A Unifying Mathematical Definition of Particle Methods

Johannes Pahlke;Ivo F. Sbalzarini
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引用次数: 4

Abstract

Particle methods are a widely used class of algorithms for computer simulation of complex phenomena in various fields, such as fluid dynamics, plasma physics, molecular chemistry, and granular flows, using diverse simulation methods, including Smoothed Particle Hydrodynamics (SPH), Particle-in-Cell (PIC) methods, Molecular Dynamics (MD), and Discrete Element Methods (DEM). Despite the increasing use of particle methods driven by improved computing performance, the relation between these algorithms remains formally unclear, and a unifying formal definition of particle methods is lacking. Here, we present a rigorous mathematical definition of particle methods and demonstrate its importance by applying it to various canonical and non-canonical algorithms, using it to prove a theorem about multi-core parallelizability, and designing a principled scientific computing software based on it. We anticipate that our formal definition will facilitate the solution of complex computational problems and the implementation of understandable and maintainable software frameworks for computer simulation.
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粒子方法的统一数学定义
粒子方法是一类广泛使用的算法,用于计算机模拟各种领域的复杂现象,如流体动力学、等离子体物理学、分子化学和颗粒流,使用各种模拟方法,包括光滑粒子流体动力学(SPH)、细胞中粒子(PIC)方法、分子动力学(MD)和离散元方法(DEM)。尽管由于计算性能的提高,粒子方法的使用越来越多,但这些算法之间的关系在形式上仍然不清楚,并且缺乏粒子方法的统一形式定义。在这里,我们提出了粒子方法的严格数学定义,并通过将其应用于各种规范和非规范算法,用它来证明一个关于多核并行性的定理,并在此基础上设计一个有原则的科学计算软件,来证明其重要性。我们预计,我们的正式定义将有助于解决复杂的计算问题,并实现可理解和可维护的计算机模拟软件框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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