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Convolutional neural network for 2D adaptive beamforming of phased array antennas with robustness to array imperfections

Tarek Sallam, Ahmed M. Attiya

2021International Journal of Microwave and Wireless Technologies25 citationsDOI

Abstract

Abstract Achieving robust and fast two-dimensional adaptive beamforming of phased array antennas is a challenging problem due to its high-computational complexity. To address this problem, a deep-learning-based beamforming method is presented in this paper. In particular, the optimum weight vector is computed by modeling the problem as a convolutional neural network (CNN), which is trained with I/O pairs obtained from the optimum Wiener solution. In order to exhibit the robustness of the new technique, it is applied on an 8 × 8 phased array antenna and compared with a shallow (non-deep) neural network namely, radial basis function neural network. The results reveal that the CNN leads to nearly optimal Wiener weights even in the presence of array imperfections.

Topics & Concepts

BeamformingRobustness (evolution)Computer sciencePhased arrayAdaptive beamformerConvolutional neural networkSmart antennaAntenna arrayArtificial neural networkAlgorithmElectronic engineeringAntenna (radio)Artificial intelligenceDirectional antennaTelecommunicationsEngineeringChemistryBiochemistryGeneAntenna Design and OptimizationDirection-of-Arrival Estimation TechniquesStructural Health Monitoring Techniques
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