Ren Chao, Wu Yiyuan, Zou Jijun, Cai Bowen
Jiangxi Province Key Laboratory of Nuclear Physics and Technology, East China University of Technology, Nanchang 330013, China.
Engineering Research Center of Nuclear Technology Application, East China Institute of Technology, Ministry of Education, Nanchang 330013, China.
Materials (Basel). 2024 Jun 2;17(11):2686. doi: 10.3390/ma17112686.
Halide perovskite materials have broad prospects for applications in various fields such as solar cells, LED devices, photodetectors, fluorescence labeling, bioimaging, and photocatalysis due to their bandgap characteristics. This study compiled experimental data from the published literature and utilized the excellent predictive capabilities, low overfitting risk, and strong robustness of ensemble learning models to analyze the bandgaps of halide perovskite compounds. The results demonstrate the effectiveness of ensemble learning decision tree models, especially the gradient boosting decision tree model, with a root mean square error of 0.090 eV, a mean absolute error of 0.053 eV, and a determination coefficient of 93.11%. Research on data related to ratios calculated through element molar quantity normalization indicates significant influences of ions at the X and B positions on the bandgap. Additionally, doping with iodine atoms can effectively reduce the intrinsic bandgap, while hybridization of the s and p orbitals of tin atoms can also decrease the bandgap. The accuracy of the model is validated by predicting the bandgap of the photovoltaic material MASnPbI. In conclusion, this study emphasizes the positive impact of machine learning on material development, especially in predicting the bandgaps of halide perovskite compounds, where ensemble learning methods demonstrate significant advantages.
卤化物钙钛矿材料因其带隙特性在太阳能电池、发光二极管器件、光电探测器、荧光标记、生物成像和光催化等各个领域具有广阔的应用前景。本研究收集了已发表文献中的实验数据,并利用集成学习模型出色的预测能力、低过拟合风险和强鲁棒性来分析卤化物钙钛矿化合物的带隙。结果表明集成学习决策树模型,特别是梯度提升决策树模型是有效的,其均方根误差为0.090 eV,平均绝对误差为0.053 eV,决定系数为93.11%。对通过元素摩尔量归一化计算的比率相关数据的研究表明,X位和B位的离子对带隙有显著影响。此外,碘原子掺杂可以有效降低本征带隙,而锡原子的s轨道和p轨道杂化也可以降低带隙。通过预测光伏材料MASnPbI的带隙验证了模型的准确性。总之,本研究强调了机器学习对材料开发的积极影响,特别是在预测卤化物钙钛矿化合物的带隙方面,集成学习方法显示出显著优势。