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Driving Thermoelectric Optimization in AgSbTe2 via...
Journal article

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

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+x Te2+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 >30% higher than the best literature values for AgSb1+x Te2+y . Ag deficiency and suppression of secondary phases in AgSb1.021Te2.04 improve the electrical properties and reduce 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.

Authors

Pöhls J-H; Lo C-WT; MacIver M; Tseng Y-C; Mozharivskyj Y

Journal

Chemistry of Materials, Vol. 37, No. 6, pp. 2281–2289

Publisher

American Chemical Society (ACS)

Publication Date

March 25, 2025

DOI

10.1021/acs.chemmater.5c00022

ISSN

0897-4756

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