Robust Atomistic Modeling of Materials, Organometallic, and Biochemical Systems

Modern chemistry seems to be unlimited in molecular size and elemental composition. Metal‐organic frameworks or biological macromolecules involve complex architectures and a large variety of elements. Yet, a general and broadly applicable theoretical method to describe the structures and interaction...

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Veröffentlicht in:Angewandte Chemie International Edition 2020-09, Vol.59 (36), p.15665-15673
Hauptverfasser: Spicher, Sebastian, Grimme, Stefan
Format: Artikel
Sprache:eng
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Zusammenfassung:Modern chemistry seems to be unlimited in molecular size and elemental composition. Metal‐organic frameworks or biological macromolecules involve complex architectures and a large variety of elements. Yet, a general and broadly applicable theoretical method to describe the structures and interactions of molecules beyond the 1000‐atom size regime semi‐quantitatively is not self‐evident. For this purpose, a generic force field named GFN‐FF is presented, which is completely newly developed to enable fast structure optimizations and molecular‐dynamics simulations for basically any chemical structure consisting of elements up to radon. The freely available computer program requires only starting coordinates and elemental composition as input from which, fully automatically, all potential‐energy terms are constructed. GFN‐FF outperforms other force fields in terms of generality and accuracy, approaching the performance of much more elaborate quantum‐mechanical methods in many cases. Gotta catch ′em all: A completely automated, partially polarizable, generic force field for the accurate description of structures and dynamics of large molecules across the periodic table is presented. This method, termed GFN‐FF, combines force‐field speed with almost quantum‐mechanical accuracy.
ISSN:1433-7851
1521-3773
DOI:10.1002/anie.202004239