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A new approach for the prediction of partition functions using machine learning techniques

机译:一种使用机器学习技术预测分区功能的新方法

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Using machine learning (ML), we predict the partition functions and, thus, all thermodynamic properties of atomic and molecular fluids over a wide range of temperatures and pressures. Our approach is based on training neural networks using, as a reference, the results of a few flat-histogram simulations. The neural network weights so obtained are then used to predict fluid properties that are shown to be in excellent agreement with the experiment and with simulation results previously obtained on argon, carbon dioxide, and water. In particular, the ML predictions for the Gibbs free energy, Helmholtz free energy, and entropy are shown to be highly accurate over a wide range of conditions and states for bulk phases as well as for the conditions of phase coexistence. Our ML approach thus provides access instantly to G, A, and S, thereby eliminating the need to carry out any additional simulations to explore the dependence of the fluid properties on the conditions of temperature and pressure. This is of particular interest, for e.g., the screening of new materials, as well as in the parameterization of force fields, for which this ML approach provides a rapid way to assess the impact of new sets of parameters on the system properties. Published by AIP Publishing.
机译:使用机器学习(ML),我们预测分区功能,从而预测各种温度和压力的原子和分子液的所有热力学性质。我们的方法是基于培训神经网络,作为参考,少数平直直方图模拟的结果。然后使用如此获得的神经网络重量来预测液体性质,其与实验相一致,并且先前在氩气,二氧化碳和水上获得的模拟结果。特别地,吉布斯自由能量,亥姆霍兹自由能和熵的M1预测被证明在广泛的条件下高度准确,并且用于批量相以及相位共存的条件。因此,我们的ML方法可以立即提供对G,A和S的访问,从而消除了执行任何额外模拟以探索流体性质对温度和压力条件的依赖性。例如,这对于例如,筛选新材料以及该ML方法的筛选新材料,以及该ML方法的参数化提供了一种快速评估新参数对系统性质的影响的快速方法。通过AIP发布发布。

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