Towards real‐time STEM simulations through targeted subsampling strategies

Author:

Robinson Alex W.1ORCID,Wells Jack2,Nicholls Daniel1,Moshtaghpour Amirafshar13ORCID,Chi Miaofang4,Kirkland Angus I.35,Browning Nigel D.167

Affiliation:

1. Department of Mechanical, Materials and Aerospace Engineering University of Liverpool Liverpool UK

2. Distributed Algorithms Centre for Doctoral Training University of Liverpool Liverpool UK

3. Correlated Imaging Group Rosalind Franklin Institute Didcot UK

4. Chemical Science Division, Centre for Nanophase Materials Sciences Oak Ridge National Laboratory Oak Ridge Tennessee United States

5. Department of Materials University of Oxford Oxford UK

6. Materials Sciences, Physical and Computational Science Directorate Pacific Northwest National Laboratory Richland Washington United States

7. Research and Development Sivananthan Laboratories Bolingbrook Illinois United States

Abstract

AbstractScanning transmission electron microscopy images can be complex to interpret on the atomic scale as the contrast is sensitive to multiple factors such as sample thickness, composition, defects and aberrations. Simulations are commonly used to validate or interpret real experimental images, but they come at a cost of either long computation times or specialist hardware such as graphics processing units. Recent works in compressive sensing for experimental STEM images have shown that it is possible to significantly reduce the amount of acquired signal and still recover the full image without significant loss of image quality, and therefore it is proposed here that similar methods can be applied to STEM simulations. In this paper, we demonstrate a method that can significantly increase the efficiency of STEM simulations through a targeted sampling strategy, along with a new approach to independently subsample each frozen phonon layer. We show the effectiveness of this method by simulating a SrTiO3 grain boundary and monolayer 2H‐MoS2 containing a sulphur vacancy using the abTEM software. We also show how this method is not limited to only traditional multislice methods, but also increases the speed of the PRISM simulation method. Furthermore, we discuss the possibility for STEM simulations to seed the acquisition of real data, to potentially lead the way to self‐driving (correcting) STEM.

Publisher

Wiley

Subject

Histology,Pathology and Forensic Medicine

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