Physically-Constrained Autoencoder-Assisted Bayesian Optimization for Refinement of High-Dimensional Defect-Sensitive Single Crystalline Structure
Joseph Oche Agada, Andrew McAninch, Haley Day, Yasemin Tanyu, Ewan McCombs, Seyed M. Koohpayeh, Brian H. Toby, Yishu Wang, Arpan Biswas

TL;DR
This paper introduces a hybrid machine learning framework combining physically-constrained autoencoders with Bayesian optimization to efficiently refine high-dimensional crystal structures and defects, surpassing traditional methods.
Contribution
It presents a novel integration of pcVAE with Bayesian optimization for defect-sensitive crystal structure refinement, enabling exploration of complex, nonlinear function spaces.
Findings
pcVAE-assisted BO outperforms traditional Rietveld refinement.
The approach effectively explores high-dimensional parameter spaces.
It improves convergence to optimal crystal structures.
Abstract
Physical properties and functionalities of materials are dictated by global crystal structures as well as local defects. To establish a structure-property relationship, not only the crystallographic symmetry but also quantitative knowledge about defects are required. Here we present a hybrid Machine Learning framework that integrates a physically-constrained variational-autoencoder (pcVAE) with different Bayesian Optimization (BO) methods to systematically accelerate and improve crystal structure refinement with resolution of defects. We chose the pyrochlore structured Ho2Ti2O7 as a model system and employed the GSAS2 package for benchmarking crystallographic parameters from Rietveld refinement. However, the function space of these material systems is highly nonlinear, which limits optimizers like traditional Rietveld refinement, into trapping at local minima. Also, these naive methods…
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Taxonomy
TopicsMachine Learning in Materials Science · Advanced Electron Microscopy Techniques and Applications · Model Reduction and Neural Networks
