Hierarchical matrix completion for the prediction of properties of binary mixtures

IF 3.9 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Dominik Gond , Jan-Tobias Sohns , Heike Leitte , Hans Hasse , Fabian Jirasek
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Abstract

Predicting the thermodynamic properties of mixtures is crucial for process design and optimization in chemical engineering. Machine learning (ML) methods are gaining increasing attention in this field, but experimental data for training are often scarce, which hampers their application. In this work, we introduce a novel generic approach for improving data-driven models: inspired by the ancient rule ”similia similibus solvuntur” (Latin, English: like dissolves like), we lump components that behave similarly into chemical classes and model them jointly in the first step of a hierarchical approach. While the information on class affiliations can stem in principle from any source, we demonstrate how classes can reproducibly be defined based on mixture data alone by agglomerative clustering. The information from this clustering step is then used as an informed prior for fitting the individual data. We demonstrate the benefits of this approach by applying it in connection with a matrix completion method (MCM) for predicting isothermal activity coefficients at infinite dilution in binary mixtures. Using clustering leads to significantly improved predictions compared to an MCM without clustering. Furthermore, the chemical classes learned from the clustering give exciting insights into what matters on the molecular level for modeling given mixture properties.
二元混合物性质预测的层次矩阵补全
预测混合物的热力学性质对化工过程的设计和优化至关重要。机器学习(ML)方法在这一领域受到越来越多的关注,但用于训练的实验数据往往很少,这阻碍了它们的应用。在这项工作中,我们引入了一种新的通用方法来改进数据驱动的模型:受古代规则“similia similibus solvuntur”(拉丁语,英语:like dis溶化like)的启发,我们将行为相似的组件集中到化学类别中,并在分层方法的第一步共同建模。虽然关于类从属关系的信息原则上可以来自任何来源,但我们演示了如何通过聚集聚类仅基于混合数据可重复地定义类。然后,这个聚类步骤的信息被用作拟合单个数据的知情先验。我们证明了这种方法的好处,将其与矩阵补全法(MCM)相结合,用于预测二元混合物中无限稀释的等温活度系数。与没有聚类的MCM相比,使用聚类可以显著改善预测。此外,从聚类中学习到的化学类给我们提供了令人兴奋的见解,让我们了解在分子水平上对给定混合物性质建模的影响。
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来源期刊
Computers & Chemical Engineering
Computers & Chemical Engineering 工程技术-工程:化工
CiteScore
8.70
自引率
14.00%
发文量
374
审稿时长
70 days
期刊介绍: Computers & Chemical Engineering is primarily a journal of record for new developments in the application of computing and systems technology to chemical engineering problems.
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