Tracking perovskite crystallization via deep learning-based feature
detection on 2D X-ray scattering data
- URL: http://arxiv.org/abs/2202.10983v1
- Date: Tue, 22 Feb 2022 15:39:00 GMT
- Title: Tracking perovskite crystallization via deep learning-based feature
detection on 2D X-ray scattering data
- Authors: Vladimir Starostin, Valentin Munteanu, Alessandro Greco, Ekaterina
Kneschaurek, Alina Pleli, Florian Bertram, Alexander Gerlach, Alexander
Hinderhofer, Frank Schreiber
- Abstract summary: We propose an automated pipeline for the analysis of X-ray diffraction images based on the Faster R-CNN deep learning architecture.
We demonstrate our method on real-time tracking of organic-inorganic perovskite structure crystallization and test it on two applications.
- Score: 137.47124933818066
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Understanding the processes of perovskite crystallization is essential for
improving the properties of organic solar cells. In situ real-time
grazing-incidence X-ray diffraction (GIXD) is a key technique for this task,
but it produces large amounts of data, frequently exceeding the capabilities of
traditional data processing methods. We propose an automated pipeline for the
analysis of GIXD images, based on the Faster R-CNN deep learning architecture
for object detection, modified to conform to the specifics of the scattering
data. The model exhibits high accuracy in detecting diffraction features on
noisy patterns with various experimental artifacts. We demonstrate our method
on real-time tracking of organic-inorganic perovskite structure crystallization
and test it on two applications: 1. the automated phase identification and
unit-cell determination of two coexisting phases of Ruddlesden-Popper 2D
perovskites, and 2. the fast tracking of MAPbI$_3$ perovskite formation. By
design, our approach is equally suitable for other crystalline thin-film
materials.
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