钙钛矿(结构)
光伏系统
表征(材料科学)
工作(物理)
材料科学
卤化物
集合(抽象数据类型)
电阻抗
功率(物理)
计算机科学
光电子学
计算物理学
模型参数
估计理论
光伏
载流子
生物系统
电子工程
金属
价值(数学)
纳米技术
太阳能电池
工程物理
最大功率原理
作者
Jonas Diekmann,Zitong Yang,Nurlan Tokmoldin,Ziyi Liu,Francisco Peña-Camargo,Zhuofan Xiong,Paria Forozi Sowmeeh,Hongsheng Li,Qiuqiang Kong,Xiaoliang Ju,Florian Läng,Safa Shoaee,Dieter Neher,Martin Stolterfoht
标识
DOI:10.1021/acsenergylett.6c00075
摘要
Metal halide perovskites are highly promising for photovoltaics, yet their complex physics makes comprehensive device characterization challenging. Here, we introduce a machine learning approach that enables holistic, high-precision characterization of perovskite solar cells from an impedance (EIS) measurement. By training a Random Forests Median Leaf Value model on over 50,000 drift-diffusion simulations, our model simultaneously predicts 12 critical device parameters, including ion dynamics and densities, carrier mobilities, and recombination properties, with high accuracy (R2 > 0.99). This approach advances prior work by extracting a more complete parameter set while alleviating the nonuniqueness problem through information-rich EIS input features. We rigorously validate the model against experimental values and closed-loop verification. Applying this technique to triple-cation perovskites with varying compositions reveals intriguing underlying trends, demonstrating its power to uncover complex structure–property relationships. This work establishes ML-driven frameworks for rapid, reliable device analysis to accelerate photovoltaic optimization.
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