Artificial intelligence-driven advances in photocatalytic hydrogen production

IF 2.7 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Leandro Goulart de Araujo and David Farrusseng
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Abstract

This perspective provides an overview of recent studies on the use of photocatalysis for hydrogen production, with a particular focus on water splitting. It examines the developments in this field that have been facilitated by artificial intelligence tools, especially machine learning algorithms. The photocatalytic generation of hydrogen has been the subject of extensive study in recent years, as the necessity for higher efficiency and hydrogen production rates represents a crucial step in the development of this technology for its mass deployment. The known difficulties of these systems pertain to the complexities associated with the photocatalysts, including the effect of reactants, the synthesis process, and their efficiency, particularly in harvesting sunlight. Moreover, the design of the reactor is a challenging undertaking, particularly in light of the dynamic behavior and the interaction between photons, solutions, photocatalysts, and co-catalysts that must be considered in the photocatalytic production of hydrogen. Research on this subject must consider the use of green materials and processes for synthesis, avoid extensive experimentation to reduce the carbon footprint, and seek efficient and less resource-intensive computational resources. To surmount the challenges inherent to the synthesis and development process, while simultaneously enabling the establishment of structure–performance relationships for knowledge acquisition, high-performing computational methods are key. This article concludes by potential avenues for improvement by highlighting strategies that have been successfully implemented in other related fields and could be beneficial for this field.

人工智能推动光催化制氢技术进步
这一观点概述了最近使用光催化制氢的研究,特别关注水分解。它考察了人工智能工具,特别是机器学习算法在这一领域的发展。近年来,光催化制氢一直是广泛研究的主题,因为提高效率和制氢速率的必要性是该技术大规模部署发展的关键一步。这些系统的已知困难与光催化剂的复杂性有关,包括反应物的影响、合成过程和它们的效率,特别是在收集阳光方面。此外,反应器的设计是一项具有挑战性的工作,特别是考虑到光催化制氢过程中必须考虑的光子、溶液、光催化剂和助催化剂之间的动态行为和相互作用。对这一课题的研究必须考虑使用绿色材料和工艺进行合成,避免大量的实验以减少碳足迹,并寻求高效且资源消耗较少的计算资源。为了克服合成和开发过程中固有的挑战,同时能够建立知识获取的结构-性能关系,高性能的计算方法是关键。本文通过强调在其他相关领域成功实施并可能对该领域有益的策略,总结了潜在的改进途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
New Journal of Chemistry
New Journal of Chemistry 化学-化学综合
CiteScore
5.30
自引率
6.10%
发文量
1832
审稿时长
2 months
期刊介绍: A journal for new directions in chemistry
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