin method and applies it to solve free boundary problems, enforce discrete maximum principles, and develop a scalable, mesh-independent algorithm for optimal design with pointwise bound constraints. This paper also introduces the latent variable proximal point (LVPP) algorithm, from which the proximal Galerkin method derives. When analyzing the classical obstacle problem, we discover that the underlying variational inequality can be replaced by a sequence of second-order partial differential equations (PDEs) that are readily discretized and solved with, e.g., the proximal Galerkin method. Throughout this work, we arrive at several contributions that may be of independent interest. These include (1) a semilinear PDE we refer to as the entropic Poisson equation; (2) an algebraic/geometric connection between high-order positivity-preserving discretizations and certain infinite-dimensional Lie groups; and (3) a gradient-based, bound-preserving algorithm for two-field, density-based topology optimization. The complete proximal Galerkin methodology combines ideas from nonlinear programming, functional analysis, tropical algebra, and differential geometry and can potentially lead to new synergies among these areas as well as within variational and numerical analysis. Open-source implementations of our methods accompany this work to facilitate reproduction and broader adoption.

近端伽勒金:用于点式约束的结构保留有限元方法
近似 Galerkin 有限元方法是一种高阶、低迭代复杂度的非线性数值方法,它保留了无穷维函数空间中点式约束的几何和代数结构。本文介绍了近似 Galerkin 方法,并将其应用于解决自由边界问题,执行离散最大值原则,并开发出一种可扩展的、与网格无关的算法,用于具有点约束条件的优化设计。本文还介绍了潜变量近似点(LVPP)算法,近似 Galerkin 方法就是从该算法中衍生出来的。在分析经典障碍问题时,我们发现基本的变分不等式可以用一连串的二阶偏微分方程(PDEs)来代替,而这些二阶偏微分方程很容易离散化,并用近似 Galerkin 方法等来求解。在整个研究过程中,我们做出了几项可能会引起独立兴趣的贡献。这些贡献包括:(1) 我们称之为熵泊松方程的半线性 PDE;(2) 高阶保正离散化与某些无穷维李群之间的代数/几何联系;(3) 基于梯度、保界的双场密度拓扑优化算法。完整的近端 Galerkin 方法结合了非线性编程、函数分析、热带代数和微分几何的思想,有可能在这些领域之间以及在变分和数值分析中产生新的协同效应。我们的方法的开源实现伴随着这项工作,以促进复制和更广泛的采用。
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来源期刊
Foundations of Computational Mathematics
Foundations of Computational Mathematics 数学-计算机:理论方法
CiteScore
6.90
自引率
3.30%
发文量
46
审稿时长
>12 weeks
期刊介绍: Foundations of Computational Mathematics (FoCM) will publish research and survey papers of the highest quality which further the understanding of the connections between mathematics and computation. The journal aims to promote the exploration of all fundamental issues underlying the creative tension among mathematics, computer science and application areas unencumbered by any external criteria such as the pressure for applications. The journal will thus serve an increasingly important and applicable area of mathematics. The journal hopes to further the understanding of the deep relationships between mathematical theory: analysis, topology, geometry and algebra, and the computational processes as they are evolving in tandem with the modern computer. With its distinguished editorial board selecting papers of the highest quality and interest from the international community, FoCM hopes to influence both mathematics and computation. Relevance to applications will not constitute a requirement for the publication of articles. The journal does not accept code for review however authors who have code/data related to the submission should include a weblink to the repository where the data/code is stored.
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