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review article

Toward smart carbon capture with machine learning

Rahimi, Mohammad
•
Moosavi, Seyed Mohamad  
•
Smit, Berend  
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April 21, 2021
Cell Reports Physical Science

Machine learning (ML) is emerging as a powerful approach that has recently shown potential to affect various frontiers of carbon capture, a key interim technology to assist in the mitigation of climate change. In this perspective, we reveal how ML implementations have improved this process in many aspects, for both absorption-and adsorption-based approaches, ranging from the molecular to process level. We discuss the role of ML in predicting the thermody namic properties of absorbents and in improving the absorption process. For adsorption processes, we discuss the promises of ML techniques for exploring many options to find the most cost-effective process scheme, which involves choosing a solid adsorbent and designing a process configuration We also highlight the advantages of ML and the associated risks, elaborate on the importance of the features needed to train ML models, and identify promising future opportunities for ML in carbon capture processes.

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Type
review article
DOI
10.1016/j.xcrp.2021.100396
Web of Science ID

WOS:000658766700012

Author(s)
Rahimi, Mohammad
Moosavi, Seyed Mohamad  
Smit, Berend  
Hatton, T. Alan
Date Issued

2021-04-21

Publisher

ELSEVIER

Published in
Cell Reports Physical Science
Volume

2

Issue

4

Article Number

100396

Subjects

Chemistry, Multidisciplinary

•

Energy & Fuels

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Materials Science, Multidisciplinary

•

Physics, Multidisciplinary

•

Chemistry

•

Materials Science

•

Physics

•

metal-organic frameworks

•

co2 equilibrium absorption

•

ionic liquids

•

dioxide capture

•

flue-gas

•

aqueous-solutions

•

solubility

•

performance

•

optimization

•

separation

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LSMO  
Available on Infoscience
July 3, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/179634
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