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Driving Thermoelectric Optimization in AgSbTe2 via Design of Experiments and Machine Learning

Authors :
Pöhls, Jan-Hendrik
Lo, Chun-Wan Timothy
MacIver, Marissa
Tseng, Yu-Chih
Mozharivskyj, Yurij
Publication Year :
2024

Abstract

Systemic optimization of thermoelectric materials is arduous due to their conflicting electrical and thermal properties. A strategy based on Design of Experiments and machine learning is developed to optimize the thermoelectric efficiency of AgSb1+xTe2+y, an established thermoelectric. From eight experiments, high thermoelectric performance in AgSb1.021Te2.04 is revealed with a peak and average thermoelectric figure of merit of 1.61 +/- 0.24 at 600 K and 1.18 +/- 0.18 (300 - 623 K), respectively, which is over 30% higher than the best literature values for AgSb1+xTe2+y. Ag-deficiency and suppression of secondary phases in AgSb1.021Te2.04 improves the electrical properties and reduces the thermal conductivity (~0.4 W m-1 K-1). Our strategy is implemented into an open-source graphical user interface, and it can be used to optimize the methodologies, properties, and processes across different scientific fields.<br />Comment: 15 pages, 4 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.04699
Document Type :
Working Paper