Computational Exploration of Adsorption-Based Hydrogen Storage in Mg-Alkoxide Functionalized Covalent-Organic Frameworks (COFs): Force-Field and Machine Learning Models

Journal Article (2024)
Author(s)

Yu Chen (Pusan National University)

Guobin Zhao (Pusan National University)

Sunghyun Yoon (Pusan National University)

P. Habibi (TU Delft - Engineering Thermodynamics)

Chang Seop Hong (Korea University)

Song Li (Huazhong University of Science and Technology)

O. Moultos (TU Delft - Engineering Thermodynamics)

P. Dey (TU Delft - Team Poulumi Dey)

T.J.H. Vlugt (TU Delft - Engineering Thermodynamics)

Yongchul G. Chung (Pusan National University)

Research Group
Engineering Thermodynamics
DOI related publication
https://doi.org/10.1021/acsami.4c11953
More Info
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Publication Year
2024
Language
English
Research Group
Engineering Thermodynamics
Issue number
45
Volume number
16
Pages (from-to)
61995-62009
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Abstract

Hydrogen is a clean-burning fuel that can be converted to other forms. of energy without generating any greenhouse gases. Currently, hydrogen is stored either by compression to high pressure (>700 bar) or cryogenic cooling to liquid form (<23 K). Therefore, it is essential to develop safe, reliable, and energy-efficient storage technology that can store hydrogen at lower pressures and temperatures. In this work, we systematically designed 2902 Mg-alkoxide-functionalized covalent-organic frameworks (COFs) and performed high-throughput (HT) computational screening for hydrogen storage applications at 111, 231, and 296 K. To accurately model the interaction between Mg-alkoxide sites and molecular hydrogen, we performed MP2 calculations to compute the hydrogen binding energy for different types of functionalized models, and the data were subsequently used to fit modified-Morse force field (FF) parameters. Using the developed FF models, we conducted HT grand canonical Monte Carlo (GCMC) simulations to compute hydrogen uptakes for both original and functionalized COFs. The generated data were subsequently used to evaluate the materials’ gravimetric and volumetric storage performance at various temperatures (111, 231, and 296 K). Finally, we developed machine learning (ML) models to predict the hydrogen storage performance of functionalized structures based on the features of the original structures. The developed model showed excellent performance with a mean absolute error (MAE) of 0.061 wt % and 0.456 g/L for predicting the gravimetric and volumetric deliverable capacities, enabling a quick evaluation of structures in a hypothetical COF database. The screening results demonstrated that the Mg-alkoxide functionalization yields greater improvements in volumetric H2 storage capacities for COFs with smaller pores compared to those with larger (mesoporous) pores.

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