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Deep Learning Analysis of Defect and Phase Evolution During Electron Beam Induced Transformations in WS2

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arxiv 1803.05381 v3 pith:WC6V6U57 submitted 2018-03-14 cond-mat.mtrl-sci

Deep Learning Analysis of Defect and Phase Evolution During Electron Beam Induced Transformations in WS2

classification cond-mat.mtrl-sci
keywords defectreactionstransformationsbeamdataelectronframeworkinduced
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Understanding elementary mechanisms behind solid-state phase transformations and reactions is the key to optimizing desired functional properties of many technologically relevant materials. Recent advances in scanning transmission electron microscopy (STEM) allow the real-time visualization of solid-state transformations in materials, including those induced by an electron beam and temperature, with atomic resolution. However, despite the ever-expanding capabilities for high-resolution data acquisition, the inferred information about kinetics and thermodynamics of the process and single defect dynamics and interactions is minima, due to the inherent limitations of manual ex-situ analysis of the collected volumes of data. To circumvent this problem, we developed a deep learning framework for dynamic STEM imaging that is trained to find the structures (defects) that break a crystal lattice periodicity and apply it for mapping solid state reactions and transformations in layered WS2 doped with Mo. This framework allows extracting thousands of lattice defects from raw STEM data (single images and movies) in a matter of seconds, which are then classified into different categories using unsupervised clustering methods. We further expanded our framework to extract parameters of diffusion for the sulfur vacancies and analyzed transition probabilities associated with switching between different configurations of defect complexes consisting of Mo dopant and sulfur vacancy, providing insight into point defect dynamics and reactions. This approach is universal and its application to beam induced reactions allows mapping chemical transformation pathways in solids at the atomic level.

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