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Novel Self-Body-Biasing and Statistical Design for Near-Threshold Circuits With Ultra Energy-Efficient AES as Case Study

机译:基于超节能AES的近阈值电路的新型自偏置和统计设计

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摘要

Near-threshold operation enables high energy efficiency, but requires proper design techniques to deal with performance loss and increased sensitivity to process variations. In this paper, we address both issues with two synergistic approaches. First, we introduce a novel body-biasing technique to mitigate the performance loss at near-threshold voltages while not requiring any additional circuitry for the body-bias control, thereby minimizing the design effort and simplifying the systems-on-chip integration. Second, we introduce a novel statistical design methodology to efficiently and accurately evaluate the design guardband strictly needed in the worst case, thereby keeping the area cost of variations at its very minimum. A 65-nm advanced encryption standard testchip demonstrates throughput improvement over a baseline design without body biasing, and enables reliable operation over a wide voltage range (0.5–1.2 V) as opposed to traditional body-biasing schemes. In addition, our testchip achieves area efficiency improvement compared with a design based on corner analysis. Accordingly, the proposed techniques are well suited for the design of near-threshold specialized hardware with improved performance, reduced silicon area, and design effort.
机译:近阈值操作可实现高能效,但需要适当的设计技术来应对性能损失和对过程变化的敏感性增加。在本文中,我们通过两种协同方法解决了这两个问题。首先,我们引入了一种新颖的人体偏置技术,以减轻接近阈值电压时的性能损失,同时不需要任何其他用于人体偏置控制的电路,从而最大程度地减少了设计工作并简化了片上系统集成。其次,我们引入了一种新颖的统计设计方法,可以有效,准确地评估在最坏情况下严格需要的设计保护带,从而将变化的面积成本保持在最低限度。 65纳米高级加密标准测试芯片证明了在基线设计上的吞吐量得以提高,而没有人体偏置,并且与传统的人体偏置方案相比,它能够在较宽的电压范围(0.5–1.2 V)下可靠运行。此外,与基于角点分析的设计相比,我们的测试芯片可提高面积效率。因此,所提出的技术非常适合于具有改进的性能,减小的硅面积和设计工作量的近阈值专用硬件的设计。

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