Opportunities for machine learning to accelerate halide-perovskite commercialization and scale-up
Author(s)
Kumar, Rishi E.; Tiihonen, Armi; Sun, Shijing; Fenning, David P.; Liu, Zhe; Buonassisi, Tonio; ... Show more Show less
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While halide perovskites attract significant academic attention, examples of at-scale industrial production are still sparse. In this perspective, we review practical challenges hindering the commercialization of halide perovskites, and discuss how machine-learning (ML) tools could help: (1) active-learning algorithms that blend institutional knowledge and human expertise could help stabilize and rapidly update baseline manufacturing processes; (2) ML-powered metrology, including computer imaging, could help narrow the performance gap between large- and small-area devices; and (3) inference methods could help accelerate root-cause analysis by reconciling multiple data streams and simulations, focusing research effort on areas with highest probability for improvement. We conclude that to satisfy many of these challenges, incremental -- not radical -- adaptations of existing ML and statistical methods are needed. We identify resources to help develop in-house data-science talent, and propose how industry-academic partnerships could help adapt "ready-now" ML tools to specific industry needs, further improve process control by revealing underlying mechanisms, and develop "gamechanger" discovery-oriented algorithms to better navigate vast materials combination spaces and the literature.
Date issued
2022-05Department
Massachusetts Institute of Technology. Department of Mechanical EngineeringJournal
Matter
Publisher
Elsevier BV
Citation
Kumar, Rishi E., Tiihonen, Armi, Sun, Shijing, Fenning, David P., Liu, Zhe et al. 2022. "Opportunities for machine learning to accelerate halide-perovskite commercialization and scale-up." Matter, 5 (5).
Version: Author's final manuscript
ISSN
2590-2385
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