Machine Learning Based Fully Digital UWB Antenna for Direction Finding Systems

Manna Antonio, Altilio Rosa, Bartocci Marco, Bia Pietro, Canestri Christian, Gaetano Domenico, Ardoino Riccardo
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引用次数: 1

Abstract

This work presents a new generation of ultra-wideband (UWB) radio frequency direction-finding system. The architecture of such a system is based on phase interferometry and exploits all leading-edge technology solutions such as the direct sampling of the entire analog band or the introduction of Artificial Intelligence for the processing of incoming RF signals. Thanks to these new solutions, a minimum number of antennas is needed to cover a multi-octave band capable to operate in the so-called folded mode. The presented solution is based on four full-band EM interferometer antenna array. The same signal collected from each antenna, after a first analog treatment, is then digitized with different sampling frequencies to get the diversity required for solving the frequency ambiguity problem. The Machine Learning approach is then adopted to realize the direction of arrival estimation. Comparisons between standard processing techniques and ML approach confirm the effectiveness of the presented solution.
基于机器学习的全数字超宽带测向天线
本文提出了一种新一代超宽带(UWB)射频测向系统。这种系统的架构基于相位干涉测量,并利用了所有领先的技术解决方案,例如整个模拟频段的直接采样或引入人工智能来处理传入的RF信号。由于这些新的解决方案,需要最少数量的天线来覆盖能够在所谓的折叠模式下工作的多倍频带。提出的解决方案是基于四个全波段电磁干涉仪天线阵列。从每个天线采集到的相同信号,经过第一次模拟处理,然后用不同的采样频率进行数字化,以获得解决频率模糊问题所需的分集。然后采用机器学习方法实现到达方向估计。通过对标准处理技术和机器学习方法的比较,证实了所提出的解决方案的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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