机器学习加速了共价有机框架在环境和能源应用中的发现

IF 11.3 1区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL
Hao Wang, Yuquan Li, Xiaoyang Xuan*, Kai Wang*, Ye-feng Yao and Likun Pan*, 
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引用次数: 0

摘要

共价有机骨架(COFs)是通过有机配体共价连接而得到的多孔晶体材料。它们的高表面积和可调节的孔径使其成为一系列应用的理想选择,包括CO2捕获,CH4存储,气体分离,催化等。传统的材料研究方法主要依靠人工实验,效率不高,而随着计算机科学的进步,基于分子模拟的高通量计算筛选方法在材料发现中变得至关重要,但它们面临着计算资源和时间的限制。目前,机器学习(ML)已成为许多领域的变革性工具,能够分析大型数据集,识别潜在模式,并有效准确地预测材料性能。这种方法被称为“材料基因组学”,它将高通量计算筛选与机器学习相结合,以预测和设计高性能材料,与传统方法相比,大大加快了发现过程。本文综述了机器学习在COF材料筛选、设计、性能预测等方面的作用,重点介绍了机器学习在CO2捕集、CH4封存、气体分离、催化等领域的应用,为COF材料及其应用提供了新的研究方向,增强了人们对COF材料及其应用的认识。
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 Accelerated Discovery of Covalent Organic Frameworks for Environmental and Energy Applications

Machine Learning Accelerated Discovery of Covalent Organic Frameworks for Environmental and Energy Applications

Covalent organic frameworks (COFs) are porous crystalline materials obtained by linking organic ligands covalently. Their high surface area and adjustable pore sizes make them ideal for a range of applications, including CO2 capture, CH4 storage, gas separation, catalysis, etc. Traditional methods of material research, which mainly rely on manual experimentation, are not particularly efficient, while with advancements in computer science, high-throughput computational screening methods based on molecular simulation have become crucial in material discovery, yet they face limitations in terms of computational resources and time. Currently, machine learning (ML) has emerged as a transformative tool in many fields, capable of analyzing large data sets, identifying underlying patterns, and predicting material performance efficiently and accurately. This approach, termed “materials genomics”, combines high-throughput computational screening with ML to predict and design high-performance materials, significantly speeding up the discovery process compared to traditional methods. This review discusses the functions of ML in the screening, design, and performance prediction of COFs and highlights their applications across various domains like CO2 capture, CH4 storage, gas separation, and catalysis, thereby providing new research directions and enhancing the understanding of COF materials and their applications.

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来源期刊
环境科学与技术
环境科学与技术 环境科学-工程:环境
CiteScore
17.50
自引率
9.60%
发文量
12359
审稿时长
2.8 months
期刊介绍: Environmental Science & Technology (ES&T) is a co-sponsored academic and technical magazine by the Hubei Provincial Environmental Protection Bureau and the Hubei Provincial Academy of Environmental Sciences. Environmental Science & Technology (ES&T) holds the status of Chinese core journals, scientific papers source journals of China, Chinese Science Citation Database source journals, and Chinese Academic Journal Comprehensive Evaluation Database source journals. This publication focuses on the academic field of environmental protection, featuring articles related to environmental protection and technical advancements.
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