Compact fault dictionary construction for efficient isolation of faults in analog and mixed-signal circuits

S. Chakrabarti, A. Chatterjee
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引用次数: 16

Abstract

Diverse design styles and the associated complex circuit specifications make testing by functional methods prohibitively expensive for most analog and mixed-signal circuits. Hence, fault oriented test techniques, similar to those for digital circuits, are being actively pursued in the research community. However the large number of failure mechanisms in analog and mixed-signal circuits presents a major bottleneck in terms of fault simulation effort and in the construction of compact fault dictionaries. In this paper, we propose an efficient fault sampling and clustering methodology to construct compact fault dictionaries for complex analog and mixed-signal circuits, with significantly reduced fault simulation effort. For a given fault universe, we show that only a small fraction of the total faults need to be simulated and stored in the fault dictionary to achieve near-perfect diagnosis. A fault sampling algorithm is proposed to identify the faults that contribute to diagnostic information with minimal simulation effort. A fault clustering algorithm is applied to the resulting fault syndromes to identify equivalent syndromes with maximal diagnostic information content. For complex analog/mixed-signal circuits, the fault sampling and fault clustering algorithms are applied hierarchically to construct the compact fault dictionaries, without sacrificing diagnostic accuracy.
紧凑的故障字典结构,有效隔离模拟和混合信号电路中的故障
不同的设计风格和相关的复杂电路规格使得通过功能方法进行测试对于大多数模拟和混合信号电路来说非常昂贵。因此,面向故障的测试技术,类似于数字电路的测试技术,正在研究界得到积极的研究。然而,模拟和混合信号电路中大量的故障机制给故障仿真工作和紧凑故障字典的构建带来了很大的瓶颈。在本文中,我们提出了一种有效的故障采样和聚类方法,用于构建复杂模拟和混合信号电路的紧凑故障字典,大大减少了故障模拟的工作量。对于给定的故障域,我们表明只需模拟总故障的一小部分并将其存储在故障字典中即可实现近乎完美的诊断。提出了一种故障采样算法,以最小的仿真工作量识别出有助于诊断信息的故障。将故障聚类算法应用于得到的故障证候,以识别诊断信息量最大的等价证候。对于复杂模拟/混合信号电路,在不牺牲诊断精度的前提下,分层次采用故障采样和故障聚类算法构建紧凑的故障字典。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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