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首页> 外文期刊>Journal of Computational Electronics >An accurate computation method based on artificial neural networks with different learning algorithms for resonant frequency of annular ring microstrip antennas
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An accurate computation method based on artificial neural networks with different learning algorithms for resonant frequency of annular ring microstrip antennas

机译:基于不同学习算法的人工神经网络的环形微带天线谐振频率精确计算方法

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摘要

An annular ring compact microstrip antenna (ARCMA) constructed by loading a circular slot in the center of the circular patch antenna is a popular microstrip antenna due to its favorable properties. In this study, a method based artificial neural networks (ANNs) has been firstly applied for the computing the resonant frequency of ARCMAs. Multi-layered perceptron model based on feed forward back propagation ANN has been utilized, and the constructed model have been separately trained with 8 different learning algorithms to achieve the best results regarding the resonant frequency of ARCMAs at dominant mode. To this end, the resonant frequencies of 80 ARCMAs with varied dimensions and electrical parameters in accordance with UHF band covering GSM, LTE, WLAN and WiMAX applications were simulated with a robust numerical electromagnetic computational tool, IE3D™, which is based on method of moment. Then, ANN model was constructed with the simulation data, by using 70 ARCMAs for training and the remaining 10 for test. As the performances of the 8 learning algorithms are compared with each other, the best result is obtained with Levenberg-Marquardt algorithm. The proposed ANN model were confirmed by comparing with the suggestions reported elsewhere via measurement data published earlier in the literature, and they have further validated on an ARCMA fabricated in this study. The results achieved in this study show that ANN model learning with LM algorithm can be successfully used to compute the resonant frequency of ARCMAs without involving any sophisticated methods.
机译:通过将圆形缝隙装载在圆形贴片天线的中央而构造的环形紧凑型微带天线(ARCMA)由于其良好的性能而成为一种流行的微带天线。在这项研究中,基于人工神经网络(ANN)的方法已首先用于计算ARCMA的共振频率。利用基于前馈回传ANN的多层感知器模型,并使用8种不同的学习算法分别对构建的模型进行训练,以取得关于ARCMA在主导模式下的共振频率的最佳结果。为此,使用健壮的数值电磁计算工具IE3D™(基于矩量法)对80个ARCMA的谐振频率进行了仿真,这些ARCMA覆盖GSM,LTE,WLAN和WiMAX应用的UHF频段不同,具有不同的尺寸和电参数。然后,使用70根ARCMA进行训练,其余10根用于测试,利用仿真数据构建ANN模型。通过对8种学习算法的性能进行比较,使用Levenberg-Marquardt算法可获得最佳结果。通过与文献中较早之前发布的测量数据进行比较,与其他地方报告的建议进行了比较,从而证实了拟议的ANN模型,并在本研究中制造的ARCMA上对其进行了进一步验证。这项研究取得的结果表明,采用LM算法的ANN模型学习可以成功地用于计算ARCMA的谐振频率,而无需涉及任何复杂的方法。

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