Chopra Manan, Malshe Rohit, Reddy Allam S, de Pablo J J
Department of Chemical Engineering, University of Wisconsin, Madison, Wisconsin 53706-1691, USA.
J Chem Phys. 2008 Apr 14;128(14):144104. doi: 10.1063/1.2889943.
The free energy surfaces of a wide variety of systems encountered in physics, chemistry, and biology are characterized by the existence of deep minima separated by numerous barriers. One of the central aims of recent research in computational chemistry and physics has been to determine how transitions occur between deep local minima on rugged free energy landscapes, and transition path sampling (TPS) Monte-Carlo methods have emerged as an effective means for numerical investigation of such transitions. Many of the shortcomings of TPS-like approaches generally stem from their high computational demands. Two new algorithms are presented in this work that improve the efficiency of TPS simulations. The first algorithm uses biased shooting moves to render the sampling of reactive trajectories more efficient. The second algorithm is shown to substantially improve the accuracy of the transition state ensemble by introducing a subset of local transition path simulations in the transition state. The system considered in this work consists of a two-dimensional rough energy surface that is representative of numerous systems encountered in applications. When taken together, these algorithms provide gains in efficiency of over two orders of magnitude when compared to traditional TPS simulations.
物理、化学和生物学中遇到的各种各样的系统,其自由能面的特征是存在由众多势垒隔开的深极小值。计算化学和物理领域近期研究的核心目标之一,是确定在崎岖的自由能景观上深局部极小值之间如何发生转变,而过渡路径采样(TPS)蒙特卡罗方法已成为对此类转变进行数值研究的有效手段。类似TPS方法的许多缺点通常源于其高计算需求。本文提出了两种新算法,可提高TPS模拟的效率。第一种算法使用有偏射击移动,以使反应轨迹的采样更高效。第二种算法通过在过渡态引入局部过渡路径模拟的一个子集,被证明能大幅提高过渡态系综的准确性。本文所考虑的系统由一个二维粗糙能量面组成,它代表了应用中遇到的众多系统。综合起来,与传统的TPS模拟相比,这些算法在效率上提高了两个多数量级。