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首页> 外文期刊>Journal of Electronic Testing: Theory and Applications: Theory and Applications >Path Clustering for Test Pattern Reduction of Variation-Aware Adaptive Path Delay Testing
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Path Clustering for Test Pattern Reduction of Variation-Aware Adaptive Path Delay Testing

机译:路径聚类以减少变异感知的自适应路径延迟测试的测试模式

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摘要

In this study, a novel path clustering technique for adaptive path delay testing, where the test paths are altered according to the extracted device parameters, is proposed. The proposed algorithm is based on the k-means++ algorithm. By considering the probability function of the die-to-die systematic process variation, the proposed algorithm clusters path sets to minimize the total number of test paths. A figure of merit for clustering, which represents the expected number of test paths, is also proposed for quantitatively evaluating path clustering under different conditions. The proposed clustering method is evaluated numerically by applying it to the OpenCores benchmark circuit. Using our clustering technique, the average number of test paths in the adaptive test is reduced to less than 92 % compared with those in the conventional test. In addition, adaptive testing using the proposed technique can reduce the test patterns by 94.26 % while retaining the test quality.
机译:在这项研究中,提出了一种新的用于自适应路径延迟测试的路径聚类技术,其中根据提取的设备参数更改测试路径。所提出的算法基于k-means ++算法。通过考虑管芯到管芯系统过程变化的概率函数,该算法对路径集进行了聚类,以最大程度地减少测试路径的总数。还提出了聚类的品质因数,它代表测试路径的预期数量,用于定量评估不同条件下的路径聚类。通过将其应用于OpenCores基准电路,对所提出的聚类方法进行了数值评估。使用我们的聚类技术,与传统测试相比,自适应测试中的平均测试路径数量减少到少于92%。此外,使用所提出技术的自适应测试可以在保持测试质量的同时将测试模式减少94.26%。

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