Howard John M, Wang Qiong, Srivastava Meghna, Gong Tao, Lee Erica, Abate Antonio, Leite Marina S
Department of Materials Science and Engineering, University of Maryland, College Park, Maryland 20742, United States.
Institute for Research in Electronics and Applied Physics, University of Maryland, College Park, Maryland 20742, United States.
J Phys Chem Lett. 2022 Mar 10;13(9):2254-2263. doi: 10.1021/acs.jpclett.2c00131. Epub 2022 Mar 3.
Metal halide perovskite (MHP) photovoltaics 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 18% error over 4 h. Together, our 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 toward commercial applications.
金属卤化物钙钛矿(MHP)光伏技术可能成为标准硅基技术的可行替代方案,但目前缺乏长期稳定性阻碍了它们的商业应用。暴露于标准操作应激源(光、温度、偏压、氧气和水)通常会引发光学和电子动力学,这就需要对MHP光物理过程进行系统研究,并开发用于预测的定量模型。我们解析了溴化三甲铵铅和碘化铅薄膜在相对湿度(rH)作用下由水分驱动的发光动力学。利用湿度和光致发光时间序列,我们训练了循环神经网络,并确定了它们在4小时内以18%的误差定量预测未来发光路径的能力。我们的rH-PL测量和机器学习预测模型共同为未来稳定的钙钛矿器件的合理设计提供了一个框架,从而加快向商业应用的过渡。