使用动态设计分区改进卷诊断吞吐量

Xiaoxin Fan, Huaxing Tang, Yu Huang, Wu-Tung Cheng, S. Reddy, B. Benware
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引用次数: 28

摘要

提出了一种基于动态设计分区的方法,通过使用给定约束的计算资源c,在给定时间T内增加故障模具的诊断数量来提高体积诊断的吞吐量。最近,我们提出了一种静态设计分区方法来减少大型设计的诊断内存占用[1],以实现这一目标。在不使用测试模式和故障文件信息的情况下,对每个设计应用[1]中的方法一次,然后对故障文件在设计分区的适当块上进行诊断。尽管减少了诊断的内存占用,但对于某些类型的缺陷(如桥接),诊断质量受到了不可接受的影响。在本文中,我们提出了一种新的故障相关设计划分方法,以提高卷诊断吞吐量,同时对诊断质量的影响最小。对于每个故障文件,该方法首先确定诊断该故障所需的小分区,然后对该分区进行诊断,而不是对整个设计进行诊断。由于分区要小得多,因此与使用先前建议的静态分区相比,诊断的运行时间和内存使用都可以显著减少。在几个大型工业设计上进行了大量的实验来验证所提出的方法。已经观察到,各种缺陷的典型分割尺寸小于原始设计尺寸的3%。此外,诊断在分区上运行得更快(>;2X)。结合这两个因素,体积诊断的吞吐量可以提高一个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved volume diagnosis throughput using dynamic design partitioning
A method based on dynamic design partition is presented to increase the throughput of volume diagnosis by increasing the number of failing dies diagnosed within a given time T using given constrained computational resources C. Recently we proposed a static design partitioning method to reduce the diagnosis memory footprint for large designs [1] to achieve this objective. The method in [1] is applied once for each design without using the information of test patterns and failure files, and then diagnosis is performed on an appropriate block(s) of the design partition for a failure file. Even though the memory footprint of diagnosis is reduced the diagnosis quality is impacted to unacceptable levels for some types of defects such as bridges. In this paper, we propose a new failure dependent design partitioning method to improve volume diagnosis throughput with a minimal impact on diagnosis quality. For each failure file, the proposed method first determines the small partition needed to diagnose this failure, and then performs the diagnosis on this partition instead of the complete design. Since the partition is far smaller, both the run time and the memory usage of diagnosis can be significantly reduced better than when earlier proposed static partition is used. Extensive experiments were conducted on several large industrial designs to validate the proposed method. It has been observed that the typical partition size for various defects is less than 3% of the size of the original design. Also diagnosis runs much faster (>;2X) on the partition. Combining these two factors, the throughput of volume diagnosis can be improved by an order of magnitude.
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