{"title":"FA1-xCsxSnI3太阳能电池的深度学习建模:铯成分和温度对器件效率的影响","authors":"A. Maoucha , T. Berghout , F. Djeffal","doi":"10.1016/j.micrna.2025.208304","DOIUrl":null,"url":null,"abstract":"<div><div>This work presents a comprehensive framework that integrates SCAPS-1D numerical simulations with deep learning (DL) techniques to investigate and optimize the performance of lead-free FA<sub>1-x</sub>Cs<sub>x</sub>SnI<sub>3</sub> perovskite solar cells (PSCs). The study focuses on the effects of varying cesium (Cs) mole fraction and operating temperature on key photovoltaic parameters, including power conversion efficiency (PCE), open-circuit voltage (Voc), short-circuit current density (Jsc), and fill factor (FF). A dataset comprising over 500 simulated device configurations was generated to capture the influence of multiple structural and environmental factors. A long short-term memory (LSTM)-based DL model was employed to classify device performance and identify the most critical parameters through feature importance analysis. The results revealed that the electron transport layer (ETL) had the strongest influence on overall efficiency, followed by HTL thickness, perovskite bandgap, and ETL thickness. Optimization showed that incorporating Cs at a mole fraction of 0.15 improved PCE from 15.3 % to 18.7 %, with corresponding enhancements in Voc (0.83 V–0.89 V), Jsc (22.1–23.8 mA/cm<sup>2</sup>), and FF (72.3 %–79.4 %). These findings highlight the synergistic role of compositional tuning and interfacial engineering in boosting PSC performance. The proposed DL-SCAPS framework offers a powerful tool for guiding the design of efficient, stable, and eco-friendly perovskite solar cells, which could be applied in flexible photovoltaics, building-integrated solar panels, and portable power generation systems.</div></div>","PeriodicalId":100923,"journal":{"name":"Micro and Nanostructures","volume":"207 ","pages":"Article 208304"},"PeriodicalIF":3.0000,"publicationDate":"2025-08-13","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Deep learning-enabled modeling of FA1-xCsxSnI3 solar cells: Impact of cesium composition and temperature on device efficiency\",\"authors\":\"A. Maoucha , T. Berghout , F. 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The results revealed that the electron transport layer (ETL) had the strongest influence on overall efficiency, followed by HTL thickness, perovskite bandgap, and ETL thickness. Optimization showed that incorporating Cs at a mole fraction of 0.15 improved PCE from 15.3 % to 18.7 %, with corresponding enhancements in Voc (0.83 V–0.89 V), Jsc (22.1–23.8 mA/cm<sup>2</sup>), and FF (72.3 %–79.4 %). These findings highlight the synergistic role of compositional tuning and interfacial engineering in boosting PSC performance. 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引用次数: 0
摘要
本研究提出了一个综合框架,将SCAPS-1D数值模拟与深度学习(DL)技术相结合,研究和优化无铅FA1-xCsxSnI3钙钛矿太阳能电池(PSCs)的性能。研究了不同铯(Cs)摩尔分数和工作温度对光伏关键参数的影响,包括功率转换效率(PCE)、开路电压(Voc)、短路电流密度(Jsc)和填充因子(FF)。生成了一个包含500多个模拟设备配置的数据集,以捕获多种结构和环境因素的影响。采用基于长短期记忆(LSTM)的深度学习模型对器件性能进行分类,并通过特征重要性分析识别出最关键的参数。结果表明,电子传输层(ETL)对总效率的影响最大,其次是HTL厚度、钙钛矿带隙和ETL厚度。优化结果表明,加入摩尔分数为0.15的Cs可使PCE从15.3%提高到18.7%,Voc (0.83 V - 0.89 V)、Jsc (22.1-23.8 mA/cm2)和FF(72.3% - 79.4%)也相应提高。这些发现强调了成分调整和界面工程在提高PSC性能方面的协同作用。所提出的DL-SCAPS框架为指导高效、稳定和环保的钙钛矿太阳能电池的设计提供了强大的工具,可应用于柔性光伏、建筑集成太阳能电池板和便携式发电系统。
Deep learning-enabled modeling of FA1-xCsxSnI3 solar cells: Impact of cesium composition and temperature on device efficiency
This work presents a comprehensive framework that integrates SCAPS-1D numerical simulations with deep learning (DL) techniques to investigate and optimize the performance of lead-free FA1-xCsxSnI3 perovskite solar cells (PSCs). The study focuses on the effects of varying cesium (Cs) mole fraction and operating temperature on key photovoltaic parameters, including power conversion efficiency (PCE), open-circuit voltage (Voc), short-circuit current density (Jsc), and fill factor (FF). A dataset comprising over 500 simulated device configurations was generated to capture the influence of multiple structural and environmental factors. A long short-term memory (LSTM)-based DL model was employed to classify device performance and identify the most critical parameters through feature importance analysis. The results revealed that the electron transport layer (ETL) had the strongest influence on overall efficiency, followed by HTL thickness, perovskite bandgap, and ETL thickness. Optimization showed that incorporating Cs at a mole fraction of 0.15 improved PCE from 15.3 % to 18.7 %, with corresponding enhancements in Voc (0.83 V–0.89 V), Jsc (22.1–23.8 mA/cm2), and FF (72.3 %–79.4 %). These findings highlight the synergistic role of compositional tuning and interfacial engineering in boosting PSC performance. The proposed DL-SCAPS framework offers a powerful tool for guiding the design of efficient, stable, and eco-friendly perovskite solar cells, which could be applied in flexible photovoltaics, building-integrated solar panels, and portable power generation systems.