Efficient Test Compaction for Pseudo-Random Testing

Shenmin Zhang, S. Seth, B. Bhattacharya
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引用次数: 25

Abstract

Compact set of 3-valued test vectors for random pattern resistant faults are covered in multiple test passes. During a pass, its associated test cube specifies certain bits in the scan chain to be held fixed and others to change pseudo -randomly. We propose an algorithm to find a small number of cubes to cover all the test vectors, thus minimizing total test length. The test-cube finding algorithm repeatedly evaluates small perturbations of the current solution so as to maximize the expected test coverage of the cube. Experimental results show that our algorithm covers the test vectors by test cubes that are one to two orders of magnitude smaller in number with a much smaller increase in the percentage of specified bits. It outperforms comparable schemes reported in the literature
伪随机测试的有效测试压缩
在多次测试中涵盖了抗随机模式故障的紧集3值测试向量。在通过过程中,其关联的测试多维数据集指定扫描链中的某些位为固定位,而其他位为伪随机更改。我们提出了一种算法来寻找少量的立方体来覆盖所有的测试向量,从而最小化总测试长度。测试立方体寻找算法反复评估当前解的小扰动,以最大化立方体的预期测试覆盖率。实验结果表明,我们的算法通过测试立方体覆盖测试向量,测试立方体的数量要小一到两个数量级,而指定位的百分比增加要小得多。它优于文献中报道的类似方案
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