Radio-Frequency Multi-Mode OAM Detection Based on UCA Samples Learning
- URL: http://arxiv.org/abs/2111.15638v1
- Date: Mon, 29 Nov 2021 15:55:29 GMT
- Title: Radio-Frequency Multi-Mode OAM Detection Based on UCA Samples Learning
- Authors: Jiabei Fan, Rui Chen, Wen-Xuan Long, Marco Moretti, and Jiandong Li
- Abstract summary: Orbital angular momentum (OAM) at radio-frequency provides a novel approach of multiplexing a set of modes on the same frequency channel.
classical phase gradient-based OAM mode detection methods require perfect alignment of transmit and receive antennas.
- Score: 19.3368485421533
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Orbital angular momentum (OAM) at radio-frequency provides a novel approach
of multiplexing a set of orthogonal modes on the same frequency channel to
achieve high spectral efficiencies. However, classical phase gradient-based OAM
mode detection methods require perfect alignment of transmit and receive
antennas, which greatly challenges the practical application of OAM
communications. In this paper, we first show the effect of non-parallel
misalignment on the OAM phase structure, and then propose the OAM mode
detection method based on uniform circular array (UCA) samples learning for the
more general alignment or non-parallel misalignment case. Specifically, we
applied three classifiers: K-nearest neighbor (KNN), support vector machine
(SVM), and back-propagation neural network (BPNN) to both single-mode and
multi-mode OAM detection. The simulation results validate that the proposed
learning-based OAM mode detection methods are robust to misalignment errors and
especially BPNN classifier has the best generalization performance.
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