Litcius/Paper detail

Hybrid Quantum-Classical Neural Networks for Downlink Beamforming Optimization

Juping Zhang, Gan Zheng, Toshiaki Koike–Akino, Kai‐Kit Wong, Fraser Burton

2024IEEE Transactions on Wireless Communications24 citationsDOIOpen Access PDF

Abstract

This paper investigates quantum machine learning to optimize the beamforming in a multiuser multiple-input single-output downlink system. We aim to combine the power of quantum neural networks and the success of classical deep neural networks to enhance the learning performance. Specifically, we propose two hybrid quantum-classical neural networks to maximize the sum rate of a downlink system. The first one proposes a quantum neural network employing parameterized quantum circuits that follows a classical convolutional neural network. The classical neural network can be jointly trained with the quantum neural network or pre-trained leading to a fine-tuning transfer learning method. The second one designs a quantum convolutional neural network to better extract features followed by a classical deep neural network. Our results demonstrate the feasibility of the proposed hybrid neural networks, and reveal that the first method can achieve similar sum rate performance compared to a benchmark classical neural network with significantly less training parameters; while the second method can achieve higher sum rate especially in presence of many users still with less training parameters. The robustness of the proposed methods is verified using both software simulators and hardware emulators considering noisy intermediate-scale quantum devices.

Topics & Concepts

Computer scienceBeamformingTelecommunications linkQuantumArtificial neural networkComputer networkArtificial intelligenceTelecommunicationsPhysicsQuantum mechanicsAdvanced Photonic Communication SystemsMillimeter-Wave Propagation and ModelingAdvanced Adaptive Filtering Techniques