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Prediction of the resonant frequency of square patch microstrip antenna with DGS using Machine Learning

机译:用机器学习预测DGS方形贴片微带天线的谐振频率

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In this paper, two robust machine learning (ML) prediction methods, Gaussian Process Regression (GPR) and Artificial neural network (ANN), are used to predict the resonant frequency of square patch microstrip antenna (SPMA) with an equilateral triangular defect in the ground. The designed antenna can work in the band of 5.9206 GHz to 25.7625 GHz for the C, X, ku, K band applications. By varying the size of the square patch and triangular DGS, a total of 125 data samples were collected through the simulation process using CSTTM, and out of which 105 data samples were used to build two ML models. For validation of the authentication of these models, 20 data samples used. After preparing the model, testing is done for 20 data sets and result obtained from ANN. GPR model was compared with simulated resonant frequency and found that the GPR model gives a better result than the ANN model. The predicted outcomes show that ANN and GPR models can be used to predict the resonant frequency of SPMA in the range of 5.9206 GHz to 25.7625 GHz.
机译:本文采用了两种鲁棒的机器学习(ML)预测方法:高斯过程回归(GPR)和人工神经网络(ANN)来预测方形贴片微带天线(SPMA)在等边三角形缺陷中的共振频率。地面。对于C,X,k,设计的天线可以在5.9206 GHz至25.7625 GHz的频带内工作 u ,K波段应用。通过改变正方形贴片和三角形DGS的大小,通过使用CST的模拟过程总共收集了125个数据样本 TM ,其中105个数据样本用于构建两个ML模型。为了验证这些模型的身份,使用了20个数据样本。准备好模型后,将对20个数据集进行测试,并从ANN获得结果。将GPR模型与模拟谐振频率进行比较,发现GPR模型比ANN模型具有更好的结果。预测结果表明,ANN和GPR模型可用于预测SPMA在5.9206 GHz至25.7625 GHz范围内的谐振频率。

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