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首页> 外文期刊>Molecular Systems Design & Engineering >Towards a machine learned thermodynamics: exploration of free energy landscapes in molecular fluids, biological systems and for gas storage and separation in metal-organic frameworks
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Towards a machine learned thermodynamics: exploration of free energy landscapes in molecular fluids, biological systems and for gas storage and separation in metal-organic frameworks

机译:对机器学习热力学:探索的自由能景观分子液体、生物系统和加油存储和分离的有机配合框架

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摘要

In this review, we examine how machine learning (ML) can build on molecular simulation (MS) algorithms to advance tremendously our ability to predict the thermodynamic properties of a wide range of systems. The key thermodynamic properties that govern the evolution of a system and the outcome of a process include the entropy, the Helmholtz and the Gibbs free energy. However, their determination through advanced molecular simulation algorithms has remained challenging, since such methods are extremely computationally intensive. Combining MS with ML provides a solution that overcomes such challenges and, in turn, accelerates discovery through the rapid prediction of free energies. After presenting a brief overview of combined MS-ML protocols, we review how these approaches allow for the accurate prediction of these thermodynamic functions and, more broadly, of free energy landscapes for molecular and biological systems. We then discuss extensions of this approach to systems relevant to energy and environmental applications, i.e. gas storage and separation in nanoporous materials, such as metal-organic frameworks and covalent organic frameworks. We finally show in the last part of the review how ML models can suggest new ways to explore free energy landscapes, identify novel pathways and provide new insight into assembly processes.
机译:在本文中,我们检查机器学习的方式(毫升)可以建立在分子模拟(女士)进我们的能力有极大的算法预测的热力学性质范围的系统。性能管理系统的进化和一个过程的结果包括熵,亥姆赫兹和吉布斯自由能。他们决心通过先进的分子仿真算法仍然具有挑战性,因为这样非常计算方法密集的。解决方案,克服了这样的挑战,通过快速加速发现自由能量的预测。我们简要概述MS-ML协议相结合,这些方法允许如何进行的这些热力学的准确预测功能,更广泛地说,自由能分子和生物系统的景观。然后我们讨论这种方法的扩展系统与能源和环境有关应用程序,即气体存储和分离纳米多孔材料,如有机配合框架和共价有机框架。最后显示的最后一部分审查如何毫升模型可以显示新方法探索自由能源景观识别途径和小说提供新的见解的组装过程。

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