一个有效的,完全非线性的,可变感知的非蒙特卡罗产率估计程序,应用于SRAM单元和环形振荡器

Chenjie Gu, J. Roychowdhury
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引用次数: 46

摘要

由于参数变化导致的失效和良率问题已经成为亚90纳米技术的重要问题。因此,迫切需要CAD算法和工具,使设计师能够快速准确地估计变异性的影响。对于静态RAM (SRAM)单元和集成振荡器来说,对此类工具的需求尤其迫切,因为此类电路在设计过程中需要昂贵且高精度的仿真。提出了一种快速计算参数良率的新方法。该技术是基于有效的、自适应的几何计算的概率超体积由边界分隔的通过/失败区域在参数空间。该方法的一个关键特点是,它比蒙特卡罗方法效率高得多,同时在典型应用中实现了更好的精度。该方法对于指定为角点的参数或完全统计分布都同样有效;重要的是,当许多参数变化时,它可以很好地扩展。我们将该方法应用于SRAM单元和环形振荡器,并与完整的蒙特卡罗进行了广泛的比较,证明了100-1000倍的速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient, fully nonlinear, variability-aware non-monte-carlo yield estimation procedure with applications to SRAM cells and ring oscillators
Failures and yield problems due to parameter variations have become a significant issue for sub-90-nm technologies. As a result, CAD algorithms and tools that provide designers the ability to estimate the effects of variability quickly and accurately are being urgently sought. The need for such tools is particularly acute for static RAM (SRAM) cells and integrated oscillators, for such circuits require expensive and high-accuracy simulation during design. We present a novel technique for fast computation of parametric yield. The technique is based on efficient, adaptive geometric calculation of probabilistic hypervolumes subtended by the boundary separating pass/fail regions in parameter space. A key feature of the method is that it is far more efficient than Monte-Carlo, while at the same time achieving better accuracy in typical applications. The method works equally well with parameters specified as corners, or with full statistical distributions; importantly, it scales well when many parameters are varied. We apply the method to an SRAM cell and a ring oscillator and provide extensive comparisons against full Monte-Carlo, demonstrating speedups of 100-1000 times.
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