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Long Time Scale Molecular Dynamics Simulation of Magnesium Hydride Dehydrogenation Enabled by Machine Learning Interatomic Potentials

Morrison, Oliver; Uteva, Elena; Walker, Gavin S.; Grant, David M.; Ling, Sanliang

Long Time Scale Molecular Dynamics Simulation of Magnesium Hydride Dehydrogenation Enabled by Machine Learning Interatomic Potentials Thumbnail


Authors

Oliver Morrison

Gavin S. Walker



Abstract

Magnesium hydride (MgH2) is a promising material for solid-state hydrogen storage due to its high gravimetric hydrogen capacity as well as the abundance and low cost of magnesium. The material’s limiting factor is the high dehydrogenation temperature (over 300 °C) and sluggish (de)hydrogenation kinetics when no catalyst is present, making it impractical for onboard applications. Catalysts and physical restructuring (e.g., through ball milling) have both shown kinetic improvements, without full theoretical understanding as to why. In this work, we developed a machine learning interatomic potential (MLP) for the Mg–H system, which was used to run long time scale molecular dynamics (MD) simulations of a thick magnesium hydride surface slab for up to 1 ns. Our MLP-based MD simulations reveal previously unreported behavior of subsurface molecular H2 formation and subsequent trapping in the subsurface layer of MgH2. This hindered diffusion of subsurface H2 offers a partial explanation on the slow dehydrogenation kinetics of MgH2. The kinetics will be improved if a catalyst obstructs subsurface formation and trapping of H2 or if the diffusion of subsurface H2 is improved through defects created by physical restructuring.

Citation

Morrison, O., Uteva, E., Walker, G. S., Grant, D. M., & Ling, S. (in press). Long Time Scale Molecular Dynamics Simulation of Magnesium Hydride Dehydrogenation Enabled by Machine Learning Interatomic Potentials. ACS Applied Energy Materials, https://doi.org/10.1021/acsaem.4c02627

Journal Article Type Article
Acceptance Date Dec 8, 2024
Online Publication Date Dec 18, 2024
Deposit Date Jan 6, 2025
Publicly Available Date Jan 7, 2025
Journal ACS Applied Energy Materials
Print ISSN 2574-0962
Electronic ISSN 2574-0962
Publisher American Chemical Society
Peer Reviewed Peer Reviewed
DOI https://doi.org/10.1021/acsaem.4c02627
Keywords Magnesium Hydride, Molecular Dynamics Simulations, Machine Learning Interatomic Potentials, Hydrogen Storage, Density Functional Theory
Public URL https://nottingham-repository.worktribe.com/output/43359554
Publisher URL https://pubs.acs.org/doi/10.1021/acsaem.4c02627#

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