An accurate and efficient yield optimization method for analog circuits based on computing budget allocation and memetic search technique

Bo Liu, Francisco V. Fernández, G. Gielen
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引用次数: 13

Abstract

Monte-Carlo (MC) simulation is still the most commonly used technique for yield estimation of analog integrated circuits, because of its generality and accuracy. However, although some speed acceleration methods for MC simulation have been proposed, their efficiency is not high enough for MC-based yield optimization (determines optimal device sizes and optimizes yield at the same time), which requires repeated yield calculations. In this paper, a new sampling-based yield optimization approach is presented, called the Memetic Ordinal Optimization (OO)-based Hybrid Evolutionary Constrained Optimization (MOHECO) algorithm, which significantly enhances the efficiency for yield optimization while maintaining the high accuracy and generality of MC simulation. By proposing a two-stage estimation flow and introducing the OO technology in the first stage, sufficient samples are allocated to promising solutions, and repeated MC simulations of non-critical solutions are avoided. By the proposed memetic search operators, the convergence speed of the algorithm can considerably be enhanced. With the same accuracy, the resulting MOHECO algorithm can achieve yield optimization by approximately 7 times less computational effort compared to a state-of-the-art MC-based algorithm integrating the acceptance sampling (AS) plus the Latin-hypercube sampling (LHS) techniques. Experiments and comparisons in 0.35 ¿m and 90 nm CMOS technologies show that MOHECO presents important advantages in terms of accuracy and efficiency.
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基于预算分配计算和模因搜索技术的模拟电路成品率优化方法
蒙特卡罗(MC)模拟由于其通用性和准确性,仍然是模拟集成电路成品率估计最常用的技术。然而,尽管已经提出了一些用于MC模拟的速度加速方法,但它们的效率不足以用于基于MC的良率优化(确定最佳器件尺寸并同时优化良率),这需要重复的良率计算。本文提出了一种新的基于采样的成品率优化方法——基于模因序优化(Memetic Ordinal optimization, OO)的混合进化约束优化(Hybrid Evolutionary Constrained optimization, MOHECO)算法,该算法在保持MC模拟的高精度和通用性的同时,显著提高了成品率优化的效率。通过提出两阶段估计流程,并在第一阶段引入面向对象技术,为有前景的解决方案分配了足够的样本,避免了对非关键解决方案的重复MC模拟。提出的模因搜索算子可以显著提高算法的收敛速度。在相同的精度下,与集成了可接受采样(AS)和拉丁超立方体采样(LHS)技术的最先进的基于mc的算法相比,所得到的MOHECO算法可以减少约7倍的计算量,从而实现产量优化。在0.35¿m和90 nm CMOS技术上的实验和比较表明,MOHECO在精度和效率方面具有重要优势。
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