Zooming across the Free-Energy Landscape: Shaving Barriers, and Flooding Valleys
收藏Figshare2018-08-06 更新2026-04-29 收录
下载链接:
https://figshare.com/articles/dataset/Zooming_across_the_Free-Energy_Landscape_Shaving_Barriers_and_Flooding_Valleys/6938384
下载链接
链接失效反馈官方服务:
资源简介:
A robust importance-sampling algorithm for mapping free-energy surfaces over geometrical variables, coined meta-eABF, is introduced. This algorithm shaves the free-energy barriers and floods valleys by incorporating a history-dependent potential term in the extended adaptive biasing force (eABF) framework. Numerical applications on both toy models and nontrivial examples indicate that meta-eABF explores the free-energy surface significantly faster than either eABF or metadynamics (MtD) alone, without the need to stratify the reaction pathway. In some favorable cases, meta-eABF can be as much as five times faster than other importance-sampling algorithms. Many of the shortcomings inherent to eABF and MtD, like kinetic trapping in regions of configurational space already adequately sampled, the requirement of prior knowledge of the free-energy landscape to set up the simulation, are readily eliminated in meta-eABF. Meta-eABF, therefore, represents an appealing solution for a broad range of applications, especially when both eABF and MtD fail to achieve the desired result.
创建时间:
2018-08-06



