通过机器学习加速钙钛矿太阳能电池中的离子液体研究:机遇与挑战

Jiazheng Wang, Qiang Lou, Zhengjie Xu, Yufeng Jin, Guibo Luo, Hang Zhou
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引用次数: 0

摘要

近年来,在提高钙钛矿太阳能电池(PSCs)的效率和稳定性方面,学术界和工业界都做出了持续而显著的努力。其中,离子液体(Ionic liquid, IL)是一类具有不对称有机阳离子和多种阴离子的化合物,由于其独特的物理化学性质,成为实现高性能聚氯乙烯最有前途的添加剂和界面改性层之一。然而,由于离子液体种类繁多,在常规的试错实验中,寻找一种有效和最佳的PSCs IL钝化材料需要大量的时间和精力。在这种情况下,机器学习(ML)提供了强大的能力来处理复杂的非线性问题,有可能加速发现和优化psc应用的IL。本文综述了目前IL在psc中的应用,并总结了结合ML方法在psc中IL研究的机遇和主要挑战。通过提出的机器学习框架,预计一个更具预测性的机器学习试点研究过程将加速psc中IL的发现和优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Accelerating ionic liquid research in perovskite solar cells through machine learning:Opportunities and challenges

Accelerating ionic liquid research in perovskite solar cells through machine learning:Opportunities and challenges
In recent years, there have been continuous and remarkable efforts from both academic and industry to improve the efficiency and stability of perovskite solar cells (PSCs). Among all the efforts, Ionic liquids (IL), a class of compounds with asymmetric organic cations and various anions, stand out as one of the most promising additives and interface modification layer for realizing high performance PSCs due to their unique physicochemical properties. Nonetheless, due to the variety of ionic liquids, searching an effective and optimum IL passivation materials for PSCs requires a huge amount of time and efforts in conventional trial-and-error experiments. In this context, machine learning (ML) offers powerful capabilities to handle complex, nonlinear problems, potentially accelerating the discovery and optimization of IL for PSCs applications. This review provides a comprehensive overview of the current applications of IL in PSCs, and summarizes the opportunities and key challenges in combining ML methods for IL research in PSCs. With the proposed ML frameworks, it is expected that a more predictive ML piloted research process would accelerate the discovery and optimization of IL in PSCs.
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