Radiation Performance of Satellite Reflector Antennas Using Neural Networks

T. Kapetanakis, I. Vardiambasis
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引用次数: 3

Abstract

This paper discusses the development of a neural network array model for predicting the radiation performance characteristics of the horn fed parabolic reflector and the dipole fed corner satellite antennas. A number of neural networks were developed in order to predict the radiation characteristics for various combinations of the design parameters. The results obtained from the neural network array models were compared to those from a commercial design software and found in close agreement. The proposed method can predict in less time and with minimum computational resources, the performance characteristics of a horn fed parabolic reflector antenna with high accuracy.
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基于神经网络的卫星反射天线辐射性能研究
本文讨论了用于角馈抛物面反射器和偶极子角馈卫星天线辐射特性预测的神经网络阵列模型的建立。为了预测各种设计参数组合的辐射特性,开发了许多神经网络。将神经网络阵列模型的结果与商业设计软件的结果进行了比较,发现结果非常吻合。该方法可以在较短的时间内,以最少的计算资源,高精度地预测角馈抛物面反射面天线的性能特征。
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