基于机器学习的遗传算法加速高维MOSFET紧凑模型参数提取

Gazmend Alia, Andi Buzo, H. Maier-Flaig, Klaus-Willi Pieper, L. Maurer, G. Pelz
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引用次数: 5

摘要

对更精确模拟的需求促使科学家和工程师设计更好、更精确和更复杂的MOSFET紧凑模型。在过去的几十年里,计算能力和速度的巨大进步支持了这一点。紧凑模型的参数数量已经增加到成百上千,远远超出了人类的思维能力。因此,模型的校准以表示设备的真实特性,也称为参数提取,是一项复杂而耗时的任务。为了解决这一问题,人们尝试了许多自动化技术,其中最有前途的是基于遗传算法的自动化技术。另一方面,遗传算法虽然适合于这样的任务,但需要大量的模拟才能收敛到一个好的解决方案。在本文中,我们提出了一种方法,通过引入遗传算法和代理模型作为分类器的组合来大幅减少模拟次数。代理模型与遗传算法相结合的研究现状主要集中在如何利用代理模型代替昂贵的仿真。我们的新方法包括在遗传算法和模拟之间添加一个分类器层,它过滤掉大量不需要模拟的无前途参数集。在本研究中,采用差分进化作为遗传算法,经过对几种分类器类型的仔细评估,选择决策树分类器作为性能最好的分类器。在BSIM4和HiSIM-HV MOSFET紧凑模型两个复杂的实际问题中对该方法进行了测试,结果表明,在不影响算法收敛性和保持求解精度的情况下,可以消除高达70%的仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based acceleration of Genetic Algorithms for Parameter Extraction of highly dimensional MOSFET Compact Models
The need for more accurate simulations has pushed scientists and engineers to design better, more accurate and more complex MOSFET compact models. This has been supported by the big improvements in computational power and speed in the last decades. The number of parameters of the compact models has increased to hundreds and thousands and it is far beyond what the human mind can handle. As a results, the calibration of the models to represent the real characteristics of the device, also known as parameter extraction, is a complex and time consuming task. To solve this problem, many automatic techniques have been tried and the most promising ones are based on genetic algorithms. Genetic algorithms on the other side, although appropriate for such tasks, require a large number of simulations to converge to a good solution. In this paper we propose a methodology to drastically reduce the number of simulations by introducing a combination of genetic algorithms and surrogate models as classifiers. The state of the art about the combination of surrogate models and genetic algorithms is exclusively focused on how to use surrogate models to substitute the expensive simulations. Our novel approach consists on adding a classifier layer between the genetic algorithm and the simulations, which filters out a significant number of non-promising parameter sets that do not need to be simulated at all. In this research, differential evolution was used as the genetic algorithm and after a careful evaluation of several classifier types, the decision tree classifier was selected as the best performing one. The method was tested with two complex real life problems, BSIM4 and HiSIM-HV MOSFET compact models, and the results show that up to 70% of the simulations could be eliminated without disturbing the convergence of the algorithm and maintaining the accuracy of the solution.
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