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Systematic Data Mining Using a Pattern Database to Accelerate Yield Ramp

机译:使用模式数据库加速产量提升的系统数据挖掘

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Pattern-based approaches to physical verification, such as DRC Plus, which use a library of patterns to identify problematic 2D configurations, have been proven to be effective in capturing the concept of manufacturability where traditional DRC fails. As the industry moves to advanced technology nodes, the manufacturing process window tightens and the number of patterns continues to rapidly increase. This increase in patterns brings about challenges in identifying, organizing, and carrying forward the learning of each pattern from test chip designs to first product and then to multiple product variants. This learning includes results from printability simulation, defect scans and physical failure analysis, which are important for accelerating yield ramp. Using pattern classification technology and a relational database, GLOBALFOUNDRIES has constructed a pattern database (PDB) of more than one million potential yield detractor patterns. In PDB, 2D geometries are clustered based on similarity criteria, such as radius and edge tolerance. Each cluster is assigned a representative pattern and a unique identifier (ID). This ID is then used as a persistent reference for linking together information such as the failure mechanism of the patterns, the process condition where the pattern is likely to fail and the number of occurrences of the pattern in a design. Patterns and their associated information are used to populate DRC Plus pattern matching libraries for design-for-manufacturing (DFM) insertion into the design flow for auto-fixing and physical verification. Patterns are used in a production-ready yield learning methodology to identify and score critical hotspot patterns. Patterns are also used to select sites for process monitoring in the fab. In this paper, we describe the design of PDB, the methodology for identifying and analyzing patterns across multiple design and technology cycles, and the use of PDB to accelerate manufacturing process learning. One such analysis tracks the life cycle of a pattern from the first time it appears as a potential yield detractor until it is either fixed in the manufacturing process or stops appearing in design due to DFM techniques such as DRC Plus. Another such analysis systematically aggregates the results of a pattern to highlight potential yield detractors for further manufacturing process improvement.
机译:基于模式的物理验证方法(例如DRC Plus)使用模式库来识别有问题的2D配置,已被证明可有效捕获传统DRC失败的可制造性概念。随着行业向先进技术节点发展,制造过程窗口越来越紧,图案数量继续迅速增加。模式的增加给识别,组织和进行从测试芯片设计到第一个产品,然后到多个产品变体的每个模式的学习带来了挑战。该学习包括可印刷性仿真,缺陷扫描和物理故障分析的结果,这些结果对于加速成品率提升很重要。 GLOBALFOUNDRIES使用模式分类技术和关系数据库,构建了一个模式数据库(PDB),该数据库包含超过一百万个潜在的产量下降因素模式。在PDB中,基于相似性标准(例如半径和边缘公差)对2D几何形状进行聚类。每个群集被分配一个代表模式和一个唯一标识符(ID)。然后,此ID用作将信息链接在一起的持久性引用,例如模式的失败机制,模式可能失败的处理条件以及设计中模式的出现次数。模式及其相关信息用于填充DRC Plus模式匹配库,以便将制造设计(DFM)插入到设计流程中以进行自动修复和物理验证。模式用于生产就绪的收益学习方法中,以识别和评分关键的热点模式。模式还用于选择工厂中用于过程监控的站点。在本文中,我们描述了PDB的设计,在多个设计和技术周期内识别和分析模式的方法以及使用PDB加速制造过程学习的方法。一个这样的分析跟踪从一个图案的生命周期开始,直到它在潜在的产量下降因素中出现,直到它在制造过程中被固定或者由于DFM技术(例如DRC Plus)而停止出现在设计中。另一种此类分析系统地汇总了图案的结果,以突出显示潜在的产量下降因素,以进一步改善制造工艺。

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