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Accelerating Photovoltaic Materials Development via High-Throughput Experiments and Machine-Learning-Assisted Diagnosis

Authors :
Sun, Shijing
Hartono, Noor T. P.
Ren, Zekun D.
Oviedo, Felipe
Buscemi, Antonio M.
Layurova, Mariya
Chen, De Xin
Ogunfunmi, Tofunmi
Thapa, Janak
Ramasamy, Savitha
Settens, Charles
DeCost, Brian L.
Kusne, Aaron Gilad
Liu, Zhe
Tian, Siyu I. P.
Peters, I. Marius
Correa-Baena, Juan-Pablo
Buonassisi, Tonio
Source :
Joule 3, 2019, 1437-1451
Publication Year :
2018

Abstract

Accelerating the experimental cycle for new materials development is vital for addressing the grand energy challenges of the 21st century. We fabricate and characterize 75 unique halide perovskite-inspired solution-based thin-film materials within a two-month period, with 87% exhibiting band gaps between 1.2 eV and 2.4 eV that are of interest for energy-harvesting applications. This increased throughput is enabled by streamlining experimental workflows, developing a set of precursors amenable to high-throughput synthesis, and developing machine-learning assisted diagnosis. We utilize a deep neural network to classify compounds based on experimental X-ray diffraction data into 0D, 2D, and 3D structures more than 10 times faster than human analysis and with 90% accuracy. We validate our methods using lead-halide perovskites and extend the application to novel lead-free compositions. The wider synthesis window and faster cycle of learning enables three noteworthy scientific findings: (1) we realize four inorganic layered perovskites, A3B2Br9 (A = Cs, Rb; B = Bi, Sb) in thin-film form via one-step liquid deposition; (2) we report a multi-site lead-free alloy series that was not previously described in literature, Cs3(Bi1-xSbx)2(I1-xBrx)9; and (3) we reveal the effect on bandgap (reduction to <2 eV) and structure upon simultaneous alloying on the B-site and X-site of Cs3Bi2I9 with Sb and Br. This study demonstrates that combining an accelerated experimental cycle of learning and machine-learning based diagnosis represents an important step toward realizing fully-automated laboratories for materials discovery and development.<br />Comment: NIPS 2018 Workshop: Machine Learning for Molecules and Materials

Details

Database :
arXiv
Journal :
Joule 3, 2019, 1437-1451
Publication Type :
Report
Accession number :
edsarx.1812.01025
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/j.joule.2019.05.014