基于机器学习的宽带等离子体光学测量对硅外延薄膜缺陷的高通量、非破坏性评估

S. Matham, C. Durfee, B. Mendoza, D. Sadana, S. Bedell, J. Gaudiello, S. Teehan, Heungsoo Choi, Ankit Jain, M. Plihal
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引用次数: 0

摘要

从历史上看,KLA-Tencor Surfscan®无图案晶圆检测系统上的雾霾计量是确定外延沉积薄膜晶体质量的首选在线非破坏性方法。然而,这种计量仅限于无图案的毯子晶圆片。本文描述了一种非破坏性的在线光学方法,该方法利用宽带等离子体光学缺陷检测过程中获得的背景噪声,利用一种新的快速循环机器学习方法,可以应用于图画化和非图画化衬底,用于测量毯片和图画化硅片的外延质量。这种机器学习方法是一种创新的有害过滤算法,用于内联缺陷检查工具,名为iDO™2.0(内联缺陷组织者™)。该研究展示了一种很有前途的机器学习方法,可重复测量低和高缺陷密度,与赛科蚀刻数据一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-throughput, nondestructive assessment of defects in patterned epitaxial films on silicon by machine learning-enabled broadband plasma optical measurements
Historically, haze metrology on KLA-Tencor Surfscan® unpatterned wafer inspection systems is the preferred inline non-destructive method for ascertaining crystal quality of epitaxial deposited films. However, this metrology is limited to unpatterned blanket wafers. This paper describes a non- destructive inline optical methodology for measuring epitaxial quality of both blanket and patterned wafers using a novel fast turnaround machine learning method that can be applied to patterned and unpatterned substrates by utilizing the background noise obtained during broadband plasma optical defect inspection. This machine learning method is an innovative nuisance filtering algorithm used in inline defect inspection tools, named iDO™ 2.0 (inLine Defect Organizer™). The study showed a promising machine learning approach that repeatably measures low and high defect densities which are consistent with Secco etch data.
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