Dataset

Generalized DeepONets for Viscosity Prediction Using Learned Entropy Scaling References

Data-driven approaches used to predict thermophysical properties benefit from physical constraints because the extrapolation behavior can be improved and the amount of training data be reduced. In the present work, the well-established entropy scaling approach is incorporated into a neural network architecture to predict the shear viscosity of a diverse set of pure fluids over a large temperature and pressure range. Instead of imposing a particular form of the reference entropy and reference shear viscosity, these properties are learned. The resulting architecture can be interpreted as two linked DeepONets with generalization capabilities.

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Metadata Information

Field Value
DOI https://doi.org/10.18419/DARUS-5256
License URL
Source https://doi.org/10.18419/DARUS-5256
Version
Author Fleck, Maximilian, Spera, Marcelle, Darouich, Samir, Klenk, Timo, Hansen, Niels
Maintainer DaRUS
Language
MetadataPublished
Related Molecule
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No additional information available for this Dataset.
Data-Source Molecule ID Data-Source
The data in this table is sourced from UniChem at EBI.