Metal-Organic Frameworks for Xylene Separation: From Computational Screening to Machine Learning

被引:39
|
作者
Quo, Zhiwei [1 ,2 ]
Yan, Yaling [2 ]
Tang, Yaxing [2 ]
Liang, Hong [2 ]
Jiang, Jianwen [1 ]
机构
[1] Natl Univ Singapore, Dept Chem & Biomol Engn, Singapore 117576, Singapore
[2] Guangzhou Univ, Guangzhou Key Lab New Energy & Green Catalysis, Sch Chem & Chem Engn, Guangzhou 510006, Peoples R China
来源
JOURNAL OF PHYSICAL CHEMISTRY C | 2021年 / 125卷 / 14期
基金
中国国家自然科学基金;
关键词
P-XYLENE; ADSORPTION; ISOMERS; CO2; CAPTURE; READY;
D O I
10.1021/acs.jpcc.0c10773
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Separation of xylene isomers is an important process in the chemical industry and there has been considerable interest in developing advanced materials for xylene separation. In this study, we synergize computational screening and machine learning to explore the selective adsorption of p-xylene over o- and m-xylene in metal-organic frameworks (MOFs). First, a large set (4764) of computation-ready experimental MOFs is screened by geometric analysis and molecular simulation. The relationships between MOF structural descriptors (void fraction, volumetric surface area, and largest cavity diameter) and separation performance metrics (adsorption capacity of p-xylene Np-xylene and selectivity of p-xylene over o- and m-xylene Sp/(m+o)) are established. Then two machine-learning methods (back-propagation neural network and decision tree), as well as particle swarm optimization, are utilized to analyze and optimize Np-xylene and Sp/(m+o). The importance of each descriptor for separation is evaluated in six different MOF data sets. In the 100 top-performing MOFs, the pore limiting diameter (PLD) and largest cavity diameter (LCD) are revealed to be key factors governing separation performance. On the basis of the threshold values of Np-xylene > 0.5 mol/kg and Sp/(m+o) > 5, seven top-performing MOFs are identified. By further incorporating framework flexibility, JIVFUQ is predicted to be the best and superior to many reported MOFs in the literature.
引用
收藏
页码:7839 / 7848
页数:10
相关论文
共 50 条
  • [41] Design and Screening of Metal-Organic Frameworks for Ethane/Ethylene Separation
    Han, Seunghee
    Kim, Jihan
    ACS OMEGA, 2023,
  • [42] High-Throughput Screening of Metal-Organic Frameworks for Ethane-Ethylene Separation Using the Machine Learning Technique
    Halder, Prosun
    Singh, Jayant K.
    ENERGY & FUELS, 2020, 34 (11) : 14591 - 14597
  • [43] High-Throughput Computational Screening of Metal-Organic Frameworks for CH4/H2 Separation by Synergizing Machine Learning and Molecular Simulation
    Wang Shihui
    Xue Xiaoyu
    Cheng Min
    Chen Shaochen
    Liu Chong
    Zhou Li
    Bi Kexin
    Ji Xu
    ACTA CHIMICA SINICA, 2022, 80 (05) : 614 - 624
  • [44] Automatic Machine Learning Combined with High-Throughput Computational Screening of Hydrophobic Metal-Organic Frameworks for Capture of Methanol and Ethanol from the Air
    Zhang, Lulu
    Huang, Qiuhong
    Li, Lifeng
    Yan, Yaling
    Yuan, XueYing
    Liang, Hong
    Li, Shuhua
    Wang, Bangfen
    Qiao, Zhiwei
    ACS ES&T ENGINEERING, 2023, 4 (01): : 115 - 127
  • [45] Techno-economic analysis of metal-organic frameworks for adsorption heat pumps/chillers: from directional computational screening, machine learning to experiment
    Shi, Zenan
    Yuan, Xueying
    Yan, Yaling
    Tang, Yuanlin
    Li, Junjie
    Liang, Hong
    Tong, Lianpeng
    Qiao, Zhiwei
    JOURNAL OF MATERIALS CHEMISTRY A, 2021, 9 (12) : 7656 - 7666
  • [46] Machine Learning-Aided Computational Study of Metal-Organic Frameworks for Sour Gas Sweetening
    Cho, Eun Hyun
    Deng, Xuepeng
    Zou, Changlong
    Lin, Li-Chiang
    JOURNAL OF PHYSICAL CHEMISTRY C, 2020, 124 (50): : 27580 - 27591
  • [47] Computational and Machine Learning Methods for CO2 Capture Using Metal-Organic Frameworks
    Mashhadimoslem, Hossein
    Abdol, Mohammad Ali
    Karimi, Peyman
    Zanganeh, Kourosh
    Shafeen, Ahmed
    Elkamel, Ali
    Kamkar, Milad
    ACS NANO, 2024, 18 (35) : 23842 - 23875
  • [48] Machine-Learning-Assisted High-Throughput computational screening of Metal-Organic framework membranes for hydrogen separation
    Bai, Xiangning
    Shi, Zenan
    Xia, Huan
    Li, Shuhua
    Liu, Zili
    Liang, Hong
    Liu, Zhiting
    Wang, Bangfen
    Qiao, Zhiwei
    CHEMICAL ENGINEERING JOURNAL, 2022, 446
  • [49] Separation of xylene isomers using metal-organic frameworks: Addressing challenges in the petrochemical industry
    Liu, Ying
    Wang, Chao
    Yang, Qiwei
    Ren, Qilong
    Bao, Zongbi
    COORDINATION CHEMISTRY REVIEWS, 2025, 523
  • [50] High-Throughput Computational Screening and Machine Learning Model for Accelerated Metal-Organic Frameworks Discovery in Toluene Vapor Adsorption
    Liu, Xiaohua
    Wang, Ruihan
    Wang, Xin
    Xu, Dingguo
    JOURNAL OF PHYSICAL CHEMISTRY C, 2023, 127 (23): : 11268 - 11282