通过机器学习快速准确地识别用于四氟甲烷/氮分离的有效金属有机框架

IF 5.5 3区 工程技术 Q1 ENGINEERING, CHEMICAL
Zequn Yang , Boshi Chen , Hongxiao Zu , Weijin Zhang , Zejian Ai , Lijian Leng , Hong Chen , Yong Feng , Hailong Li
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引用次数: 0

摘要

四氟甲烷(CF)是一种臭名昭著的温室气体,其温室升温潜能值是二氧化碳的 6630 倍,有效捕捉四氟甲烷对减缓气候变化非常重要。金属有机框架(MOFs)含有多种功能化配体和可调孔隙,是一种具有极高选择性的吸附剂,有望吸附四氟甲烷。然而,由于MOFs种类繁多,用实验方法进行大规模筛选和合理选择高效MOFs并不现实。在这项工作中,研究人员开发了一种基于机器学习的智能方法,以识别支配其 CF/N 分离性能的 MOFs 重要特征,并建立这些特征与性能指标(包括 CF 吸附容量、CF 对 N 的吸附选择性及其权衡)之间的关系。研究发现,随机森林(RF)机器学习算法的性能预测准确率最高。吸附热、MOFs 的相对分子质量和 MOFs 的密度是影响 CF/N 分离性能的三个关键特征。这些主要特征表明,孔隙几何形状、框架几何形状以及 CF 与 MOF 之间的相互作用规律对其 CF/N 分离效率有显著影响。因此,机器学习是指导CF-选择性MOFs设计的有力工具,并能扩大机器学习在化学和环境领域的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Rapid and accurate identification of effective metal organic frameworks for tetrafluoromethane/nitrogen separation by machine learning

Rapid and accurate identification of effective metal organic frameworks for tetrafluoromethane/nitrogen separation by machine learning

Rapid and accurate identification of effective metal organic frameworks for tetrafluoromethane/nitrogen separation by machine learning

Background

Effectively capturing tetrafluoromethane (CF4), a notorious greenhouse gas having a greenhouse warming potential 6630 times higher than carbon dioxide, is important to mitigate climate change. Metal organic frameworks (MOFs) are promising adsorbents to entrap CF4 with extreme high selectivity because they contain versatile functionalized ligands and tunable pores. However, the large population makes experimental methods unpractical to perform the large-scale screening and rational selection of efficient MOFs.

Methods

In this work, an intelligent method based on machine learning was developed to identify the important features of MOFs governing their CF4/N2 separation performances and establish the relationship between these features and performance metrics, including the CF4 adsorption capacity, the adsorption selectivity of CF4 over N2, and their trade-off.

Significant findings

The random forest (RF) machine learning algorithm was found to exhibit the highest accuracy in performance prediction. The heat of adsorption, the relative molecular mass of MOFs, and the density of MOFs were three critical features that influenced the CF4/N2 separation performances. These dominant features indicate that the pore geometry, framework geometry, and the interaction law between CF4 and MOFs significantly affected their CF4/N2 separation efficiency. Machine learning is thus a powerful tool to guide the design of CF4-selective MOFs and extend the applicability of machine learning among chemical and environmental communities.

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来源期刊
CiteScore
9.10
自引率
14.00%
发文量
362
审稿时长
35 days
期刊介绍: Journal of the Taiwan Institute of Chemical Engineers (formerly known as Journal of the Chinese Institute of Chemical Engineers) publishes original works, from fundamental principles to practical applications, in the broad field of chemical engineering with special focus on three aspects: Chemical and Biomolecular Science and Technology, Energy and Environmental Science and Technology, and Materials Science and Technology. Authors should choose for their manuscript an appropriate aspect section and a few related classifications when submitting to the journal online.
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