薄脆饼
覆盖
计量学
平版印刷术
前馈
过程控制
计算机科学
十字线
过程(计算)
先进过程控制
扫描仪
电子工程
节点(物理)
控制工程
材料科学
人工智能
工程类
光学
电气工程
光电子学
物理
操作系统
结构工程
程序设计语言
作者
Henry Megens,Ralph Brinkhof,Igor Aarts,Haico Kok,Leendertjan Karssemeijer,G. ten Haaf,Shawn Lee,Daan Slotboom,Chris de Ruiter,Irina Lyulina,Simon Huisman,Stefan Keij,E.C. Mos,Wim Tel,M. Rijpstra,Emil Schmitt-Weaver,Kaustuve Bhattacharyya,Robert Socha,Boris Menchtchikov,Michael Kubis
摘要
Multi-patterning lithography for future technology nodes in logic and memory are driving the allowed on-product overlay error in an DUV and EUV matched machine operation down to values of 2 nm and below. The ASML ORION alignment sensor provides an effective way to deal with process impact on alignment marks. In addition, optimized higher order wafer alignment models combined with overlay metrology based feedforward correction schemes are deployed to control the process induced overlay variability from wafer-to-wafer and lot-to-lot. In addition machine learning based algorithms based on hybrid metrology inputs, strengthen the control capabilities for high volume manufacturing. The increase of the number of process layers in semiconductor devices results in an increase of control complexity of the total overlay and alignment control strategy. This complexity requires a holistic solution approach, that addresses total overlay optimization from process design, to process setup, and process control in high volume manufacturing. We find the optimum combination between feedforward and feedback, by having feedback deal with constant and predictable parts of overlay and have scanner wafer alignment covering the wafer-to-wafer variable part of overlay. In this paper we present investigation results using more wavelengths for wafer alignment and show the benefits in wavelength selection and recipe optimization. We investigate the wafer-to-wafer variable content of two experiment cases and show that a sample scheme of about 60 marks is well capable estimating the model parameters describing the grid. Finally, we show initial results of using level sensor metrology data as hybrid input to the derivation of the exposure grid.
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