Department of Chemical and Biological Engineering, Princeton University, Princeton, New Jersey 08544, USA.
J Chem Phys. 2011 Apr 7;134(13):135103. doi: 10.1063/1.3574394.
Nonlinear dimensionality reduction techniques can be applied to molecular simulation trajectories to systematically extract a small number of variables with which to parametrize the important dynamical motions of the system. For molecular systems exhibiting free energy barriers exceeding a few k(B)T, inadequate sampling of the barrier regions between stable or metastable basins can lead to a poor global characterization of the free energy landscape. We present an adaptation of a nonlinear dimensionality reduction technique known as the diffusion map that extends its applicability to biased umbrella sampling simulation trajectories in which restraining potentials are employed to drive the system into high free energy regions and improve sampling of phase space. We then propose a bootstrapped approach to iteratively discover good low-dimensional parametrizations by interleaving successive rounds of umbrella sampling and diffusion mapping, and we illustrate the technique through a study of alanine dipeptide in explicit solvent.
非线性维数约简技术可应用于分子模拟轨迹,以系统地提取少数变量,用这些变量来参数化系统的重要动力学运动。对于表现出自由能势垒超过几个 kBT 的分子体系,如果在稳定或亚稳定盆地之间的势垒区域中采样不足,可能会导致对自由能景观的全局描述不佳。我们提出了一种非线性维数约简技术的改进,称为扩散映射,它扩展了其在有偏伞状采样模拟轨迹中的应用,其中约束势被用来驱动系统进入高自由能区域,以改善相空间的采样。然后,我们提出了一种自举方法,通过交错连续轮次的伞状采样和扩散映射来迭代地发现良好的低维参数化,并且通过在显式溶剂中对丙氨酸二肽的研究来说明该技术。