基于神经网络的GaN hemt终端电荷建模方法

Haorui Luo, Yongxin Guo
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引用次数: 1

摘要

本文详细介绍了基于神经网络(NN)的氮化镓高电子迁移率晶体管(GaN HEMT)终端电荷建模方法。该方法在保证终端装药建模精度的同时,克服了终端装药原本较高的建模难度。构建了一个两隐层人工神经网络,分别对MIT虚拟源(MVS)理论中的源端终端电荷(qis)和漏端终端电荷(q $id)进行建模。MVS理论用于连接基于人工神经网络的终端电荷和漏极电流。该方法具有精确的漏极电流性能。
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A Neural Network-Based Modeling Method for Terminal Charges in GaN HEMTs
In this paper, the detailed description of neural network (NN)-based modeling method for terminal charges in gallium nitride high electron mobility transistor (GaN HEMT) is presented. This method helps to overcome originally high modeling difficulty of terminal charges while their modeling accuracy can be guaranteed. A two-hidden layer ANN is constructed to model the source-end terminal charge (qis) and drain-end terminal charge ($q$id) in the MIT Virtual Source (MVS) theory, respectively. The MVS theory is used to connect the ANN-based terminal charges and drain current. This method is benchmarked with accurate drain current performance.
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