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Computing statistics for Hamiltonian systems: A case study

机译:哈密​​顿系统的计算统计:一个案例研究

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We present the results of a set of numerical experiments designed to investigate the appropriateness of various integration schemes for molecular dynamics simulations. In particular, we wish to identify which numerical methods, when applied to an ergodic Hamiltonian system, sample the state-space in an unbiased manner. We do this by describing two Hamiltonian system for which we can analytically compute some of the important statistical features of its trajectories, and then applying various numerical integration schemes to them. We can then compare the results from the numerical simulation against the exact results for the system and see how closely they agree. The statistic we study is the empirical distribution of particle velocity over long trajectories of the systems. We apply four methods: one symplectic method (Stormer-Verlet) and three energy-conserving step-and-project methods. The symplectic method performs better on both test problems, accurately computing empirical distributions for all step-lengths consistent with stability. Depending on the test system and the method, the step-and-project methods are either no longer ergodic for any step length (thus giving the wrong empirical distribution) or give the correct distribution only in the limit of step-size going to zero. (c) 2006 Elsevier B.V. All rights reserved.
机译:我们提出了一组数值实验的结果,旨在研究分子动力学模拟的各种积分方案的适用性。特别是,我们希望确定将哪些数值方法应用于遍历的哈密顿系统时,以无偏方式对状态空间进行采样。为此,我们描述了两个哈密顿系统,可以对其进行分析,计算出其轨迹的一些重要统计特征,然后对它们应用各种数值积分方案。然后,我们可以将数值模拟的结果与系统的精确结果进行比较,并观察它们之间的接近程度。我们研究的统计数据是粒子速度在系统的长轨迹上的经验分布。我们采用四种方法:一种辛方法(Stormer-Verlet)和三种节能分步计划方法。辛方法在两个测试问题上均表现更好,可以针对与稳定性一致的所有步长精确计算经验分布。根据测试系统和方法的不同,步进和投影方法对于任何步长不再是遍历遍历的(因此给出了错误的经验分布),或者仅在步长变为零的极限内给出正确的分布。 (c)2006 Elsevier B.V.保留所有权利。

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