White Box Model of Feasible Solutions of Unity Gain Cells

S. Polanco-Martagón, José Ruíz Ascencio
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Abstract

Equations or symbolic models of analog circuits increase designers' quantitative and qualitative understanding of a circuit, leading to a better decision-making. In this work symbolic regression is defined as white-box modeling, as opposed to other, more opaque, modeling types. This paper presents an approach to generate data-driven white box models. Our approach consists of two steps: firstly, the Pareto-optimal performance sizes of the Unity Gain Cell are obtained. For this work, unity gain and bandwidth have been simultaneously optimized using the NSGA-II algorithms. Secondly, the resulting Pareto Optimal front is used as data for the construction of white box models of performance as a function of the MOSFET design variables using Multigene genetic programming, which is a modified symbolic regression technique. Experiments were carried out using data obtained by SPICE simulation from the optimization of a voltage follower and a current follower, a set of nine functions (including operators), RMSE as precision measure, and a number of nodes as complexity measure. Among the symbolic models obtained, the simplest in terms of interpretability were sums of polynomials of the design variables. It was found that Multigene Genetic Programming can extract interpretable expressions even where the original design space was not sampled uniformly.
单位增益单元可行解的白盒模型
模拟电路的方程或符号模型增加了设计者对电路的定量和定性理解,从而导致更好的决策。在这项工作中,符号回归被定义为白盒建模,与其他更不透明的建模类型相对。本文提出了一种生成数据驱动的白盒模型的方法。我们的方法包括两个步骤:首先,获得统一增益单元的pareto最优性能大小;为此,采用NSGA-II算法对单位增益和带宽进行了同步优化。其次,利用改进的符号回归技术——多基因遗传规划,将得到的Pareto最优前沿作为构建性能与MOSFET设计变量函数的白盒模型的数据。实验采用SPICE仿真得到的数据,对电压从动器和电流从动器进行优化,选取9个函数(包括算子),以RMSE为精度度量,以节点数为复杂度度量。在得到的符号模型中,最简单的可解释性是设计变量的多项式和。研究发现,即使在原始设计空间不均匀采样的情况下,多基因遗传规划也能提取出可解释的表达式。
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