Fueling a Data-Driven Machine Learning Model for H<sub>3</sub>O<sup>+</sup> and OH<sup>-</sup> Transport through Confined Aqueous Environments: A High-Throughput Order-N Framework for Condensed-Phase Hybrid Density Functional Theory at Work
ORAL
Abstract
By including a fraction of exact exchange (EXX), hybrid functionals reduce the self-interaction error in semi-local density functional theory (DFT), and thereby furnish a more accurate and reliable description of the electronic structure in systems throughout chemistry, physics, and materials science. In particular, it has been demonstrated that dispersion-inclusive hybrid DFT can provide a semi-quantitative description of H3O+ and OH- transport in bulk aqueous solutions. However, the high computational cost associated with hybrid DFT limits its applicability when treating such large-scale and complex condensed-phase systems. To overcome this limitation, we have developed a highly accurate linear-scaling (order-N) approach for treating finite-gap (homogeneous and heterogeneous) systems without system-dependent parameters. Furthermore, we have implemented and devised a GPU-accelerated implementation of this framework to generate high-quality dispersion-inclusive hybrid DFT data for building a deep neural network potential for aqueous H3O+ and OH- in bulk and confined environments. With these developments, this work brings us closer to understanding H3O+ and OH- transport through confined aqueous environments, which is of fundamental importance in the energy sciences.
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Presenters
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Hsin-Yu Ko
Cornell University
Authors
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Hsin-Yu Ko
Cornell University
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Marcos F Calegari Andrade
Princeton University
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Zachary M Sparrow
Cornell University
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Brian G Ernst
Cornell University
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Jalen A Harris
Cornell University
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Robert A Distasio
Cornell University