The Loss Landscape of Powder X-Ray Diffraction-Based Structure Optimization Is Too Rough for Gradient Descent
By: Nofit Segal , Akshay Subramanian , Mingda Li and more
Potential Business Impact:
Finds hidden crystal shapes using X-ray patterns.
Solving crystal structures from powder X-ray diffraction (XRD) is a central challenge in materials characterization. In this work, we study the powder XRD-to-structure mapping using gradient descent optimization, with the goal of recovering the correct structure from moderately distorted initial states based solely on XRD similarity. We show that commonly used XRD similarity metrics result in a highly non-convex landscape, complicating direct optimization. Constraining the optimization to the ground-truth crystal family significantly improves recovery, yielding higher match rates and increased mutual information and correlation scores between structural similarity and XRD similarity. Nevertheless, the landscape may remain non-convex along certain symmetry axes. These findings suggest that symmetry-aware inductive biases could play a meaningful role in helping learning models navigate the inverse mapping from diffraction to structure.
Similar Papers
XDXD: End-to-end crystal structure determination with low resolution X-ray diffraction
Materials Science
Builds atom models from blurry X-ray pictures.
opXRD: Open Experimental Powder X-ray Diffraction Database
Materials Science
Helps computers understand material patterns faster.
Neutron Reflectometry by Gradient Descent
Machine Learning (CS)
Analyzes materials faster for better electronics.