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- W4281253067 abstract "Symbolic regression techniques are constantly gaining ground in materials informatics as the machine learning counterpart capable of providing analytical equations exclusively derived from data. When the feature space is unknown, unsupervised learning is incorporated to discover and explore hidden connections between data points and may suggest a regional solution, specific for a group of data. In this work, we develop a Lennard–Jones fluid descriptor based on density and temperature values and investigate the similarity between data corresponding to diffusion coefficients. Descriptions are linked with the aid of clustering algorithms, which lead to fluid groups with similar behavior, bound to physical laws. Keeping in mind that the fluid data space goes over the gas, liquid, and supercritical states, we compare clustering results to this categorization and found that the proposed methods can detect the gas and liquid states, while distinct supercritical region characteristics are discovered, where fluid density and temperature affect the diffusion coefficient in a more complex way. The incorporation of symbolic regression algorithms on each cluster provides an in-depth investigation on fluid behavior, and regional expressions are proposed." @default.
- W4281253067 created "2022-05-23" @default.
- W4281253067 creator A5026302885 @default.
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- W4281253067 creator A5042776910 @default.
- W4281253067 creator A5059380345 @default.
- W4281253067 date "2022-06-01" @default.
- W4281253067 modified "2023-10-12" @default.
- W4281253067 title "A combined clustering/symbolic regression framework for fluid property prediction" @default.
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- W4281253067 doi "https://doi.org/10.1063/5.0096669" @default.
- W4281253067 hasPublicationYear "2022" @default.
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