Unglert N, Pártay L B, Madsen G K H
Institute of Materials Chemistry, TU Wien, Vienna 1060, Austria.
Department of Chemistry, University of Warwick, Coventry CV4 7AL, U.K.
J Chem Theory Comput. 2025 Aug 12;21(15):7304-7319. doi: 10.1021/acs.jctc.5c00588. Epub 2025 Jul 24.
Nested sampling (NS) has emerged as a powerful tool for exploring thermodynamic properties in materials science. However, its efficiency is often hindered by the limitations of Markov chain Monte Carlo (MCMC) sampling. In strongly multimodal landscapes, MCMC struggles to traverse energy barriers, leading to biased sampling and reduced accuracy. To address this issue, we introduce replica-exchange nested sampling (RENS), a novel enhancement that integrates replica-exchange moves into the NS framework. Inspired by Hamiltonian replica exchange methods, RENS connects independent NS simulations performed under different external conditions, facilitating ergodic sampling and significantly improving computational efficiency. We demonstrate the effectiveness of RENS using four test systems of increasing complexity: a one-dimensional toy system, periodic Lennard-Jones, the two-scale core-softened Jagla model, and a machine-learned interatomic potential for silicon. Our results show that RENS not only accelerates convergence but also allows the effective handling of challenging cases where independent NS fails, thereby expanding the applicability of NS to more realistic material models.
嵌套抽样(NS)已成为材料科学中探索热力学性质的有力工具。然而,其效率常常受到马尔可夫链蒙特卡罗(MCMC)抽样局限性的阻碍。在强多峰态势中,MCMC难以跨越能量壁垒,导致抽样有偏差且准确性降低。为解决这一问题,我们引入了复制交换嵌套抽样(RENS),这是一种将复制交换移动整合到NS框架中的新型增强方法。受哈密顿复制交换方法启发,RENS连接了在不同外部条件下执行的独立NS模拟,促进遍历性抽样并显著提高计算效率。我们使用四个复杂度不断增加的测试系统证明了RENS的有效性:一维玩具系统、周期性 Lennard-Jones 系统、两尺度核心软化 Jagla 模型以及硅的机器学习原子间势。我们的结果表明,RENS不仅加速了收敛,还能有效处理独立NS失败的具有挑战性的情况,从而将NS的适用性扩展到更现实的材料模型。