GAtor: A First Principles Genetic Algorithm for Molecular Crystal Structure Prediction
ORAL
Abstract
We present the implementation of GAtor, a massively parallel, first principles genetic algorithm (GA) for molecular crystal structure prediction. GAtor is written in Python and performs local optimizations and energy evaluations using dispersion-inclusive density functional theory (DFT). GAtor offers a variety of fitness evaluation, selection, crossover, and mutation schemes. Breeding operators designed specifically for molecular crystals provide a balance between exploration and exploitation. Evolutionary niching is implemented by using machine learning to perform clustering on the fly and then employing a cluster-based fitness function. The best structures generated by GAtor are re-relaxed and re-ranked using a hierarchy of increasingly accurate DFT functionals and dispersion methods. GAtor is applied to a chemically diverse set of four past blind test targets, characterized by different types of intermolecular interactions. The experimentally observed structures and other low-energy structures are found for all four targets. In particular, for Target II, 5-cyano-3-hydroxythiophene, the top ranked putative crystal structure is a Zā=2 structure with P1bar symmetry and a scaffold packing motif, which has not been reported previously.
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Presenters
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Noa Marom
- Materials Science and Engineering, Carnegie Mellon University
- Carnegie Mellon Univ