卤化物
钙钛矿(结构)
结晶
材料科学
维数之咒
碘化物
相(物质)
计算机科学
工作流程
化学工程
无机化学
纳米技术
化学
机器学习
结晶学
工程类
有机化学
数据库
作者
Zhi Li,Philip W. Nega,Mansoor Ani Najeeb,Chaochao Dun,Matthias Zeller,Jeffrey J. Urban,Wissam A. Saidi,Joshua Schrier,Alexander J. Norquist,Emory M. Chan
标识
DOI:10.1021/acs.chemmater.1c03564
摘要
Metal halide perovskite (MHP) derivatives, a promising class of optoelectronic materials, have been synthesized with a range of dimensionalities that govern their optoelectronic properties and determine their applications. We demonstrate a data-driven approach combining active learning and high-throughput experimentation to discover, control, and understand the formation of phases with different dimensionalities in the morpholinium (morph) lead iodide system. Using a robot-assisted workflow, we synthesized and characterized two novel MHP derivatives that have distinct optical properties: a one-dimensional (1D) morphPbI3 phase ([C4H10NO][PbI3]) and a two-dimensional (2D) (morph)2PbI4 phase ([C4H10NO]2[PbI4]). To efficiently acquire the data needed to construct a machine learning (ML) model of the reaction conditions where the 1D and 2D phases are formed, data acquisition was guided by a diverse-mini-batch-sampling active learning algorithm, using prediction confidence as a stopping criterion. Querying the ML model uncovered the reaction parameters that have the most significant effects on dimensionality control. Based on these insights, we discuss possible reaction schemes that may selectively promote the formation of morph-Pb-I phases with different dimensionalities. The data-driven approach presented here, including the use of additives to manipulate dimensionality, will be valuable for controlling the crystallization of a range of materials over large reaction-composition spaces.
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