高斯过程
高电子迁移率晶体管
计算机科学
克里金
人工神经网络
参数化模型
参数统计
均方误差
氮化镓
交叉验证
数据建模
贝叶斯优化
算法
回归分析
统计模型
高斯分布
机器学习
数学
晶体管
统计
工程类
材料科学
物理
量子力学
电压
图层(电子)
数据库
电气工程
复合材料
作者
Saddam Husain,Ahmad Khusro,Mohammad Hashmi,Galymzhan Nauryzbayev,Muhammad Akmal Chaudhary
标识
DOI:10.1109/icce50685.2021.9427702
摘要
This paper explores and develops a biasdependent small-signal model for Gallium Nitride (GaN) High Electron Mobility Transistors (HEMTs) using a non-parametric probability based Gaussian Process Regression (GPR) approach. The characterization data for HEMT is available in S-parameters. It is observed that the determination of optimal hyper-parameters for each S-parameter is crucial in this technique. Therefore, the developed modeling technique employs 10-fold cross-validation loss model to find the optimal parameters. The model incorporates Bayesian optimization alongside with cross-validation error for the best outcome. As a first step, the model is developed using two-third of the data (training set) and subsequently one-third of the remaining data (testing set) is used to capture the predictive ability of the model. The model is tested for both training and testing sets in terms of the mean square error and fitting curves of measured and simulated outputs. Excellent performance is achieved for the entire frequency range. Lastly, the model is also compared with other leading models based on Artificial Neural Network and Support Vector Regression to demonstrate the effectiveness of the proposed GPR based model.
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