人工神经网络在电磁源重构中的应用

Z. Hu, Y. Zhong, Yi-Wen Wang, Y. Shu, Xing-Chang Wei
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引用次数: 3

摘要

本文采用人工神经网络对电磁源进行重构。首先得到辐射源的近场,然后利用等效磁偶极子阵列对真实辐射源的辐射进行预测。关于近场振幅和相位的信息用于找到磁矩和等效偶极子的位置,其中人工神经网络为此目的进行训练。通过这种方法,等效磁偶极子产生的新近场图不断地从源近场图中减去,直到源与新近场的差满足停止准则。实验结果验证了所提人工神经网络方法的准确性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Artificial Neural Network for Electromagnetic Source Reconstruction
In this paper, the artificial neural network is used to reconstruct the electromagnetic source. Firstly, the near-field of the radiation source is obtained, and then, the equivalent magnetic dipoles array is used to predict the radiation from the real source. The information about the near-field’s amplitude and phase is used to find the magnetic moments and locations of the equivalent dipoles, where the artificial neural network is trained for this purpose. In this way, the new near-field pattern generated by equivalent magnetic dipoles is continuously subtracted from the origin near-field pattern until the discrepancy between the origin and new near-fields meets stop criterion. Through experimental results, the accuracy and efficiency of the proposed artificial neural network method are verified.
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