Institute for Molecular Engineering, University of Chicago, Chicago, Illinois 60637, USA.
Department of Chemical and Biomolecular Engineering, University of Notre Dame, Notre Dame, Indiana 46556, USA.
J Chem Phys. 2018 Apr 7;148(13):134108. doi: 10.1063/1.5020733.
A machine learning assisted method is presented for molecular simulation of systems with rugged free energy landscapes. The method is general and can be combined with other advanced sampling techniques. In the particular implementation proposed here, it is illustrated in the context of an adaptive biasing force approach where, rather than relying on discrete force estimates, one can resort to a self-regularizing artificial neural network to generate continuous, estimated generalized forces. By doing so, the proposed approach addresses several shortcomings common to adaptive biasing force and other algorithms. Specifically, the neural network enables (1) smooth estimates of generalized forces in sparsely sampled regions, (2) force estimates in previously unexplored regions, and (3) continuous force estimates with which to bias the simulation, as opposed to biases generated at specific points of a discrete grid. The usefulness of the method is illustrated with three different examples, chosen to highlight the wide range of applicability of the underlying concepts. In all three cases, the new method is found to enhance considerably the underlying traditional adaptive biasing force approach. The method is also found to provide improvements over previous implementations of neural network assisted algorithms.
提出了一种机器学习辅助方法,用于对具有崎岖自由能景观的系统进行分子模拟。该方法具有通用性,可以与其他高级采样技术结合使用。在本文提出的具体实现中,它在自适应偏置力方法的背景下进行了说明,在该方法中,不是依赖于离散的力估计,而是可以采用自正则化人工神经网络来生成连续的、估计的广义力。通过这样做,所提出的方法解决了自适应偏置力和其他算法中常见的几个缺点。具体来说,神经网络能够:(1)在稀疏采样区域中平滑估计广义力,(2)在以前未探索的区域中进行力估计,以及(3)使用连续的力估计来偏置模拟,而不是在离散网格的特定点生成偏置。该方法的有用性通过三个不同的示例来说明,这些示例选择旨在突出潜在概念的广泛适用性。在所有三种情况下,都发现新方法极大地增强了基础传统自适应偏置力方法。还发现该方法比以前的神经网络辅助算法的实现有所改进。