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An Efficient Built-in Self-Test Algorithm for Neighborhood Pattern- and Bit-Line-Sensitive Faults in High-Density Memories

机译:高密度存储器中邻域模式和位线敏感故障的高效内置自检算法

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As the density of memories increases, unwanted interference between cells and the coupling noise between bit-lines become significant, requiring parallel testing. Testing high-density memories for a high degree of fault coverage requires either a relatively large number of test vectors or a significant amount of additional test circuitry. This paper proposes a new tiling method and an efficient built-in self-test (BIST) algorithm for neighborhood pattern-sensitive faults (NPSFs) and new neighborhood bit-line sensitive faults (NBLSFs). Instead of the conventional five-cell and nine-cell physical neighborhood layouts to test memory cells, a four-cell layout is utilized. This four-cell layout needs smaller test vectors, provides easier hardware implementation, and is more appropriate for both NPSFs and NBLSFs detection. A CMOS column decoder and the parallel comparator proposed by P. Mazumder are modified to implement the test procedure. Consequently, these reduce the number of transistors used for a BIST circuit Also, we present algorithm properties such as the capability to detect stuck-at faults, transition faults, conventional pattern-sensitive faults, and neighborhood bit-line sensitive faults.
机译:随着存储器密度的增加,单元之间的不必要干扰以及位线之间的耦合噪声变得很明显,需要进行并行测试。为高故障覆盖率测试高密度存储器需要相对大量的测试向量或大量额外的测试电路。本文针对邻域模式敏感故障(NPSF)和新型邻域位线敏感故障(NBLSF)提出了一种新的切片方法和一种高效的内置自检(BIST)算法。代替传统的五单元和九单元物理邻域布局来测试存储单元,而是采用四单元布局。这种四单元布局需要更小的测试向量,提供更容易的硬件实现,并且更适合于NPSF和NBLSF的检测。修改了P. Mazumder提出的CMOS列解码器和并行比较器,以实现测试程序。因此,这些减少了用于BIST电路的晶体管的数量。此外,我们介绍了算法属性,例如检测卡住的故障,过渡故障,常规模式敏感故障和邻域位线敏感故障的能力。

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