Quantum Multi - Agent Reinforcement Learning Software Design and Visual Simulations for Multi - Drone Mobility Control
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초록

Quantum machine learning (QML) has received a lot of attention according to its light training parameter numbers and speeds; and the advances of QML lead to active research on quantum multi-agent reinforcement learning (QMARL). Existing classical multi-agent reinforcement learning (MARL) features non-stationarity and uncertain properties. Therefore, this paper presents a simulation software framework for novel QMARL to control autonomous multi-drone mobility, i.e., quantum multi-drone reinforcement learning. Our proposed framework ac-complishes reasonable reward convergence and service quality performance with fewer trainable parameters. Furthermore, it shows more stable training results. Lastly, our proposed software allows us to analyze the training process and results. © 2024 IEEE.

키워드

DroneQuantum Machine LearningReinforce-ment LearningSimulationsVisualization
제목
Quantum Multi - Agent Reinforcement Learning Software Design and Visual Simulations for Multi - Drone Mobility Control
저자
Park, SoohyunKim, Gyu SeonJung, SoyiKim, Joongheon
DOI
10.1109/APWCS61586.2024.10679327
발행일
2024-08
유형
Proceedings Paper
저널명
2024 IEEE VTS Asia Pacific Wireless Communications Symposium, APWCS 2024