Combined Genetic Programming and Neural Network Approaches to Electronic Modeling

Louis Zhang, Qijun Zhang
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引用次数: 1

Abstract

An approach combining genetic programming (GP), neural network and electrical knowledge equations is presented for electronic device modeling. The proposed model includes a GP-generated symbolic function accurately representing device behavior within the training range, and a knowledge equation providing reliable tendencies of electronic behavior outside the training range. A correctional neural network is trained to align the knowledge equations with the GP-generated symbolic functions at the boundary of training data. The proposed method is more robust than the GP-generated symbolic functions alone because of improved extrapolation ability, and more accurate than the knowledge equations alone because of the genetic program's ability to learn non-ideal relationships inherent in the practical data. The method is demonstrated by applying it to a practical high-frequency, high-power transistor called a HEMT (High-Electron Mobility Transistor) used in wireless transmitters.
电子建模的遗传规划与神经网络结合方法
提出了一种结合遗传规划、神经网络和电气知识方程的电子器件建模方法。该模型包括一个gp生成的符号函数,该函数准确地表示训练范围内的设备行为,以及一个知识方程,提供训练范围外的电子行为的可靠趋势。在训练数据的边界处,训练一个校正神经网络将知识方程与gp生成的符号函数对齐。由于改进了外推能力,该方法比单独使用gp生成的符号函数更鲁棒;由于遗传程序能够学习实际数据中固有的非理想关系,该方法比单独使用知识方程更准确。该方法通过将其应用于一种实用的高频,高功率晶体管HEMT(高电子迁移率晶体管)来证明,这种晶体管用于无线发射器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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