普通Kriging元模型辅助蚁群算法快速模拟设计优化

Oghenekarho Okobiah, S. Mohanty, E. Kougianos
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引用次数: 17

摘要

本文探讨了一种普通的基于Kriging的元建模技术,该技术允许设计人员以非常好的精度创建电路模型,同时大大减少了仿真所需的时间。基于回归和插值的方法已经得到了广泛的研究,并且是创建元模型的常用技术。然而,他们没有考虑到设计和工艺参数之间的相关性的影响,这在纳米尺度下是至关重要的。Kriging提供了一种改进的元建模技术,该技术在元模型生成阶段考虑了关联效应。普通的Kriging元模型采用蚁群优化算法,实现了电路的快速优化。以一个感测放大电路为例,对这种设计方法进行了评估。结果表明,基于Kriging的元模型非常精确,基于蚁群的算法以功耗为设计约束,平均优化时间为3.7分钟(元模型上的优化),而基于SPICE网络列表的优化时间为72小时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ordinary Kriging metamodel-assisted Ant Colony algorithm for fast analog design optimization
This paper explores an ordinary Kriging based metamodeling technique that allows designers to create a model of a circuit with very good accuracy, while greatly reducing the time required for simulations. Regression and interpolation based methods have been researched extensively and are a commonly used technique for creating metamodels. However, they do not take into account the effect of correlation between design and process parameters, which are critical in the nanoscale regime. Kriging provides an improved metamodeling technique which takes into effect correlation effects during the metamodel generation phase. The ordinary Kriging metamodels are subjected to an Ant Colony Optimization (ACO) algorithm that enables fast optimization of the circuit. This design methodology is evaluated on a sense amplifier circuit as a case study. The results show that the Kriging based metamodels are very accurate and the ACO based algorithm optimizes the sense amplifier precharge time with power consumption as a design constraint in an average time of 3.7 minutes (optimization on the metamodel), compared to 72 hours (optimization on the SPICE netlist).
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