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首页> 外文期刊>Journal of Electrical Engineering >An Application of Artificial Neural Network to Compute the Resonant Frequency of E–Shaped Compact Microstrip Antennas
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An Application of Artificial Neural Network to Compute the Resonant Frequency of E–Shaped Compact Microstrip Antennas

机译:人工神经网络在电子形状紧凑型微带天线谐振频率计算中的应用

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An application of artificial neural network (ANN) based on multilayer perceptrons (MLP) to compute the resonant frequency of E-shaped compact microstrip antennas (ECMAs) is presented in this paper. The resonant frequencies of 144 ECMAs with different dimensions and electrical parameters were firstly determined by using IE3D(~(tm) )software based on the method of moments (MoM), then the ANN model for computing the resonant frequency was built by considering the simulation data. The parameters and respective resonant frequency values of 130 simulated ECMAs were employed for training and the remaining 14 ECMAs were used for testing the model. The computed resonant frequencies for training and testing by ANN were obtained with the average percentage errors (APE) of 0.257% and 0.523%, respectively. The validity and accuracy of the present approach was verified on the measurement results of an ECMA fabricated in this study. Furthermore, the effects of the slots loading method over the resonant frequency were investigated to explain the relationship between the slots and resonant frequency.
机译:本文提出了一种基于多层感知器(MLP)的人工神经网络(ANN)在计算E形紧凑型微带天线(ECMA)的谐振频率上的应用。首先基于矩量法(MoM),使用IE3D(〜(tm))软件确定了144个不同尺寸和电参数的ECMA的谐振频率,然后考虑了仿真,建立了计算谐振频率的ANN模型。数据。使用130个模拟ECMA的参数和相应的共振频率值进行训练,其余14个ECMA用于测试模型。计算得到的用于ANN训练和测试的共振频率的平均百分比误差(APE)分别为0.257%和0.523%。在本研究中制造的ECMA的测量结果上验证了本方法的有效性和准确性。此外,研究了缝隙加载方法对谐振频率的影响,以解释缝隙与谐振频率之间的关系。

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