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Defect Genome of Cubic Perovskites for Fuel Cell Applications...

by Janakiraman Balachandran, Lianshan Lin, Jonathan S Anchell, Craig A Bridges, Panchapakesan Ganesh
Publication Type
Journal
Journal Name
The Journal of Physical Chemistry C
Publication Date
Page Numbers
26637 to 26647
Volume
121
Issue
48

Heterogeneities such as point defects, inherent to material systems, can profoundly influence material functionalities critical for numerous energy applications. This influence in principle can be identified and quantified through development of large defect data sets which we call the defect genome, employing high-throughput ab initio calculations. However, high-throughput screening of material models with point defects dramatically increases the computational complexity and chemical search space, creating major impediments toward developing a defect genome. In this work, we overcome these impediments by employing computationally tractable ab initio models driven by highly scalable workflows, to study formation and interaction of various point defects (e.g., O vacancies, H interstitials, and Y substitutional dopant), in over 80 cubic perovskites, for potential proton-conducting ceramic fuel cell (PCFC) applications. The resulting defect data sets identify several promising perovskite compounds that can exhibit high proton conductivity. Furthermore, the data sets also enable us to identify and explain, insightful and novel correlations among defect energies, material identities, and defect-induced local structural distortions. Such defect data sets and resultant correlations are necessary to build statistical machine learning models, which are required to accelerate discovery of new materials.