考虑相关性的基于热点的产量预测

Qing Su, C. Chiang, J. Kawa
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引用次数: 1

摘要

可制造性和良率设计已成为先进VLSI技术节点的主要问题。对产量预测能力的需求一直在显著增长。不幸的是,系统的产量预测和分析仍然落后于研究和商业工具的可用性。造成这种情况的一个主要原因是,此类研究高度依赖于难以从晶圆厂获得的数据。因此,需要一种限制这种依赖的新方法。在本文中,我们提出了一种新颖实用的方法,可以在有限的晶圆厂信息和数据下进行系统的良率预测。该方法基于热点定义及其良率分数信息。所需的投入更为实际和现实,机密性较低。对fab数据的依赖是最小的。在这种方法中,我们提出了一种算法,在计算全芯片总产率时,适当地结合产率变量之间的空间相关性。预测总产率评分准确、稳健。我们进一步通过理论和仿真证明了高水平的精度。
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Hotspot Based Yield Prediction with Consideration of Correlations
Design for manufacturability and yield has becomes a major issue for advanced VLSI technology nodes. The demand for a yield prediction capability has been growing significantly. Unfortunately, systematic yield prediction and analysis is still behind in both research and availability of commercial tools. A major reason for that is the high dependency of such research on hard to come by data from fabs. Thus a new approach that limits this dependency is needed. In this paper, we propose a novel and practical approach that enables systematic yield prediction with limited fab information and data. This approach is based on the information of hotspot definitions and their yield scores. The required inputs are more practical and realistic and less confidential. The dependency on the fab data is minimal. In this approach, we propose an algorithm that properly incorporates spatial correlations between yield variables when computing full chip total yield. The predicted total yield score is accurate and robust. We further demonstrate the high level of accuracy by both theory and simulation.
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