Thermoelectric properties of TaVO5 and GdTaO4: An experimental verification of machine learning prediction

Author:

Allen Travis1,Graser Jake2,Issa Ramsey2,Sparks Taylor D23

Affiliation:

1. Department of Mechanical Engineering, University of Utah, Salt Lake City, USA

2. Department of Materials Science and Engineering, University of Utah, Salt Lake City, USA

3. Chemistry Department, University of Liverpool, Liverpool, UK

Abstract

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, TaVO[Formula: see text] and GdTaO[Formula: see text], 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 TaVO[Formula: see text]’s unusually low thermal conductivity of 1.2 Wm[Formula: see text]K[Formula: see text], and we discover a possible new avenue of research of a low thermal conductivity oxide family.

Publisher

SAGE Publications

Subject

Industrial and Manufacturing Engineering,Ceramics and Composites

Reference46 articles.

1. Complex thermoelectric materials

2. Jones L, Moreno V, Zimmerman R. The f1 multi-mission radioisotope thermoelectric generator (MMRTG): a power subsystem enabler for the Mars Science Laboratory (MSL) mission, 2013.

3. Data-Driven Review of Thermoelectric Materials: Performance and Resource Considerations

4. Rare earth elements: critical resources for high technology

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