On the Definition of Velocity in Discrete-Time, Stochastic Langevin Simulations

IF 1.3 3区 物理与天体物理 Q3 PHYSICS, MATHEMATICAL
Niels Grønbech-Jensen
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引用次数: 0

Abstract

We systematically develop beneficial and practical velocity measures for accurate and efficient statistical simulations of the Langevin equation with direct applications to computational statistical mechanics and molecular dynamics sampling. Recognizing that the existing velocity measures for the most statistically accurate discrete-time Verlet-type algorithms are inconsistent with the simulated configurational coordinate, we seek to create and analyze new velocity companions that both improve existing methods as well as offer practical options for implementation in existing computer codes. The work is based on the set of GJ methods that, of all methods, for any time step within the stability criteria correctly reproduces the most basic statistical features of a Langevin system; namely correct Boltzmann distribution for harmonic potentials and correct transport in the form of drift and diffusion for linear potentials. Several new and improved velocities exhibiting correct drift are identified, and we expand on an earlier conclusion that, generally, only half-step velocities can exhibit correct, time-step independent Maxwell–Boltzmann distributions. Specific practical and efficient algorithms are given in familiar forms, and these are used to numerically validate the analytically derived expectations. One especially simple algorithm is highlighted, and the ability of one of the new on-site velocities to produce statistically correct averages for a particular damping value is specified.

论离散时间随机朗文模拟中的速度定义
我们系统地开发了有益而实用的速度测量方法,用于对朗格文方程进行精确而高效的统计模拟,并直接应用于计算统计力学和分子动力学采样。我们认识到,用于最精确统计离散时间维莱算法的现有速度测量方法与模拟构型坐标不一致,因此我们试图创建和分析新的速度同伴,既改进现有方法,又为在现有计算机代码中实施提供实用选择。这项工作以 GJ 方法集为基础,在所有方法中,该方法在稳定性标准内的任何时间步长都能正确再现朗格文系统的最基本统计特征;即谐波势的正确玻尔兹曼分布和线性势的漂移和扩散形式的正确传输。我们确定了几种新的和改进的速度,它们表现出正确的漂移,我们还扩展了早先的结论,即一般来说,只有半步速度才能表现出正确的、与时间步无关的麦克斯韦-玻尔兹曼分布。我们以熟悉的形式给出了具体实用的高效算法,并用这些算法对分析得出的期望值进行数值验证。重点介绍了一种特别简单的算法,并具体说明了一种新的现场速度在特定阻尼值下产生统计上正确的平均值的能力。
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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来源期刊
Journal of Statistical Physics
Journal of Statistical Physics 物理-物理:数学物理
CiteScore
3.10
自引率
12.50%
发文量
152
审稿时长
3-6 weeks
期刊介绍: The Journal of Statistical Physics publishes original and invited review papers in all areas of statistical physics as well as in related fields concerned with collective phenomena in physical systems.
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