面向VLSI测试动态降功耗的测试矢量重排序的人工智能方法

Sudip Roy, I. Gupta, A. Pal
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引用次数: 14

摘要

随着工艺技术的进步,特征尺寸越来越小,功耗最小化已经成为设计人员和测试工程师面临的一个严重问题。组合电路测试中动态最小功耗测试矢量重排序是低功耗测试总目标的一个子问题。在本文中,我们提出了一种基于人工智能的方法,以最优方式对测试向量进行排序,以最小化测试期间的切换活动。根据经验,与标准的ATPG工具Synopsis TetraMax相比,该算法的开关活动平均减少了22%,这也比应用现有的Chained Lin-Kernighan启发式方法所减少的要多。
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Artificial intelligence approach to test vector reordering for dynamic power reduction during VLSI testing
As the feature size is scaled down with process technology advancement, power minimization has become a serious problem for the designers as well as the test engineers. Test vector reordering for dynamic power minimization during combinational circuit testing is a sub-problem of the general goal of low power testing. In this paper we have proposed an AI-based approach to order the test vectors in an optimal manner to minimize switching activity during testing. Empirically, the proposed algorithm yields on an average of about 22% reduction in switching activity over that given by a standard ATPG tool Synopsis TetraMax, which is also more than the reduction after applying existing Chained Lin-Kernighan heuristic.
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