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Application of Artificial Neural Networks to Broadband Antenna Design Based on a Parametric Frequency Model

机译:基于参数频率模型的人工神经网络在宽带天线设计中的应用

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摘要

An artificial neural network (ANN) is proposed to predict the input impedance of a broadband antenna as a function of its geometric parameters. The input resistance of the antenna is first parameterized by a Gaussian model, and the ANN is constructed to approximate the nonlinear relationship between the antenna geometry and the model parameters. Introducing the model simplifies the ANN and decreases the training time. The reactance of the antenna is then constructed by the Hilbert transform from the resistance found by the neuromodel. A hybrid gradient descent and particle swarm optimization method is used to train the neural network. As an example, an ANN is constructed for a loop antenna with three tuning arms. The antenna structure is then optimized for broadband operation via a genetic algorithm that uses input impedance estimates provided by the trained ANN in place of brute-force electromagnetic computations. It is found that the required number of electromagnetic computations in training the ANN is ten times lower than that needed during the antenna optimization process, resulting in significant time savings
机译:提出了一种人工神经网络(ANN),以根据其几何参数预测宽带天线的输入阻抗。首先通过高斯模型对天线的输入电阻进行参数化,然后构建ANN来近似估计天线几何形状与模型参数之间的非线性关系。该模型的引入简化了人工神经网络并减少了训练时间。然后根据神经模型发现的电阻,通过希尔伯特变换构造天线的电抗。混合梯度下降和粒子群优化方法用于训练神经网络。例如,为具有三个调谐臂的环形天线构建了ANN。然后,通过遗传算法优化天线结构,以进行宽带操作,该遗传算法使用受过训练的ANN提供的输入阻抗估计值来代替蛮力电磁计算。发现在训练ANN时所需的电磁计算数量比天线优化过程中所需的电磁计算数量低十倍,从而节省了大量时间

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