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An Ergodic Sampling Scheme for Constrained Hamiltonian Systems with Applications to Molecular Dynamics

机译:约束哈密顿系统的遍历采样方案及其在分子动力学中的应用

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This article addresses the problem of computing the Gibbs distribution of a Hamiltonian system that is subject to holonomic constraints. In doing so, we extend recent ideas of Cancès et al. (M2AN 41(2), 351–389, 2007) who could prove a Law of Large Numbers for unconstrained molecular systems with a separable Hamiltonian employing a discrete version of Hamilton’s principle. Studying ergodicity for constrained Hamiltonian systems, we specifically focus on the numerical discretization error: even if the continuous system is perfectly ergodic this property is typically not preserved by the numerical discretization. The discretization error is taken care of by means of a hybrid Monte-Carlo algorithm that allows for sampling bias-free expectation values with respect to the Gibbs measure independently of the (stable) step-size. We give a demonstration of the sampling algorithm by calculating the free energy profile of a small peptide.
机译:本文解决了计算受完整约束的哈密顿系统的吉布斯分布的问题。在此过程中,我们扩展了Cancès等人的最新观点。 (M2AN 41(2),351–389,2007)可以证明哈密顿量为可分离的无约束分子系统的大数定律,采用离散形式的哈密顿原理。在研究受约束的哈密顿系统的遍历性时,我们特别关注数值离散化误差:即使连续系统是完全遍历的,该属性通常也无法通过数值离散化保留。离散误差通过混合蒙特卡洛算法来解决,该算法允许相对于(稳定的)步长独立于Gibbs度量采样无偏差期望值。我们通过计算小肽的自由能图来演示采样算法。

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