超参数
算法
克里金
高电子迁移率晶体管
超参数优化
高斯过程
计算机科学
氮化镓
高斯分布
支持向量机
人工智能
机器学习
工程类
晶体管
电气工程
材料科学
物理
电压
量子力学
图层(电子)
复合材料
作者
Haiyi Cai,Jincan Zhang,Shaowei Wang,Min Liu,Juwei Zhang
标识
DOI:10.1016/j.mejo.2023.106056
摘要
In this paper, a novel technology named Pelican-Gaussian process regression machine learning algorithm is proposed for modelling the large-signal characteristics of Gallium Nitride High Electron Mobility Transistors (GaN HEMT). Hyperparameter optimization in traditional Gaussian process regression algorithms tends to fall into local optimums and is overly dependent on the initial values. In order to solve this problem, the Pelican optimization algorithm is introduced to optimize the hyperparameters in Gaussian process regression algorithms in the article. The Pelican optimization algorithm is able to make the global exploration and local search ability of the algorithm be effectively balanced by helping particles to escape from the local optimal position. The I–V characteristics, output power, power gain, power gain efficiency and small-signal S-parameters of GaN HEMT devices are used to verify the effectiveness of the proposed algorithm. The experimental results show that higher fitting accuracy and generalization ability is found in the improved GPR whose hyperparameters are optimized by the Pelican optimization algorithm.
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