Quantum Multi-Agent Reinforcement Learning is All You Need: Coordinated Global Access in Integrated TN/NTN Cube-Satellite Networks
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13
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16

초록

This article addresses novel quantum multi-agent reinforcement learning (QMARL)-based scheduling for integrated terrestrial ground-stations and large-scale non-terrestrial cube-satellites networks to enable coordinated global access services. By utilizing quantum-based neural networks for designing QMARL, stable large-scale cube-satellite scheduling can be realized thanks to fast training with quantum-specific learning computation methods. In addition to the benefit from conventional QMARL algorithms, our proposed QMARL-based scheduler has two key characteristics: high-scalability for low-dimensional scheduling, and energy-efficient geometry-awareness. For high-scalability, projection value measure (PVM)-based measurement is proposed for reducing scheduling action dimensions into a logarithmic-scale, which is obviously helpful for stable and fast convergence during QMARL training. Furthermore, energy-efficient geometry-aware operations can be realized by considering the fair energy consumption and positions in cube-satellites, which can be used for differentiated charging strategies. Our evaluation results verify that the proposed low-dimensional geometry-aware QMARL-based scheduler achieves desired performance improvements.

키워드

TrainingEnergy consumptionQuantum computingProcessor schedulingNeural networksReinforcement learningEnergy efficiencySchedulingVelocity measurementConvergence
제목
Quantum Multi-Agent Reinforcement Learning is All You Need: Coordinated Global Access in Integrated TN/NTN Cube-Satellite Networks
저자
Park, SoohyunKim, Gyu SeonHan, ZhuKim, Joongheon
DOI
10.1109/MCOM.010.2400001
발행일
2024-10
유형
Article
저널명
IEEE Communications Magazine
62
10
페이지
86 ~ 92