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Lamellae preparation for atomic-resolution STEM imaging from ion-beam-sensitive topological insulator crystals

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posted on 2024-11-17, 15:04 authored by Abdulhakim Bake, Weiyao Zhao, David Mitchell, Xiaolin WangXiaolin Wang, Mitchell NancarrowMitchell Nancarrow, David CortieDavid Cortie
Good specimen quality is a key factor in achieving successful scanning transmission electron microscope analysis. Thin and damage-free specimens are prerequisites for obtaining atomic-resolution imaging. Topological insulator single crystals and thin films in the chalcogenide family such as Sb2Te3 are sensitive to electron and ion beams. It is, therefore, challenging to prepare a lamella suitable for high-resolution imaging from these topological insulator materials using standard focused ion-beam instruments. We have developed a modified method to fabricate thin focused ion-beam (FIB) lamellae with minimal ion-beam damage and artifacts. The technique described in the current study enables the reliable preparation of high-quality transmission electron microscope (TEM) specimens necessary for studying ultra-thin surface regions. We have successfully demonstrated that the careful selection of FIB milling parameters at each stage minimizes the damage layer without the need for post-treatment.

Funding

Engineering magnetism at the atomic scale in topological insulators

Australian Research Council

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ARC Centre of Excellence in Future Low Energy Electronics Technologies

Australian Research Council

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Citation

Bake, A, Zhao, W, Mitchell, D, Wang, X, Nancarrow, M & Cortie, D 2022, ‘Lamellae preparation for atomic-resolution STEM imaging from ion-beam-sensitive topological insulator crystals’, Journal of vacuum science & technology. A, Vacuum, surfaces, and films, vol. 40, no. 3.

Language

English

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