商业化
推论
机器学习
计算机科学
比例(比率)
数据科学
卤化物
过程(计算)
人工智能
钙钛矿(结构)
基线(sea)
过程管理
知识管理
业务
工程类
政治学
营销
物理
操作系统
无机化学
化学
法学
量子力学
化学工程
作者
Rishi E. Kumar,Armi Tiihonen,Shijing Sun,David P. Fenning,Zhe Liu,Tonio Buonassisi
出处
期刊:Matter
[Elsevier]
日期:2022-05-01
卷期号:5 (5): 1353-1366
被引量:15
标识
DOI:10.1016/j.matt.2022.04.016
摘要
Summary
While halide perovskites attract significant academic attention, examples of industrial production at scale 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) computer-imaging methods with ML-based classification tools 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 efforts on the highest-probability areas. We conclude that to tackle many of these challenges, incremental—not radical—adaptations of existing ML methods are needed. We 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 the vast spaces of materials choices.
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