首页> 外文会议>Conference on Design-Process-Technology Co-optimization for Manufacturability IX >A methodology to optimize design pattern context size for higher sensitivity to hotspot detection using pattern association tree (PAT)
【24h】

A methodology to optimize design pattern context size for higher sensitivity to hotspot detection using pattern association tree (PAT)

机译:一种方法来优化设计模式上下文大小,以使用模式关联树(PAT)对热点检测的敏感性更高的灵敏度

获取原文

摘要

Pattern based design rule checks have emerged as an alternative to the traditional rule based design rule checks in the VLSI verification flow. Typically, the design-process weak-points, also referred as design hotspots, are classified into patterns of fixed size. The size of the pattern defines the radius of influence for the process. These fixed sized patterns are used to search and detect process weak points in new designs without running computationally expensive process simulations. However, both the complexity of the pattern and different kinds of physical processes affect the radii of influence. Therefore, there is a need to determine the optimal pattern radius (size) for efficient hotspot detection. The methodology described here uses a combination of pattern classification and pattern search techniques to create a directed graph, referred to as the Pattern Association Tree (PAT). The pattern association tree is then filtered based on the relevance, sensitivity and context area of each pattern node. The critical patterns are identified by traversing the tree and ranking the patterns. This method has plausible applications in various areas such as process characterization, physical design verification and physical design optimization. Our initial experiments in the area of physical design verification confirm that a pattern deck with the radius optimized for each pattern is significantly more accurate at predicting design hotspots when compared to a conventional deck of fixed sized patterns.
机译:基于模式的设计规则检查作为传统规则基于规则的设计规则检查的替代方案,在VLSI验证流程中检查。通常,设计过程弱点,也称为设计热点,分为固定尺寸的模式。模式的大小定义了该过程的影响半径。这些固定大小的模式用于搜索和检测新设计中的过程弱点,而无需计算昂贵的过程模拟。然而,模式的复杂性和不同种类的物理过程影响了影响的辐射。因此,需要确定有效的热点检测的最佳模式半径(大小)。这里描述的方法使用模式分类和模式搜索技术的组合来创建定向图,称为模式关联树(PAT)。然后基于每个图案节点的相关性,灵敏度和上下文区域来过滤模式关联树。通过遍历树并排列模式来识别临界模式。该方法在各种领域具有可粘合的应用,例如过程表征,物理设计验证和物理设计优化。我们在物理设计验证领域的初始实验证实,与传统的固定尺寸图案的传统甲板相比,在预测设计热点时,具有针对每个图案优化的半径的图案甲板在预测设计热点上显着更准确。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号