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Modeling and enhanced sampling of molecular systems with smooth and nonlinear data-driven collective variables

机译:具有平滑和非线性数据驱动的集体变量的分子系统的建模和增强采样

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摘要

Collective variables (CVs) are low-dimensional representations of the state of a complex system, which help us rationalizemolecular conformations and sample free energy landscapes with molecular dynamics simulations. Given their importance, there is need for systematic methods that effectively identify CVs for complex systems. In recent years, nonlinear manifold learning has shown its ability to automatically characterize molecular collective behavior. Unfortunately, these methods fail to provide a differentiable function mapping high-dimensional configurations to their low-dimensional representation, as required in enhanced sampling methods. We introduce a methodology that, starting from an ensemble representative of molecular flexibility, builds smooth and nonlinear data-driven collective variables (SandCV) from the output of nonlinear manifold learning algorithms.We demonstrate the method with a standard benchmark molecule, alanine dipeptide, and show how it can be non-intrusively combined with off-the-shelf enhanced sampling methods, here the adaptive biasing force method. We illustrate how enhanced sampling simulations with SandCV can explore regions that were poorly sampled in the original molecular ensemble. We further explore the transferability of SandCV from a simpler system, alanine dipeptide in vacuum, to a more complex system, alanine dipeptide in explicit water.
机译:集体变量(CV)是复杂系统状态的低维表示,它可以帮助我们合理化分子构象,并通过分子动力学模拟对自由能态进行采样。考虑到它们的重要性,需要有系统的方法来有效地识别复杂系统的CV。近年来,非线性流形学习已显示出自动表征分子集体行为的能力。不幸的是,这些方法无法提供将高维配置映射到其低维表示的微分函数,这是增强采样方法所要求的。我们引入了一种方法,该方法从代表分子灵活性的整体开始,根据非线性流形学习算法的输出构建平滑且非线性的数据驱动的集体变量(SandCV),并使用标准基准分子,丙氨酸二肽和展示了如何将其与现成的增强采样方法(此处为自适应偏压力方法)进行非侵入式组合。我们说明了使用SandCV进行增强的采样模拟如何能够探索在原始分子集合中采样较差的区域。我们进一步探索了SandCV从更简单的系统(真空中的丙氨酸二肽)到更复杂的系统(显性水中的丙氨酸二肽)的转移性。

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