机器学习辅助气体分离膜的研究进展

An Li, Jianchun Chu, Shaoxuan Huang, Yongqi Liu, Maogang He, Xiangyang Liu
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引用次数: 0

摘要

气体分离膜以其低成本、高能效和广泛的应用成为近几十年来的研究热点。机器学习提供了一种快速的方法来设计具有所需性能的气体分离膜。本文系统地介绍了机器学习辅助气体分离膜的研制过程。此外,总结了CO2/CH4、CO2/N2和O2/N2分离性能的实验数据,为未来机器学习辅助设计用于二氧化碳捕获、天然气净化和氧或氮富集的气体分离膜提供依据。此外,我们还讨论了构成气体分离膜的经典材料,包括mof、聚合物和COFs,并分析了不同材料的优缺点。最后,我们讨论了下一代气体分离膜机器学习方法发展中的挑战。
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-assisted development of gas separation membranes: A review
Gas separation membranes have been a hot topic of research in recent decades due to their low costs, high energy efficiency and wide range of applications. Machine learning provide a fast way to design gas separation membranes with required performance. This review systematically describes the process of machine learning-assisted gas separation membrane development. In addition, the experimental data on CO2/CH4, CO2/N2 and O2/N2 separation performance were summarized to provide basis for future work on machine learning-assisted design of gas separation membrane for carbon dioxide capture, and natural gas purification as well as oxygen or nitrogen enrichment. Moreover, we discuss the classical materials that make up gas separation membranes, including MOFs, polymers and COFs, and analyze the strengths and weaknesses of the different materials. Finally, we discuss the challenges in the development of machine learning method for next-generation gas separation membranes.
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