Machine Learning-Assisted High-Throughput Screening of Metal-Organic Frameworks for CO2 Separation from CO2-Rich Natural Gas

被引:2
作者
Zhou, Yinjie [1 ]
Ji, Sibei [1 ]
He, Songyang [1 ]
Fan, Wei [1 ]
Zan, Liang [1 ]
Zhou, Li [1 ]
Ji, Xu [1 ]
He, Ge [1 ]
机构
[1] Sichuan Univ, Sch Chem Engn, Chengdu 610065, Peoples R China
关键词
FORCE-FIELD; IN-SILICO; ADSORPTION; HYDROGENATION; CATALYSTS; N-2; CH4; NI;
D O I
10.1021/acs.iecr.4c02357
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Under the appeal of carbon peaking and carbon neutrality goals, it is highly advisable to develop green chemical technologies. Based on this, it is even more attractive to synthesize methanol with the H-2 generated from water electrolysis by offshore wind power and the CO2 separated from offshore CO2-rich natural gas. Therefore, the separation and adsorption of CO2-rich natural gas in this context is of great socioeconomic significance. However, the conventional high-throughput screening methods for metal-organic frameworks (MOFs) in separating natural gas components and CO2 suffer from great challenges such as high model complexity and long computation time. To address the aforementioned problems, a machine learning-assisted modeling and screening strategy is proposed herein for the rapid and efficient separation of CO2 from the actual natural gas of six components (N-2, CO2, CH4, C2H6, C3H8, and H2S). First, structural analysis is used to eliminate the MOFs that cannot adsorb CO2 from the Computation-Ready Experimental Metal-Organic Frameworks (CoRE-MOFs) database. Six structural and 17 chemical descriptors of the remaining MOFs were calculated. Grand Canonical Monte Carlo (GCMC) simulations were applied to evaluate the separation performance metrics of the randomly selected training and testing MOF samples. By combining 23 descriptors and separation performance metrics, a Random Forest (RF) regression model was obtained with R-2 exceeding 0.92 on the test samples, which was employed to predict the separation performance of the remaining MOFs. As a result, 10 MOF candidates with the best CO2 separation performance were obtained. Furthermore, a structure-property relationship of MOFs with satisfactory regenerability was conducted. Three design strategies were proposed to guide the development of high-performance novel MOFs for CO2 separation. This study offers a high-throughput screening framework for MOFs to facilitate the separation of CO2 from a CO2-rich natural gas.
引用
收藏
页码:16497 / 16508
页数:12
相关论文
共 50 条
[31]   High-Throughput Computational Screening of Metal-Organic Frameworks for CH4/H2 Separation by Synergizing Machine Learning and Molecular Simulation [J].
Wang Shihui ;
Xue Xiaoyu ;
Cheng Min ;
Chen Shaochen ;
Liu Chong ;
Zhou Li ;
Bi Kexin ;
Ji Xu .
ACTA CHIMICA SINICA, 2022, 80 (05) :614-624
[32]   Prediction of O2/N2 Selectivity in Metal-Organic Frameworks via High-Throughput Computational Screening and Machine Learning [J].
Orhan, Ibrahim B. ;
Daglar, Hilal ;
Keskin, Seda ;
Le, Tu C. ;
Babarao, Ravichandar .
ACS APPLIED MATERIALS & INTERFACES, 2022, 14 (01) :736-749
[33]   Applied machine learning to analyze and predict CO2 adsorption behavior of metal-organic frameworks [J].
Li, Xiaoqiang ;
Zhang, Xiong ;
Zhang, Junjie ;
Gu, Jinyang ;
Zhang, Shibiao ;
Li, Guangyang ;
Shao, Jingai ;
He, Yong ;
Yang, Haiping ;
Zhang, Shihong ;
Chen, Hanping .
CARBON CAPTURE SCIENCE & TECHNOLOGY, 2023, 9
[34]   High-throughput virtual screening of metal-organic frameworks for xenon recovery from exhaled anesthetic gas mixture [J].
Cheng, Min ;
Wang, Shihui ;
Zhang, Zhiyuan ;
Ji, Xu ;
Liu, Chong ;
Dai, Yiyang ;
Dang, Yagu ;
Zhou, Li .
CHEMICAL ENGINEERING JOURNAL, 2023, 451
[35]   Machine Learning and High-throughput Computational Screening of Metal-organic Framework for Separation of Methane/ethane/propane [J].
Cai Chengzhi ;
Li Lifeng ;
Deng Xiaomei ;
Li Shuhua ;
Liang Hong ;
Qiao Zhiwei .
ACTA CHIMICA SINICA, 2020, 78 (05) :427-436
[36]   High-throughput screening of CO2 cycloaddition MOF catalyst with an explainable machine learning model [J].
Bai, Xuefeng ;
Li, Yi ;
Xie, Yabo ;
Chen, Qiancheng ;
Zhang, Xin ;
Li, Jian-Rong .
GREEN ENERGY & ENVIRONMENT, 2025, 10 (01) :132-138
[37]   Ligand-Assisted Enhancement of CO2 Capture in Metal-Organic Frameworks [J].
Poloni, Roberta ;
Smit, Berend ;
Neaton, Jeffrey B. .
JOURNAL OF THE AMERICAN CHEMICAL SOCIETY, 2012, 134 (15) :6714-6719
[38]   Research on Metal-organic Frameworks for CO2 Capture [J].
Xin, Chunling ;
Wang, Suqing ;
Yan, Yongmei .
PROCEEDINGS OF THE 2017 7TH INTERNATIONAL CONFERENCE ON MECHATRONICS, COMPUTER AND EDUCATION INFORMATIONIZATION (MCEI 2017), 2017, 75 :151-154
[39]   High-throughput screening of metal-organic frameworks for water harvesting from air [J].
Wang, Miao ;
Yu, Faquan .
COLLOIDS AND SURFACES A-PHYSICOCHEMICAL AND ENGINEERING ASPECTS, 2021, 624
[40]   Large-Scale Screening and Machine Learning for Metal-Organic Framework Membranes to Capture CO2 from Flue Gas [J].
Situ, Yizhen ;
Yuan, Xueying ;
Bai, Xiangning ;
Li, Shuhua ;
Liang, Hong ;
Zhu, Xin ;
Wang, Bangfen ;
Qiao, Zhiwei .
MEMBRANES, 2022, 12 (07)