利用反向传播神经网络对探测器故障模式进行基于人的知识分类。亚微米线性技术的应用

C. Ortega, J. Ignacio, A. Montull, E. Sobrino
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引用次数: 4

摘要

所谓软计算(神经网络、模糊逻辑、遗传算法等)的实际应用开始在几个领域提供重要的优势。特别是在半导体领域这样的高成本环境中,迄今为止,这些研究技术的应用为传统的增产方法提供了一个有吸引力的替代方案。为了增加晶圆直径和更紧凑的技术,微小缺陷的影响会产生致命的后果,基于检测的良率提高策略需要智能新工具的协同作用,另一方面,这些工具的成本只是当前检测机器的一小部分。这种新策略用于以系统的方式对晶圆厂的所有生产进行分类和分析,为提高产量提供了新的可能性,而不会影响周期时间、成本和达到没有这种新方法无法实现的检验水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human based knowledge for the probe failure pattern classification with the use of a backpropagation neural network. Application on submicron linear technologies
The practical use of what is known as soft computing (neural networks, fuzzy logic, genetic algorithms, etc.) is starting to offer important advantages in several fields. In particular, in a high-cost environment like the semiconductor arena, the application of those, up to now, research techniques offers an attractive alternative to the traditional approaches of yield enhancement. For increasing wafer diameters and more compact technologies, where the effect of tiny defects produces fatal consequences, a yield enhancement strategy based on inspections requires the synergy of intelligent new tools that, on the other hand, have a fraction of cost of the current inspection machines. This new strategy is used to classify and analyse all the production of a fab in a systematic way, providing new possibilities to improve yields without penalising cycle time, cost and reaching inspection levels impossible to achieve without this new approach.
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