Thermoelectric properties of TaVO5and GdTaO4: An experimental verification of machine learning prediction

Autor: Allen, Travis, Graser, Jake, Issa, Ramsey, Sparks, Taylor D
Zdroj: Advances in Applied Ceramics; May 2024, Vol. 123 Issue: 1-3 p15-21, 7p
Abstrakt: Advancements in materials discovery tend to rely disproportionately on happenstance and luck rather than employing a systematic approach. Recently, advances in computational power have allowed researchers to build computer models to predict the material properties of any chemical formula. From energy minimization techniques to machine learning-based models, these algorithms have unique strengths and weaknesses. However, a computational model is only as good as its accuracy when compared to real-world measurements. In this work, we take two recommendations from a thermoelectric machine learning model, TaVO5and GdTaO4, and measure their thermoelectric properties of Seebeck coefficient, thermal conductivity, and electrical conductivity. We see that the predictions are mixed; thermal conductivities are correctly predicted, while electrical conductivities and Seebeck coefficients are not. Furthermore, we explore TaVO5’s unusually low thermal conductivity of 1.2 Wm−1K−1, and we discover a possible new avenue of research of a low thermal conductivity oxide family.
Databáze: Supplemental Index