机器学习驱动的钙钛矿研究从实验探索到工业发展

IF 6 3区 工程技术 Q2 ENERGY & FUELS
Solar RRL Pub Date : 2025-08-21 DOI:10.1002/solr.202500464
Zhuo Feng, Xu Zhu, Hao Meng, Antai Yang, Jixin Tang, Chengquan Zhong, Kailong Hu, Jiakai Liu, Jingzi Zhang, Xi Lin
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引用次数: 0

摘要

钙钛矿太阳能电池(PSCs)以其高效、低成本和溶液可加工性成为第三代光伏技术的研究热点。然而,许多问题,如材料不稳定性、铅毒性和可扩展性挑战,阻碍了它们的工业化和商业化。本研究回顾了在psc生产从实验探索到工业开发的整个生命周期中利用机器学习(ML)的整体生产管理优化。我们探索机器学习在高通量材料筛选、设备结构重新设计、可扩展制造、自动化平台优化、产品质量分析、从生产前到生产后的安装和维护中的应用。通过跨越整个产业链,机器学习显著提高了设备的性能、稳定性和使用寿命,有力地支持了设备的商业化和广泛应用。随着算法的改进和数据资源的扩展,机器学习在psc全生产管理中的应用前景将更加广阔。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine Learning-Driven Perovskite Research from Experimental Exploration to Industrial Development

Machine Learning-Driven Perovskite Research from Experimental Exploration to Industrial Development

Perovskite solar cells (PSCs) have emerged as a research hotspot inthird-generation photovoltaic technology with their high efficiency, low cost, and solution processability. However, many issues, such as material instability, lead toxicity, and scalability challenges, hinder their industrialization and commercialization. This study reviews the overall production management optimization that utilizes machine learning (ML) throughout the entire life cycle of PSCs production from experimental exploration to industrial development. We explore the application of ML in high-throughput material screening, device structure redesign, scalable manufacturing, automated platform optimization, product quality analysis, installation, and maintenance from preproduction to after-production of PSCs. By spanning the entire industry chain, ML significantly enhances the performance, stability, and lifespan of the device, strongly supporting their commercialization and wide application. As algorithms improve and data resources expand, the future application prospects of ML in the full production management of PSCs will become even broader.

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来源期刊
Solar RRL
Solar RRL Physics and Astronomy-Atomic and Molecular Physics, and Optics
CiteScore
12.10
自引率
6.30%
发文量
460
期刊介绍: Solar RRL, formerly known as Rapid Research Letters, has evolved to embrace a broader and more encompassing format. We publish Research Articles and Reviews covering all facets of solar energy conversion. This includes, but is not limited to, photovoltaics and solar cells (both established and emerging systems), as well as the development, characterization, and optimization of materials and devices. Additionally, we cover topics such as photovoltaic modules and systems, their installation and deployment, photocatalysis, solar fuels, photothermal and photoelectrochemical solar energy conversion, energy distribution, grid issues, and other relevant aspects. Join us in exploring the latest advancements in solar energy conversion research.
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