Solvent-aware Interfaces in Continuum Solvation
Oliviero Andreussi, Nicolas Georg H\"ormann, Francesco Nattino,, Giuseppe Fisicaro, Stefan Goedecker, Nicola Marzari

TL;DR
This paper introduces a solvent-aware continuum interface model that eliminates unphysical artifacts in quantum simulations of complex systems by defining a smoothly varying, physically consistent solute cavity adaptable to various systems.
Contribution
The authors develop a novel solvent-aware approach for defining the solute cavity in continuum models, improving accuracy and eliminating artifacts in complex condensed-matter and molecular systems.
Findings
Reduces unphysical pockets of solvent in simulations
Provides accurate forces and potentials for complex systems
Validated on semiconductor and water substrates
Abstract
Continuum models to handle solvent and electrolyte effects in an effective way have a long tradition in quantum-chemistry simulations and are nowadays also being introduced in computational condensed-matter and materials simulations. A key ingredient of continuum models is the choice of the solute cavity, i.e. the definition of the sharp or smooth boundary between the regions of space occupied by the quantum-mechanical (QM) system and the continuum embedding environment. Although most of the solute-based approaches developed lead to models with comparable and high accuracy when applied to small organic molecules, they can introduce significant artifacts when complex systems are considered. As an example, condensed-matter simulations often deal with supports that present open structures. Similarly, unphysical pockets of continuum solvent may appear in systems featuring multiple molecular…
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Taxonomy
TopicsSpectroscopy and Quantum Chemical Studies · Machine Learning in Materials Science · Molecular Junctions and Nanostructures
