卤化物
三溴
钙钛矿(结构)
相对湿度
光致发光
材料科学
三碘化物
理论(学习稳定性)
光发射
湿度
光电子学
计算机科学
化学
机器学习
物理化学
物理
化学工程
无机化学
气象学
工程类
电解质
色素敏化染料
电极
作者
John M. Howard,Qiong Wang,Erica Lee,Richa Lahoti,Tao Gong,Meghna Srivastava,Antonio Abate,Marina S. Leite
出处
期刊:Cornell University - arXiv
日期:2020-10-08
摘要
Metal halide perovskite (MHP) optoelectronics may become a viable alternative to standard Si-based technologies, but the current lack of long-term stability precludes their commercial adoption. Exposure to standard operational stressors (light, temperature, bias, oxygen, and water) often instigate optical and electronic dynamics, calling for a systematic investigation into MHP photophysical processes and the development of quantitative models for their prediction. We resolve the moisture-driven light emission dynamics for both methylammonium lead tribromide and triiodide thin films as a function of relative humidity (rH). With the humidity and photoluminescence time series, we train recurrent neural networks and establish their ability to quantitatively predict the path of future light emission with <11% error over 12 hours. Together, our in situ rH-PL measurements and machine learning forecasting models provide a framework for the rational design of future stable perovskite devices and, thus, a faster transition towards commercial applications.
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