Accelerating multicomponent phase-coexistence calculations with physics-informed neural networks†

IF 3.2 3区 工程技术 Q2 CHEMISTRY, PHYSICAL Molecular Systems Design & Engineering Pub Date : 2024-12-24 DOI:10.1039/D4ME00168K
Satyen Dhamankar, Shengli Jiang and Michael A. Webb
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Abstract

Phase separation in multicomponent mixtures is of significant interest in both fundamental research and technology. Although the thermodynamic principles governing phase equilibria are straightforward, practical determination of equilibrium phases and constituent compositions for multicomponent systems is often laborious and computationally intensive. Here, we present a machine-learning workflow that simplifies and accelerates phase-coexistence calculations. We specifically analyze capabilities of neural networks to predict the number, composition, and relative abundance of equilibrium phases of systems described by Flory–Huggins theory. We find that incorporating physics-informed material constraints into the neural network architecture enhances the prediction of equilibrium compositions compared to standard neural networks with minor errors along the boundaries of the stable region. However, introducing additional physics-informed losses does not lead to significant further improvement. These errors can be virtually eliminated by using machine-learning predictions as a warm-start for a subsequent optimization routine. This work provides a promising pathway to efficiently characterize multicomponent phase coexistence.

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加速多组分相共存计算与物理通知神经网络†
多组分混合物的相分离在基础研究和技术上都具有重要意义。虽然控制相平衡的热力学原理是直截了当的,但实际确定多组分系统的平衡相和组分组成往往是费力和计算密集的。在这里,我们提出了一个简化和加速相共存计算的机器学习工作流程。我们特别分析了神经网络预测Flory-Huggins理论描述的系统平衡相的数量、组成和相对丰度的能力。我们发现,与沿稳定区域边界误差较小的标准神经网络相比,将物理信息材料约束纳入神经网络架构可以增强平衡组成的预测。然而,引入额外的物理损失并没有带来显著的进一步改善。通过使用机器学习预测作为后续优化程序的预热启动,实际上可以消除这些错误。这项工作为有效表征多组分相共存提供了一条有前途的途径。
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来源期刊
Molecular Systems Design & Engineering
Molecular Systems Design & Engineering Engineering-Biomedical Engineering
CiteScore
6.40
自引率
2.80%
发文量
144
期刊介绍: Molecular Systems Design & Engineering provides a hub for cutting-edge research into how understanding of molecular properties, behaviour and interactions can be used to design and assemble better materials, systems, and processes to achieve specific functions. These may have applications of technological significance and help address global challenges.
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