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Challenges in Cell-Aware Test

机译:细胞感知测试的挑战

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Physical defects like opens and bridging defects can occur during the fabrication process of integrated circuits. The logic level abstraction of these physical defects, named fault models like stuck-at, transition, bridge, and small-delay defect, have been proposed, and are widely used in the industry for Automatic Test Pattern Generation (ATPG). However, as the technology moves to increasingly smaller geometries, these fault models and their associated test patterns are becoming less effective. The reason behind this is that existing fault models only consider faults on cell inputs and outputs, plus the interconnects between them. A growing number of defects occur within the cells, which are not explicitly targeted by traditional ATPG. N-detect algorithms can potentially test such defects by generating multiple patterns which detect cell-internal defects randomly. Cell-Aware Test (CAT) tries to solve this problem by uniquely targeting every possible internal defect. This is done via a series of analog simulations of all possible input combinations for all identified possible defects, which come at a significant runtime penalty. This paper shows a comparison of the static and transition patterns that are generated by the CAT methodology and the traditional ATPG for different library and cell parameters. This paper also aims to throw light on the quality concerns of the generated User Defined Fault Model (UDFM) by comparing results while varying different parameters of analog simulations, which reflect the variation due to Process, Voltage and Temperature (PVT). The increase in performance, pattern count and test coverage with respect to two Arm designs is also presented, which reflects the actual cost and gains of the CAT model over traditional ATPG.
机译:在集成电路的制造过程中会发生诸如开路和桥接缺陷之类的物理缺陷。已经提出了这些物理缺陷的逻辑级别抽象,称为故障模型,如卡住,过渡,桥接和小延迟缺陷,并已在工业中广泛用于自动测试模式生成(ATPG)。但是,随着技术向越来越小的几何形状发展,这些故障模型及其关联的测试模式的有效性越来越低。其背后的原因是,现有故障模型仅考虑单元输入和输出以及它们之间的互连上的故障。越来越多的缺陷发生在单元中,而传统的ATPG并未明确针对这些缺陷。 N-detect算法可以通过生成随机检测细胞内部缺陷的多种模式来潜在地测试此类缺陷。单元意识测试(CAT)试图通过唯一地针对每个可能的内部缺陷来解决此问题。通过对所有可能的输入组合进行所有可能的输入组合的一系列模拟仿真来完成此操作,这会带来明显的运行时间损失。本文显示了CAT方法和传统ATPG针对不同库和单元参数生成的静态和过渡模式的比较。本文还旨在通过比较结果,同时改变模拟仿真的不同参数来反映生成的用户定义的故障模型(UDFM)的质量问题,这些参数反映了过程,电压和温度(PVT)引起的变化。还介绍了相对于两种Arm设计的性能,模式计数和测试覆盖范围的增加,这反映了CAT模型相对于传统ATPG的实际成本和收益。

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