Carbon Capture Phenomena in Metal-Organic Frameworks with Neural Network Potentials

PRX Energy(2023)

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摘要
Diamine-appended metal-organic frameworks are ultraporous materials exhibiting selective and cooperative CO2 adsorption mechanisms, leading to chemically tunable step-shaped isotherms and isobars that enable a large fraction of their full CO2 capacity to be captured or released with a modest change in temperature or pressure. Although progress has been made in elucidating carbon capture phenomena in this system, its thermal properties are poorly understood. Here, we develop density-functional-theory-derived neural network potentials for amine-appended Mg2(dobpdc), metal-organic frameworks made up of Mg cations and dobpdc [dobpdc4− = 4,4’-dihydroxy-(1,1’-biphenyl)-3,3’-dicarboxylic acid] linkers. These potentials are constructed with an active learning approach where their accuracy and transferability are improved through iterative generation of training datasets based on molecular dynamics. Our potentials predict adsorption energy, mechanical properties, vibrational and thermal properties with and without CO2, reaching ab initio accuracy at a fraction of the computational cost. We compute the temperature-dependent heat capacity and lattice thermal expansion of Mg2(dobpdc), with and without amine appendages and with and without CO2, quantitatively capturing measured trends where available and explaining their molecular origins. Furthermore, we show that these potentials can be incorporated into a simulated annealing approach to identify starting structures for energy minimization needed to compute accurate binding enthalpies of these and other complex systems. Our density-functional-theory-derived neural network potentials explain the temperature evolution of the structure and properties of an important class of metal-organic frameworks at molecular length scales, while providing a necessary foundation for future studies of the chemical dynamics of carbon capture.10 MoreReceived 30 January 2023Revised 23 March 2023Accepted 7 April 2023DOI:https://doi.org/10.1103/PRXEnergy.2.023005Published by the American Physical Society under the terms of the Creative Commons Attribution 4.0 International license. Further distribution of this work must maintain attribution to the author(s) and the published article's title, journal citation, and DOI.Published by the American Physical SocietyPhysics Subject Headings (PhySH)Research AreasAdsorptionCarbon capture & utilizationDesorptionElectronic structureFirst-principles calculationsLattice dynamicsSpecific heatThermal expansionThermal propertiesTechniquesMachine learningMolecular dynamicsMultiscale modelingCondensed Matter, Materials & Applied PhysicsEnergy Science & Technology
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关键词
carbon capture,neural network potentials,metal-organic
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