TEM sample preparation for a suspended structure with deep cavity

I. Tee, Jie Zhu
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Abstract

Transmission electron microscope (TEM) failure analysis has been widely adopted in the field of semiconductor manufacturing because of its ability to provide high resolution measurement and elemental characterization in (sub) nanometer scale. Despite many advantages of the TEM technique, one challenge that the conventional sample preparation by Focused Ion Beam (FIB) is limitations on the TEM lamella size, structure, or pattern of the target. In this work, we demonstrate how TEM lamellas were prepared on a suspended structure with deep cavity. In the first case study, proper selection of coating materials with tilted angle deposition and use of in-situ lift-out technique are critical for successful sample preparation to study thin residue layer along large sidewall of a suspended structure. In the second case study, application of fine cleaving and sample reorientation enabled us to prepare an artifact-free sample to characterize post-etch residue at the bottom of a very deep cavity.
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深空腔悬浮结构的TEM样品制备
透射电子显微镜(TEM)失效分析由于能够在亚纳米尺度上提供高分辨率的测量和元素表征而被广泛应用于半导体制造领域。尽管TEM技术有许多优点,但传统的聚焦离子束(FIB)样品制备的一个挑战是对目标的TEM片层尺寸、结构或模式的限制。在这项工作中,我们展示了如何在具有深空腔的悬浮结构上制备TEM薄片。在第一个案例研究中,正确选择倾斜沉积的涂层材料和使用原位提升技术是成功制备样品的关键,可以研究悬架结构沿大侧壁的薄残留层。在第二个案例研究中,应用精细切割和样品重定向使我们能够制备无伪影样品,以表征非常深的空腔底部的蚀刻后残留物。
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