Department of Chemical Engineering, Imperial College London, London SW7 2AZ, United Kingdom.
J Phys Chem B. 2020 Oct 1;124(39):8628-8639. doi: 10.1021/acs.jpcb.0c05806. Epub 2020 Sep 16.
Equations of state (EoS) for fluids have been a staple of engineering design and practice for over a century. Available EoS are based on the fitting of a closed-form analytical expression to suitable experimental data. The mathematical structure and the underlying physical model significantly restrain the applicability and accuracy of the resulting EoS. This contribution explores the issues surrounding the substitution of machine-learned models for analytical EoS. In particular, we describe, as a proof of concept, the effectiveness of a machine-learned model to replicate the statistical associating fluid theory (SAFT-VR Mie) EoS for pure fluids. To quantify the effectiveness of machine-learning techniques, a large set of pseudodata is obtained from the EoS and used to train the machine-learning models. We employ artificial neural networks and Gaussian process regression to correlate and predict thermodynamic properties such as critical pressure and temperature, vapor pressures, and densities of pure model fluids; these are performed on the basis of molecular descriptors. The comparisons between the machine-learned EoS and the surrogate data set suggest that the proposed approach shows promise as a viable technique for the correlation and prediction of thermophysical properties of fluids.
状态方程(EOS)在工程设计和实践中已经有一个多世纪的历史了。现有的 EOS 是基于将封闭形式的解析表达式拟合到合适的实验数据。数学结构和潜在的物理模型极大地限制了所得 EOS 的适用性和准确性。本贡献探讨了用机器学习模型替代解析 EOS 的问题。特别是,我们描述了一个概念验证,即用机器学习模型复制纯流体统计关联流体理论(SAFT-VR Mie)EOS 的有效性。为了量化机器学习技术的有效性,从 EOS 中获得了大量的伪数据,并用于训练机器学习模型。我们采用人工神经网络和高斯过程回归来关联和预测纯模型流体的临界压力和温度、蒸气压和密度等热力学性质;这些都是基于分子描述符进行的。机器学习 EOS 与替代数据集之间的比较表明,所提出的方法有望成为一种可行的技术,用于关联和预测流体的热物理性质。