Quantum-Assisted Adaptive Beamforming in UASs Network: Enhancing Airborne Communication via Collaborative UASs for NextG IoT
Sudhanshu Arya, Ying Wang

TL;DR
This paper presents a quantum-based adaptive beamforming method for UAS networks, improving airborne communication reliability amid hovering-induced distortions by leveraging quantum principles and optimization techniques.
Contribution
It introduces QSUB and Q-P-LL, novel quantum-assisted algorithms for dynamic beamforming and error reduction in UAS networks, enhancing performance over classical methods.
Findings
QSUB outperforms traditional beamforming schemes.
Q-P-LL reduces prediction errors significantly.
System scalability is demonstrated with varying UAS numbers.
Abstract
This paper introduces a novel quantum-based method for dynamic beamforming and re-forming in Unmanned Aircraft Systems (UASs), specifically addressing the critical challenges posed by the unavoidable hovering characteristics of UAVs. Hovering creates significant beam path distortions, impacting the reliability and quality of distributed beamforming in airborne networks. To overcome these challenges, our Quantum Search for UAS Beamforming (QSUB) employs quantum superposition, entanglement, and amplitude amplification. It adaptively reconfigures beams, enhancing beam quality and maintaining robust communication links in the face of rapid UAS state changes due to hovering. Furthermore, we propose an optimized framework, Quantum-Position-Locked Loop (Q-P-LL), that is based on the principle of the Nelder-Mead optimization method for adaptive search to reduce prediction error and improve…
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Taxonomy
TopicsOptical Wireless Communication Technologies · Radio Wave Propagation Studies · Power Line Communications and Noise
