Identification of Crystal Symmetry from Noisy Diffraction Patterns by A Shape Analysis and Deep Learning

05/26/2020
by   Leslie Ching Ow Tiong, et al.
0

The robust and automated determination of crystal symmetry is of utmost importance in material characterization and analysis. Recent studies have shown that deep learning (DL) methods can effectively reveal the correlations between X-ray or electron-beam diffraction patterns and crystal symmetry. Despite their promise, most of these studies have been limited to identifying relatively few classes into which a target material may be grouped. On the other hand, the DL-based identification of crystal symmetry suffers from a drastic drop in accuracy for problems involving classification into tens or hundreds of symmetry classes (e.g., up to 230 space groups), severely limiting its practical usage. Here, we demonstrate that a combined approach of shaping diffraction patterns and implementing them in a multistream DenseNet (MSDN) substantially improves the accuracy of classification. Even with an imbalanced dataset of 108,658 individual crystals sampled from 72 space groups, our model achieves 80.2 benchmark models by 17-27 percentage points ( largely attributed to the pattern shaping strategy, through which the subtle changes in patterns between symmetrically close crystal systems (e.g., monoclinic vs. orthorhombic or trigonal vs. hexagonal) are well differentiated. We additionally find that the novel MSDN architecture is advantageous for capturing patterns in a richer but less redundant manner relative to conventional convolutional neural networks. The newly proposed protocols in regard to both input descriptor processing and DL architecture enable accurate space group classification and thus improve the practical usage of the DL approach in crystal symmetry identification.

READ FULL TEXT

page 6

page 15

page 16

page 26

page 27

page 31

page 33

page 34

research
02/22/2021

Wallpaper group kirigami

Kirigami, the art of paper cutting, has become a paradigm for mechanical...
research
02/10/2019

Paradigm shift in electron-based crystallography via machine learning

Accurately determining the crystallographic structure of a material, org...
research
12/04/2020

Deep Learning for Wrist Fracture Detection: Are We There Yet?

Wrist Fracture is the most common type of fracture with a high incidence...
research
03/30/2020

Detecting Symmetries with Neural Networks

Identifying symmetries in data sets is generally difficult, but knowledg...
research
12/28/2018

Exploring Weight Symmetry in Deep Neural Networks

We propose to impose symmetry in neural network parameters to improve pa...
research
09/14/2023

Identifying the Group-Theoretic Structure of Machine-Learned Symmetries

Deep learning was recently successfully used in deriving symmetry transf...

Please sign up or login with your details

Forgot password? Click here to reset