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A Model Selection Strategy of Gaussian Process Regression for Modeling Inset-Fed Microstrip Patch Antenna

机译:用于建模插入微带贴材天线的高斯过程回归模型选择策略

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This paper presents a modeling of inset-fed microstrip patch antenna using Gaussian Process Regression (GPR) technique. The vast majority of the studies employ a readily existing model, using a fixed mean and covariance functions without further investigation. In this paper we propose a strategy to choose the most appropriate parameters of Gaussian process regression technique for modeling inset-fed microstrip patch antenna. We evaluate the influence of the choice of mean and covariance functions on the performance of the GPR models. Moreover, the dependency of the antenna resonant frequencies on the physical and geometrical properties of the materials involved, dimensions of the patch, and the feed location is investigated. In order to validate the performance of the proposed GPR model, we evaluate different algorithms with main focus on Radial Basis Function Neural Networks, and Multilayer Perceptron Neural Network. The obtained results show that the proposed method outperforms the neural network models in terms of mean square error and determination coefficient. The results give a good agreement with the results obtained using HFSS software, which ensures the validity of our proposed model in the evaluation of the resonant frequency over a spectrum range of 1-10 GHz.
机译:本文给出了使用高斯过程回归(GPR)技术嵌入馈电微带贴片天线的建模。绝大多数研究采用容易现有模型,使用固定的均值和方差功能,无需进一步调查。在本文中,我们提出了一个战略选择高斯过程回归技术的最合适的参数模型嵌入馈电微带贴片天线。我们评估的均值和方差功能的GPR模型的性能选择的影响。此外,所涉及的材料,贴剂的尺寸,和进料位置的物理和几何特性的天线共振频率的依赖性进行了研究。为了验证所提出的GPR模型的性能,我们评估与主要侧重于RBF神经网络和多层感知神经网络不同的算法。将所得到的结果表明,所提出的方法优于神经网络模型中均方误差和判定系数方面。结果给出使用HFSS软件,该软件在1-10GHz内的频谱范围,确保在谐振频率的评价我们提出的模型的有效性得到的结果有很好的一致性。

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