Affiliation:
1. Department of Electrical and Computer Engineering University of Toronto Toronto Ontario M5S 3G8 Canada
2. King Abdullah University of Science and Technology (KAUST) Physical Science and Engineering Division KAUST Solar Center (KSC) Thuwal 23955 Saudi Arabia
Abstract
AbstractThe exploration of thermoelectric materials is challenging considering the large materials space, combined with added exponential degrees of freedom coming from doping and the diversity of synthetic pathways. Here, historical data is incorporated, and is updated using experimental feedback by employing error‐correction learning (ECL). This is achieved by learning from prior datasets and then adapting the model to differences in synthesis and characterization that are otherwise difficult to parameterize. This strategy is thus applied to discovering thermoelectric materials, where synthesis is prioritized at temperatures <300 °C. A previously unexplored chemical family of thermoelectric materials, PbSe:SnSb, is documented, finding that the best candidate in this chemical family, 2 wt% SnSb doped PbSe, exhibits a power factor more than 2× that of PbSe. The investigations herein reveal that a closed‐loop experimentation strategy reduces the required number of experiments to find an optimized material by a factor as high as 3× compared to high‐throughput searches powered by state‐of‐the‐art machine‐learning (ML) models. It is also observed that this improvement is dependent on the accuracy of the ML model in a manner that exhibits diminishing returns: once a certain accuracy is reached, factors that are instead associated with experimental pathways begin to dominate trends.
Funder
King Abdullah University of Science and Technology
Subject
Mechanical Engineering,Mechanics of Materials,General Materials Science
Cited by
3 articles.
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