arXiv Open Access 2024

Prediction of Activity Coefficients by Similarity-Based Imputation using Quantum-Chemical Descriptors

Nicolas Hayer Thomas Specht Justus Arweiler Dominik Gond Hans Hasse +1 lainnya
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Abstrak

In this work, we introduce a novel approach for predicting thermodynamic properties of binary mixtures, which we call the similarity-based method (SBM). The method is based on quantifying the pairwise similarity of components, which we achieve by comparing quantum-chemical descriptors of the components, namely $σ$-profiles. The basic idea behind the approach is that mixtures with similar pairs of components will have similar thermodynamic properties. The SBM is trained on a matrix that contains some data for a given property for different binary mixtures; the missing entries are then predicted by the SBM. As an example, we consider the prediction of isothermal activity coefficients at infinite dilution ($γ^\infty_{ij}$) and show that the SBM outperforms the well-established physical methods modified UNIFAC (Dortmund) and COSMO-SAC-dsp. In this case, the matrix is only sparsely occupied, and it is shown that the SBM works also if only a limited number of data for similar mixtures is available. The SBM idea can be transferred to any mixture property and is a powerful tool for generating essential data for many applications.

Topik & Kata Kunci

Penulis (6)

N

Nicolas Hayer

T

Thomas Specht

J

Justus Arweiler

D

Dominik Gond

H

Hans Hasse

F

Fabian Jirasek

Format Sitasi

Hayer, N., Specht, T., Arweiler, J., Gond, D., Hasse, H., Jirasek, F. (2024). Prediction of Activity Coefficients by Similarity-Based Imputation using Quantum-Chemical Descriptors. https://arxiv.org/abs/2412.04993

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2024
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en
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arXiv
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Open Access ✓