Towards the simulation of biomolecules: optimisation of peptide-capped glycine using FFLUX

MOLECULAR SIMULATION(2018)

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摘要
The optimisation of a peptide-capped glycine using the novel force field FFLUX is presented. FFLUX is a force field based on the machine-learning method kriging and the topological energy partitioning method called Interacting Quantum Atoms. FFLUX has a completely different architecture to that of traditional force fields, avoiding (harmonic) potentials for bonded, valence and torsion angles. In this study, FFLUX performs an optimisation on a glycine molecule and successfully recovers the target density-functional-theory energy with an error of 0.89 +/- 0.03kJmol(-1). It also recovers the structure of the global minimum with a root-mean-squared deviation of 0.05 angstrom(excluding hydrogen atoms). We also show that the geometry of the intra-molecular hydrogen bond in glycine is recovered accurately.
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关键词
FFLUX,machine learning,quantum chemical topology (QCT),force field,peptide,QTAIM,kriging
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