使用机器学习的混合钙钛矿太阳能电池的新机会

APL Energy Pub Date : 2023-07-05 DOI:10.1063/5.0146828
Abigail R. Hering, Mansha Dubey, M. Leite
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引用次数: 1

摘要

虽然在混合有机-无机钙钛矿(HOIP)太阳能电池的生产步骤中存在几个瓶颈,包括成分筛选、制造、材料稳定性和设备性能,但近年来机器学习方法已经开始解决这些问题。在HOIP开发的每个阶段,已经成功地采用了不同的算法来解决独特的问题。具体来说,高通量实验产生了有效实施机器学习方法所需的大量训练数据。在这里,我们介绍了机器学习模型的概述,包括线性回归、神经网络、深度学习和统计预测。本文讨论了文献中的实验实例,其中机器学习应用于HOIP成分筛选,薄膜制造,薄膜表征和全设备测试。这些范例为HOIP太阳能电池研究的未来提供了见解。随着数据库的扩展和计算能力的提高,对HOIP行为越来越准确的预测成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Emerging opportunities for hybrid perovskite solar cells using machine learning
While there are several bottlenecks in hybrid organic–inorganic perovskite (HOIP) solar cell production steps, including composition screening, fabrication, material stability, and device performance, machine learning approaches have begun to tackle each of these issues in recent years. Different algorithms have successfully been adopted to solve the unique problems at each step of HOIP development. Specifically, high-throughput experimentation produces vast amount of training data required to effectively implement machine learning methods. Here, we present an overview of machine learning models, including linear regression, neural networks, deep learning, and statistical forecasting. Experimental examples from the literature, where machine learning is applied to HOIP composition screening, thin film fabrication, thin film characterization, and full device testing, are discussed. These paradigms give insights into the future of HOIP solar cell research. As databases expand and computational power improves, increasingly accurate predictions of the HOIP behavior are becoming possible.
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