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首页> 外文期刊>Journal of Low Power Electronics >Enhanced Statistical Blockade Approaches for Fast Robustness Estimation and Compensation of Nano-CMOS Circuits
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Enhanced Statistical Blockade Approaches for Fast Robustness Estimation and Compensation of Nano-CMOS Circuits

机译:增强的统计封锁方法,可快速估计和补偿纳米CMOS电路

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摘要

The challenges to design engineers have been complicated due to the introduction of nanoscale process variation into the design phase. One of the ways to analyze the circuit behaviours under process variation is to determine the rare events that may be originated due to such process variation. A method called Statistical Blockade (SB) had been investigated to estimate the rare events statistics especially for high-replication circuits. An enhanced statistical blockade method is proposed in this paper which is shown to be much faster compared to the traditional exhaustive Monte Carlo simulation. In SB, the classification threshold determination is quite important for different tail regions, which is related to the number of rare events simulation. This paper presents the values of classification threshold t_c for different tail regions of typical circuits and the training samples size n required for corresponding t_c. It offers both fastest speed of simulation and highest accuracy for the proposed Statistical Blockade method. It is also proven that the obtained t_c can be used for all the technology corners. The enhanced statistical blockade method thus performs fast estimate the robustness for different designs. In the proposed method, the tail part of the whole distribution is used in estimation; thereby saving time. It shows 7.3x faster than traditional evaluation methods. Furthermore, for the design which is proved to be robust even in worst-case, the optimal body bias voltage is applied to improve the performance and power while reducing the variability with Adaptive Body Bias (ABB) technique.
机译:由于将纳米级工艺变化引入设计阶段,设计工程师面临的挑战变得复杂。分析工艺变化下的电路行为的一种方法是确定可能由于这种工艺变化而引起的罕见事件。已经研究了一种称为统计封锁(SB)的方法来估计稀有事件统计信息,尤其是对于高复制电路而言。本文提出了一种增强的统计封锁方法,与传统的详尽蒙特卡洛模拟相比,该方法被证明要快得多。在SB中,分类阈值确定对于不同尾部区域非常重要,这与稀有事件模拟的数量有关。本文介绍了典型电路不同尾部区域的分类阈值t_c的值,以及相应t_c所需的训练样本大小n。它为拟议的统计封锁方法提供了最快的仿真速度和最高的准确性。还证明了所获得的t_c可用于所有技术领域。因此,增强的统计封锁方法可以快速估计不同设计的鲁棒性。该方法将整个分布的尾部用于估计。从而节省时间。它的显示速度是传统评估方法的7.3倍。此外,对于即使在最坏情况下也被证明是可靠的设计,采用了最佳的车身偏置电压,以改善性能和功率,同时利用自适应车身偏置(ABB)技术降低了可变性。

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