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An Automatic Learning System to Derive Multipole and Local Expansions for the Fast Multipole Method

机译:一种自动学习系统,可以为快速多极方法推导多极和本地扩展

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This paper introduces an automatic learning method based on genetic programming to derive local and multipole expansions required by the Fast Multipole Method (FMM). FMM is a well-known approximation method widely used in the field of computational physics, which was first developed to approximately evaluate the product of particular N × N dense matrices with a vector in O(N log N) operations. Later, it was applied successfully in many scientific fields such as simulation of physical systems, Computer Graphics and Molecular dynamics. However, FMM relies on the analytical expansions of the underlying kernel function defining the interactions between particles, which are not always obvious to derive. This is a major factor limiting the application of the FMM to many interesting problems. Thus, the proposed method here can be regarded as a useful tool helping practitioners to apply FMM to their own problems such as agent-based simulation of large complex systems. The preliminary results of the implemented system are very promising, and so we hope that the proposed method can be applied to other problems in different application domains.
机译:本文介绍了基于遗传规划由快速多方法(FMM)所需的派生本地和多极展开的自动学习方式。 FMM是公知的近似方法广泛用于计算物理,这是首次开发的领域大致评估特定N×N稠密矩阵的乘积与O(N log n)的操作的载体。后来,人们在许多科学领域的成功应用,如物理系统,计算机图形学和分子动力学模拟。然而,FMM依赖于底层核函数定义的颗粒之间的相互作用,这并不总是很明显导出的分析扩展。这是限制FMM的许多有趣的问题,该应用的主要因素。因此,这里所提出的方法可以被看作是一个有用的工具,帮助从业者FMM运用到自己的问题,比如大型复杂系统的基于代理的模拟。在实施系统的初步结果非常乐观,所以我们希望,该方法可以适用于不同的应用领域等问题。

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