Litcius/Paper detail

Geometric landscapes for material discovery within energy–structure–function maps

Seyed Mohamad Moosavi, Henglu Xu, Linjiang Chen, Andrew I. Cooper, Berend Smit

2020Chemical Science36 citationsDOIOpen Access PDF

Abstract

prediction of both the crystal structure and its functional properties. However, it is a challenge to represent the high-dimensional structural and functional landscapes of an ESF map and to identify energetically favourable and functionally interesting polymorphs among the 1000s to 10 000s of structures typically on a single ESF map. Here, we introduce geometric landscapes, a representation for ESF maps based on geometric similarity, quantified by persistent homology. We show that this representation allows the exploration of complex ESF maps, automatically pinpointing interesting crystalline phases available to the molecule. Furthermore, we show that geometric landscapes can serve as an accountable descriptor for porous materials to predict their performance for gas adsorption applications. A machine learning model trained using this geometric similarity could reach a remarkable accuracy in predicting the materials' performance for methane storage applications.

Topics & Concepts

Representation (politics)Basis (linear algebra)Function (biology)Energy (signal processing)Computer scienceArtificial intelligencePattern recognition (psychology)MathematicsGeometryBiologyEvolutionary biologyStatisticsLawPolitical sciencePoliticsMachine Learning in Materials ScienceHydrocarbon exploration and reservoir analysisComputational Drug Discovery Methods