volume 11 issue 21 pages 8148-8160

Metal–Organic Frameworks for Water Harvesting: Machine Learning-Based Prediction and Rapid Screening

Publication typeJournal Article
Publication date2023-05-19
scimago Q1
wos Q1
SJR1.623
CiteScore12.5
Impact factor7.3
ISSN21680485
General Chemistry
General Chemical Engineering
Environmental Chemistry
Renewable Energy, Sustainability and the Environment
Abstract
Atmospheric water harvesting based on metal–organic frameworks (MOFs) is an emerging technology to potentially mitigate water scarcity. Because of the tremendously large number of existing MOFs, it is challenging to find suitable candidates. In this context, a data-driven approach to identify top-performing MOFs represents an important direction. Herein, we develop a machine learning (ML) method to predict water adsorption in MOFs and screen out top-performing MOFs for water harvesting. First, experimental water adsorption isotherms in MOFs are collected and water adsorption properties are extracted. Quantitative structure–property relationships are analyzed in terms of pore structure and framework chemistry, providing task-specific design principles. Then, ML models are trained and interpreted to predict water adsorption properties by using structural and chemical features, as well as operating conditions as descriptors. The transferability of the ML models is validated by out-of-sample predictions in seven newly reported MOFs. Finally, the ML models are applied to screen ∼8000 "Computation-Ready, Experimental" (CoRE) MOFs. Top-performing candidates are identified including 149 MOFs with the maximum adsorption capacity ≥35 mmol/g, 39 MOFs with working capacity ≥10 mmol/g in a relative pressure window 0.1–0.3, and 139 MOFs with working capacity ≥8.7 mmol/g in a relative pressure window 0.6–0.9. The developed ML-based method would advance task-oriented design and rapid discovery of reticular materials for energy and environmental applications.
Found 
Found 

Top-30

Journals

1
2
3
Journal of Materials Chemistry A
3 publications, 9.38%
ACS Sustainable Chemistry and Engineering
2 publications, 6.25%
Advanced Materials
2 publications, 6.25%
Molecular Systems Design and Engineering
2 publications, 6.25%
Langmuir
1 publication, 3.13%
Nature Energy
1 publication, 3.13%
Water Science and Technology: Water Supply
1 publication, 3.13%
Chemistry of Materials
1 publication, 3.13%
Journal of Chemical Information and Modeling
1 publication, 3.13%
ChemPhysMater
1 publication, 3.13%
Small
1 publication, 3.13%
Separation and Purification Technology
1 publication, 3.13%
Energy Reports
1 publication, 3.13%
Chemical Science
1 publication, 3.13%
Advanced Composites and Hybrid Materials
1 publication, 3.13%
Journal of Cleaner Production
1 publication, 3.13%
Physical Chemistry Chemical Physics
1 publication, 3.13%
Journal of Materials Research
1 publication, 3.13%
Environmental Science & Technology
1 publication, 3.13%
ACS applied materials & interfaces
1 publication, 3.13%
Energy Conversion and Management
1 publication, 3.13%
Journal of Environmental Management
1 publication, 3.13%
Advances in Colloid and Interface Science
1 publication, 3.13%
Coordination Chemistry Reviews
1 publication, 3.13%
ACS Engineering Au
1 publication, 3.13%
Journal of Environmental Chemical Engineering
1 publication, 3.13%
Materials Today Physics
1 publication, 3.13%
1
2
3

Publishers

2
4
6
8
10
Elsevier
10 publications, 31.25%
American Chemical Society (ACS)
8 publications, 25%
Royal Society of Chemistry (RSC)
7 publications, 21.88%
Springer Nature
3 publications, 9.38%
Wiley
3 publications, 9.38%
IWA Publishing
1 publication, 3.13%
2
4
6
8
10
  • We do not take into account publications without a DOI.
  • Statistics recalculated weekly.

Are you a researcher?

Create a profile to get free access to personal recommendations for colleagues and new articles.
Metrics
32
Share
Cite this
GOST |
Cite this
GOST Copy
Zhang Z. et al. Metal–Organic Frameworks for Water Harvesting: Machine Learning-Based Prediction and Rapid Screening // ACS Sustainable Chemistry and Engineering. 2023. Vol. 11. No. 21. pp. 8148-8160.
GOST all authors (up to 50) Copy
Zhang Z., Tang H., Wang M., Lyu B., Jiang Z., Jiang J. Metal–Organic Frameworks for Water Harvesting: Machine Learning-Based Prediction and Rapid Screening // ACS Sustainable Chemistry and Engineering. 2023. Vol. 11. No. 21. pp. 8148-8160.
RIS |
Cite this
RIS Copy
TY - JOUR
DO - 10.1021/acssuschemeng.3c01233
UR - https://pubs.acs.org/doi/10.1021/acssuschemeng.3c01233
TI - Metal–Organic Frameworks for Water Harvesting: Machine Learning-Based Prediction and Rapid Screening
T2 - ACS Sustainable Chemistry and Engineering
AU - Zhang, Zhiming
AU - Tang, Hongjian
AU - Wang, Mao
AU - Lyu, Bohui
AU - Jiang, Zhongyi
AU - Jiang, Jian-Wen
PY - 2023
DA - 2023/05/19
PB - American Chemical Society (ACS)
SP - 8148-8160
IS - 21
VL - 11
SN - 2168-0485
ER -
BibTex |
Cite this
BibTex (up to 50 authors) Copy
@article{2023_Zhang,
author = {Zhiming Zhang and Hongjian Tang and Mao Wang and Bohui Lyu and Zhongyi Jiang and Jian-Wen Jiang},
title = {Metal–Organic Frameworks for Water Harvesting: Machine Learning-Based Prediction and Rapid Screening},
journal = {ACS Sustainable Chemistry and Engineering},
year = {2023},
volume = {11},
publisher = {American Chemical Society (ACS)},
month = {may},
url = {https://pubs.acs.org/doi/10.1021/acssuschemeng.3c01233},
number = {21},
pages = {8148--8160},
doi = {10.1021/acssuschemeng.3c01233}
}
MLA
Cite this
MLA Copy
Zhang, Zhiming, et al. “Metal–Organic Frameworks for Water Harvesting: Machine Learning-Based Prediction and Rapid Screening.” ACS Sustainable Chemistry and Engineering, vol. 11, no. 21, May. 2023, pp. 8148-8160. https://pubs.acs.org/doi/10.1021/acssuschemeng.3c01233.