数字电路测试逻辑自动生成的遗传算法

Fulvio Corno, P. Prinetto, M. Reorda
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引用次数: 15

摘要

测试是数字电路设计和生产中的一个关键问题:采用BIST(内置自测)技术越来越受欢迎,但有时需要有效的算法来自动生成逻辑,从而生成应用于被测单元的测试向量。本文解决了识别一个能够生成输入模式以检测有限状态机(FSM)内卡滞故障的元胞自动机的问题。首先确定了合适的硬件结构。然后提出了一种遗传算法,该算法直接识别出能够对卡在故障达到很好的故障覆盖的元胞自动机。该方法的新颖之处在于将测试模式的生成与能够复制它们的元胞自动机的合成相结合。实验结果表明,在大多数标准基准电路中,遗传算法选择的元胞自动机能够达到接近最大故障覆盖率的故障覆盖率。我们的方法是利用进化技术来识别BIST结构中输入模式生成的硬件的第一次尝试。
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A genetic algorithm for automatic generation of test logic for digital circuits
Testing is a key issue in the design and production of digital circuits: the adoption of BIST (Built-in Self-Test) techniques is increasingly popular, but sometimes requires efficient algorithms for the automatic generation of the logic which generates the test vectors applied to the unit under test. This paper addresses the issue of identifying a cellular automaton able to generate input patterns to detect stuck-at faults inside a finite state machine (FSM). A suitable hardware structure is first identified. A genetic algorithm is then proposed, which directly identifies a cellular automaton able to reach a very good fault coverage of the stuck-at faults. The novelty of the method consists in combining the generation of test patterns with the synthesis of a cellular automaton able to reproduce them. Experimental results are provided, which show that in most of the standard benchmark circuits the cellular automaton selected by the genetic algorithm is able to reach a fault coverage close to the maximum one. Our approach is the first attempt of exploiting evolutionary techniques for identifying the hardware for input pattern generation in BIST structures.
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