Adaptive Splitting Integrators for Enhancing Sampling Efficiency of Modified Hamiltonian Monte Carlo Methods in Molecular Simulation

被引:16
|
作者
Akhmatskaya, Elena [1 ,2 ]
Fernandez-Pendas, Mario [1 ]
Radivojevic, Tijana [1 ]
Sanz-Serna, J. M. [3 ]
机构
[1] BCAM, Alameda Mazarredo 14, E-48009 Bilbao, Spain
[2] Basque Fdn Sci, Ikerbasque, Maria Diaz de Haro 3, E-48013 Bilbao, Spain
[3] Univ Carlos III Madrid, Dept Matemat, Ave Univ 30, E-28911 Leganes, Madrid, Spain
关键词
VILLIN HEADPIECE; ALGORITHMS; GSHMC;
D O I
10.1021/acs.langmuir.7b01372
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The modified Hamiltonian Monte Carlo (MHMC) methods, i.e., importance sampling methods that use modified Hamiltonians within a Hybrid Monte Carlo (HMC) framework, often outperform in sampling efficiency standard techniques such as molecular dynamics (MD) and HMC. The performance of MHMC may be enhanced further through the rational choice of the simulation parameters and by replacing the standard Verlet integrator with more sophisticated splitting algorithms. Unfortunately, it is not easy to identify the appropriate values of the parameters that appear in those algorithms. We propose a technique, that we call MAIA (Modified Adaptive Integration Approach), which, for a given simulation system and a given time step, automatically selects the optimal integrator within a useful family of two-stage splitting formulas. Extended MAIA (or e-MAIA) is an enhanced version of MAIA, which additionally supplies a value of the method-specific parameter that, for the problem under consideration, keeps the momentum acceptance rate at a user-desired level. The MAIA and e-MAIA algorithms have been implemented, with no computational overhead during simulations, in MultiHMC-GROMACS, a modified version of the popular software package GROMACS. Tests performed on well-known molecular models demonstrate the superiority of the suggested approaches over a range of integrators (both standard and recently developed), as well as their capacity to improve the sampling efficiency of GSHMC, a noticeable method for molecular simulation in the MHMC family. GSHMC combined with e-MAIA shows a remarkably good performance when compared to MD and HMC coupled with the appropriate adaptive integrators.
引用
收藏
页码:11530 / 11542
页数:13
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