Active RIS Assisted Sup-Degree of Freedom Interference Suppression for Large Antenna Array: A Deep Learning Approach with Location Awareness

IEEE Transactions on Antennas and Propagation(2023)

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摘要
Radio frequency interference (RFI) generated by satellites orbiting the earth has become a significant threat to astronomical observations. Active reconfigurable intelligent surfaces (RISs) have the capacity to intelligently control the wireless propagation environment and compensate for double path fading attenuation. Thus, this paper exploits an active RIS to mitigate RFI by forming an additional path to reflect RFI. Specifically, the model provides a new solution to sup-degree of freedom (DoF) interference suppression, which means that the amount of interferences surpasses the array DoF. We intend to simultaneously design the receive beamforming of large antenna array and reflection coefficients of active RIS to maximize the received signal-to-interference-plus-noise ratio (SINR). Moreover, the system model can be correlated to a non-Euclidean graph structure due to its graph-like nature. To achieve this objective, a deep learning approach, named the location awareness graph ordering attention (LAGOAT) network, is presented to map the locations of RFI and array into the receive beamforming and reflection coefficients. The simulations not only demonstrate that our proposed system can improve significantly the received SINR, but also show that proposed LAGOAT network can achieve superior performance compared to other deep learning approaches, namely GNN, GAT, and the network without GOAT.
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关键词
Interference mitigation,reconfigurable intelligent surface,large antenna array,array signal processing,graph neural network,deep learning
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