利用单扫描和增强的基于设计的分组方法改进进程窗口和热点发现

Sonal Singh, S. Khokale, Qian Xie, Panneerselvam Venkatachalam, Alexa Greer, A. Mathur, Ankit Jain
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引用次数: 4

摘要

随着技术节点的减少,半导体良率的提高和稳定性越来越难以实现。有许多新的来源、类型和机制的过程引起的系统缺陷,随着需求的增长,识别和控制那些影响产量的热点来源,以最全面的结果,最快的时间,和最低的成本。在此之前,已有大量关于热点发现技术的描述和出版物,但要跟上当今要求快速结果的快节奏开发过程,所需的流程和时间几乎没有全面改进。我们建议在过程窗口发现方法中实施新的检查和分组算法,以实现对结果、过程窗口资格和热点识别的及时改进。这些系统缺陷发现的改进使光刻工艺比以往任何时候都更精确和更精确地控制和监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilizing Single Scan and Enhanced Design-Based Binning Methodologies for Improved Process Window and Hotspot Discovery
Semiconductor yield improvement and stability is becoming increasingly more difficult to achieve with decreasing technology nodes. There are many new sources, types, and mechanisms of process induced systematic defects, with a growing demand to identify and control those sources of hotspots that impact yield with the most comprehensive results, fastest time, and lowest cost. Previously there has been extensive characterization and publications on the techniques used for hotspot discovery, with little overall improvement to the flow and time to results needed to keep up with today’s fast paced development process which requires rapid results. We propose implementing new inspection and binning algorithms to the process window discovery methodology, to achieve improvements in time to results, process window qualification, and hotspot identification. These systematic defect discovery improvements enable lithography processes to be controlled and monitored more accurately and more precisely than ever before.
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