Abstract
Optimally designing applications of molten salts requires knowledge of their thermophysical properties over a wide range of temperatures and compositions. There exist significant gaps in existing databases and this data can be challenging to experimentally measure due to high temperatures, salt corrosivity, and salt hygroscopicity. Existing databases have been used to create Redlich–Kister (RK) models for mixture density showing improved accuracy with respect to ideal mixing assumptions, but these models require subcomponent data measurements for each new system, therefore lacking generality. In order to address generalizability and data sparsity, a transfer learning procedure is proposed to train deep neural networks (DNNs) using a combination of semi-empirical relationships (RK), data from the thermophysical arm of the molten salt thermal properties database and universal ab initio properties of component mixtures taken from the joint automated repository for various integrated simulations (JARVIS) classical force-field inspired descriptors database to predict density in molten salts. Herein, it is shown that DNNs predict molten salt density with an r2 over 0.99 and a mean absolute percentage error under 1%, outperforming alternative methods.
| Original language | English |
|---|---|
| Article number | e202500273 |
| Journal | ChemPhysChem |
| Volume | 26 |
| Issue number | 23 |
| DOIs | |
| State | Published - Nov 28 2025 |
Funding
J.B., R.C., I.I,, M.N.A. and S.L. acknowledge funding from the National Science Foundation (grant no. 2138456). S. L. acknowledges funding from the Nuclear Regulatory Commission, award number 31310025M0002.
Keywords
- inorganic materials
- machine learning
- molten salts
- nuclear energy
- transfer learning