Towards End-to-End Structure Solutions from Information-Compromised Diffraction Data via Generative Deep Learning
Gabe Guo, Judah Goldfeder, Ling Lan, Aniv Ray, Albert Hanming Yang,, Boyuan Chen, Simon JL Billinge, Hod Lipson

TL;DR
This paper introduces a novel deep learning method for solving crystal structures from degraded diffraction data, demonstrating high accuracy in simulated tests across various crystal systems.
Contribution
The authors develop a variational multi-branch neural network that effectively reconstructs crystal structures from incomplete diffraction data, advancing end-to-end structure determination.
Findings
Achieves up to 93.4% similarity with ground truth structures.
Effective on simulated data for cubic and trigonal systems.
Handles degraded and partial input information successfully.
Abstract
The revolution in materials in the past century was built on a knowledge of the atomic arrangements and the structure-property relationship. The sine qua non for obtaining quantitative structural information is single crystal crystallography. However, increasingly we need to solve structures in cases where the information content in our input signal is significantly degraded, for example, due to orientational averaging of grains, finite size effects due to nanostructure, and mixed signals due to sample heterogeneity. Understanding the structure property relationships in such situations is, if anything, more important and insightful, yet we do not have robust approaches for accomplishing it. In principle, machine learning (ML) and deep learning (DL) are promising approaches since they augment information in the degraded input signal with prior knowledge learned from large databases of…
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Taxonomy
TopicsX-ray Diffraction in Crystallography · Machine Learning in Materials Science · Crystallography and molecular interactions
MethodsNetwork On Network
