Volume 48, Issue 7 e70054
Review Article

Synergistic Acceleration of Adsorbent Material Development by DFT and ML for CO2 Capture

Jianjun Cai

Corresponding Author

Jianjun Cai

School of Architecture and Traffic, Guilin University of Electronic Technology, Guilin, 541004 China

School of Metallurgy and Environment, Central South University, Changsha, 410083 China

E-mail: [email protected]

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Qianlang Liang

Qianlang Liang

School of Architecture and Traffic, Guilin University of Electronic Technology, Guilin, 541004 China

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Ming Luo

Ming Luo

School of Energy and Power Engineering, Jiangsu University, Zhenjiang, 212013 China

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First published: 09 June 2025

Abstract

The development of high-performance solid adsorbents for CO2 capture is crucial for reducing carbon emissions and combating climate change. Density functional theory (DFT) has been widely used to explore the adsorption mechanisms of solid adsorbents, but its computational cost limits large-scale material screening. Machine learning (ML) as a data-driven approach promotes materials development. This paper reviews the synergistic integration of DFT and ML in the design and development of solid amine adsorbents, metal-organic framework materials, and calcium-based adsorbents. With high-quality training data generated by DFT, ML models can effectively predict material properties. In addition, the integration of ML accelerates high-throughput screening, significantly improving the speed and accuracy of material discovery. This review summarizes recent advances and perspectives in the application of computational methods for the rational design of solid adsorbents.

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