2018 AIChE Annual Meeting
(699a) Catkit: Symmetry Methods for Automated Generation of Catalytic Structures
Authors
Since the systems in heterogeneous catalysis contain the complexity of both of these chemical domains, high-throughput techniques remain difficult to automate effectively for catalyst design. In this work, we propose a methodology which combines space group and bond symmetry techniques general enough to enumerate a large number of possible catalytic systems. This includes surfaces of any miller index produced from a provided bulk system, unique adsorption site identification, and creation of 3D structures bonded by one or multiple sites. This technique also produces a graph structure which provides the basis for all machine-learning fingerprints which require connectivity information; ideal for accurate descriptors which are not dependent on information gathered by expensive techniques such as Density Functional Theory.
We demonstrate these techniques for the enumeration of unique adsorption configurations across a wide range of alloy systems and catalytically relevant adsorbates. Utilizing these enumerated structures we show how the graph of each can be easily utilized to construct a variety of fingerprints as a basis for machine-learning accelerated predictions of adsorption energies. Finally, we discuss our Python implementation of these algorithms in the open source software package known as CatKit, intended to make high-throughput screening techniques easier to implement for the community.