On Extracting Reliability Information from Speed Binning

Zahra Paria Najafi-Haghi, F. Klemme, H. Amrouch, H. Wunderlich
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引用次数: 5

Abstract

Adaptive Voltage Frequency Scaling (AVFS) is an important means to overcome process-induced variability challenges for advanced high-performance circuits. AVFS requires and allows determining the maximum speed Fmax(Vdd) reachable under a set of certain operation voltages Vdd. In this paper, it is shown that the Fmax(Vdd) measurements contain relevant data to identify some hidden defects in a chip which are reliability threats and can cause device failures, but pass the speed binning procedure within the given specifications.Static Timing Analysis (STA) is applied to a circuit designed by using standard cell libraries in which the underlying transistors along with process variations have been carefully calibrated against industrial 14nm FinFET measurement data, and in-stances with and without injected small resistive open defects are generated. From the slope of the function Fmax(Vdd), a machine learning procedure can identify some defects with high precision and few false positives. These chips can be then discarded without any further need and cost for testing. It has to be noted that this reliability information comes for free from the data which is already generated, and does not need any additional measurements.
从速度分组中提取可靠性信息的研究
自适应电压频率缩放(AVFS)是克服先进高性能电路过程引起的变异性挑战的重要手段。AVFS要求并允许确定在一组特定操作电压下可达到的最大速度Fmax(Vdd)。本文表明,Fmax(Vdd)测量包含了相关的数据,可以识别芯片中存在的一些对可靠性构成威胁并可能导致器件故障的隐藏缺陷,但在给定的规范范围内通过了速度限制程序。静态时序分析(STA)应用于使用标准单元库设计的电路,其中底层晶体管以及工艺变化已经根据工业14nm FinFET测量数据进行了仔细校准,并生成了具有和不具有注入的小电阻性开放缺陷的实例。从函数Fmax(Vdd)的斜率来看,机器学习程序可以以较高的精度和较少的误报识别出一些缺陷。这些芯片可以被丢弃,而不需要进一步的测试和成本。必须指出的是,这种可靠性信息来自于已经生成的数据,不需要任何额外的测量。
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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