DocumentCode :
3567592
Title :
White Box Model of Feasible Solutions of Unity Gain Cells
Author :
Polanco-Martagon, Said ; Ruiz-Ascencio, Jose
Author_Institution :
Artificial Intell. Lab., Centro Nac. de Investig. y Desarrollo Tecnol. Cuernavaca, Cuernavaca, Mexico
fYear :
2014
Firstpage :
167
Lastpage :
173
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.
Keywords :
MOSFET; genetic algorithms; regression analysis; MOSFET design variables; NSGA-II algorithms; Pareto optimal front; Pareto-optimal performance; RMSE; SPICE simulation; current follower; data-driven white box models; modified symbolic regression technique; multigene genetic programming; symbolic regression; unity gain cells; voltage follower; white box model; Data models; Integrated circuit modeling; MOSFET; Mathematical model; Semiconductor device modeling; Sociology; Statistics; Analog Integrated Circuits; NSGA-II; Symbolic Regression; UGC;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Artificial Intelligence (MICAI), 2014 13th Mexican International Conference on
Print_ISBN :
978-1-4673-7010-3
Type :
conf
DOI :
10.1109/MICAI.2014.32
Filename :
7222860
Link To Document :
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