molSimplify: A toolkit for automating discovery in inorganic chemistry 论文

2016Journal of Computational Chemistry引用 274
Machine Learning in Materials ScienceComputational Drug Discovery MethodsCrystallography and molecular interactions

详细信息

发表期刊/会议
Journal of Computational Chemistry
发表日期
2016-07-01
发表年份
2016

关键词

Machine Learning in Materials ScienceComputational Drug Discovery MethodsCrystallography and molecular interactions

摘要

We present an automated, open source toolkit for the first-principles screening and discovery of new inorganic molecules and intermolecular complexes. Challenges remain in the automatic generation of candidate inorganic molecule structures due to the high variability in coordination and bonding, which we overcome through a divide-and-conquer tactic that flexibly combines force-field preoptimization of organic fragments with alignment to first-principles-trained metal-ligand distances. Exploration of chemical space is enabled through random generation of ligands and intermolecular complexes from large chemical databases. We validate the generated structures with the root mean squared (RMS) gradients evaluated from density functional theory (DFT), which are around 0.02 Ha/au across a large 150 molecule test set. Comparison of molSimplify results to full optimization with the universal force field reveals that RMS DFT gradients are improved by 40%. Seamless generation of input files, preparation and execution of electronic structure calculations, and post-processing for each generated structure aids interpretation of underlying chemical and energetic trends. © 2016 Wiley Periodicals, Inc.