利用缺陷特定掩蔽优化模拟故障覆盖

Anthony Coyette, G. Gielen, Ronny Vanhooren, Wim Dobbelaere
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引用次数: 18

摘要

从模拟电路的动态电流消耗波形信号分析出发,提出了一种检测突变缺陷的新方法。虽然其他技术在均方根计算或黑盒技术(如神经网络)中使用整个信息,但这项工作的中心点在于选择波形样本来创建能够区分有缺陷电路和无故障电路的签名。样本的选择是通过引入二进制向量来部分掩盖数据来实现的。面对工艺变化,该技术在自动化测试设备中具有直接和简单的优点。利用遗传算法优化掩模的生成,使无故障电路和故障电路的特征之间的距离最大化,从而提高缺陷覆盖率。工业电路的仿真结果表明,对于特定的刺激,检测到的缺陷数量几乎可以增加一倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of analog fault coverage by exploiting defect-specific masking
A new method is presented to detect catastrophic defects from the signal analysis of dynamic current consumption waveforms of analog circuits. While other techniques use the whole information in a Root-Mean-Square computation or in black-box techniques such as a neural network, the central point of this work resides in the selection of waveform samples to create a signature able to discriminate a defective circuit from a fault-free circuit. The selection of samples is implemented by the introduction of binary vectors to partially mask the data. Confronted with process variations, this technique offers the advantage of being straightforward and simple to implement in Automated Test Equipments. The generation of the masks is optimized to improve the defect coverage by means of a genetic algorithm maximizing the distance between the signature of the fault-free circuit and a faulty circuit. Results from simulations on industrial circuits show that the number of detected defects can be nearly doubled for specific stimuli.
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