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Structural Mode Coupling in Perovskite Oxides Using Hypothesis-Driven Active Learning

JOURNAL OF PHYSICS-MATERIALS(2024)

Oak Ridge Natl Lab

Cited 2|Views4
Abstract
Finding the ground-state structure with minimum energy is paramount to designing any material. In ABO _3 -type perovskite oxides with Pnma symmetry, the lowest energy phase is driven by an inherent trilinear coupling between the two primary order parameters such as rotation and tilt with antiferroelectric displacement of the A-site cations as established via hybrid improper ferroelectric mechanism. Conventionally, finding the relevant mode coupling driving phase transition requires performing first-principles calculations which is computationally time-consuming as well as expensive. It involves following an intuitive iterative hit and trial method of (a) adding two or multiple mode vectors, followed by (b) evaluating which combination would lead to the ground-state energy. In this study, we show how a hypothesis-driven active learning framework can identify suitable mode couplings within the Landau free energy expansion with minimal information on amplitudes of modes for a series of double perovskite oxides with A-site layered, columnar and rocksalt ordering. This scheme is expected to be applicable universally for understanding atomistic mechanisms derived from various structural mode couplings behind functionalities, for e.g. polarization, magnetization and metal–insulator transitions.
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Key words
perovskites,oxides,machine learning,active learning,Bayesian optimization,scientific machine learning
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