Ultra large pitch and depth structures metrology using spectral reflectometry in combination with RCWA based model and TLM Algorithm : AM: Advanced Metrology

Annalisa Del Vito, I. Osherov, A. Urbanowicz, Y. Katz, Kobi Barkan, I. Turovets, R. Haupt
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引用次数: 1

Abstract

The mainstream of dimensional metrology development is focused towards continuous shrinking of the devices (Moore scaling). Current cutting-edge technologies are in few nanometer range (3-7nm). There is also a growing demand to characterize structures with large dimensions in microns range (pitch, CD or depth). New technology megatrends such as internet of things (IOT) additionally require More than Moore scaling and heterogeneous integration [1–3]. Due to recent developments ultra large pitch scatterometry applications growth is observed in high power, sensors and packaging areas. Here we present novel approach that is focused on ultra large pitch scatterometry and its challenges. We demonstrate how to extend usage of conventional scatterometry for micro size devices.
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结合基于RCWA模型和TLM算法的光谱反射测量的超大间距和深度结构测量:AM: Advanced metrology
尺寸计量的主流发展方向是器件的不断缩小(摩尔缩放)。目前的尖端技术在几个纳米范围内(3-7nm)。在微米范围内(间距,CD或深度)表征大尺寸结构的需求也在不断增长。物联网(IOT)等新技术大趋势还需要摩尔缩放和异构集成[1-3]。由于最近的发展,超大间距散射测量在高功率,传感器和封装领域的应用增长。在这里,我们提出了一种新的方法,专注于超大间距散射测量及其挑战。我们演示了如何将传统散射测量法扩展到微尺寸器件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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