TY - JOUR
T1 - Machine Learning Accelerated Discovery of Covalent Organic Frameworks for Environmental and Energy Applications
AU - Wang, Hao
AU - Li, Yuquan
AU - Xuan, Xiaoyang
AU - Wang, Kai
AU - Yao, Ye Feng
AU - Pan, Likun
N1 - Publisher Copyright:
© 2025 American Chemical Society.
PY - 2025/4/8
Y1 - 2025/4/8
N2 - 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.
AB - 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.
KW - CH storage
KW - CO capture
KW - Covalent organic frameworks
KW - Gas separation
KW - Machine learning
UR - https://www.scopus.com/pages/publications/105002307866
U2 - 10.1021/acs.est.5c00390
DO - 10.1021/acs.est.5c00390
M3 - 文献综述
C2 - 40159087
AN - SCOPUS:105002307866
SN - 0013-936X
VL - 59
SP - 6361
EP - 6378
JO - Environmental Science and Technology
JF - Environmental Science and Technology
IS - 13
ER -