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首页> 外文期刊>IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems >Fault diagnosis of VLSI circuits with cellular automata based pattern classifier
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Fault diagnosis of VLSI circuits with cellular automata based pattern classifier

机译:基于细胞自动机的模式分类器对VLSI电路的故障诊断

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摘要

This paper reports a fault diagnosis scheme for very large scale integrated (VLSI) circuits. A special class of cellular automata (CA) referred to as multiple attractor CA (MACA) is employed for the design. State transition behavior of MACA has been analyzed to build a model that can efficiently classify the test responses of a VLSI circuit to diagnose its faulty subcircuit. The MACA-based model, in effect, provides an implicit storage for voluminous test response data and replaces the traditional fault dictionary used for diagnosis of VLSI circuits. The proposed diagnosis scheme employs significantly lesser memory to store the MACA parameters and performs faster diagnosis. Experimental results establish the efficiency of the model in respect of memory overhead, execution speed and percentage of diagnosis.
机译:本文报告了超大规模集成电路(VLSI)的故障诊断方案。设计中使用了一种称为多吸引子CA(MACA)的特殊类型的细胞自动机(CA)。已对MACA的状态转换行为进行了分析,以建立一个模型,该模型可以有效地对VLSI电路的测试响应进行分类,以诊断其故障子电路。实际上,基于MACA的模型为大量的测试响应数据提供了隐式存储,并取代了用于诊断VLSI电路的传统故障字典。提出的诊断方案使用的内存要少得多,以存储MACA参数并执行更快的诊断。实验结果确定了该模型在内存开销,执行速度和诊断百分比方面的效率。

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