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RL-Planner: Reinforcement Learning-Enabled Efficient Path Planning in Multi-UAV MEC Systems

Muhammad Ejaz, Jinsong Gui, Muhammad Asim, Mohammed ElAffendi, Carol Fung, Ahmed A. Abd El‐Latif

2024IEEE Transactions on Network and Service Management18 citationsDOI

Abstract

Mobile edge computing (MEC), located at the networks edge, enhances distributed computing. However, its fixed position presents limitations during emergencies. Integrating unmanned aerial vehicles (UAVs) into MEC systems offers a solution but introduces challenges in managing UAV collaboration. This paper proposes a Reinforcement Deep Q-Learning based multi-UAV MEC framework to optimize quality of service (QoS) and route planning. The proposed framework addresses these challenges by modeling user demand and using multi-factor optimization considering user demand, risk, and distance. A Markov Decision Process (MDP) models user demand for higher QoS. The reinforcement learning reward matrix incorporates terminal user demand, risk, and distance for efficient energy use and resource allocation. Simulations demonstrate the effectiveness of our proposed method, offering valuable insights for future research in this domain.

Topics & Concepts

Reinforcement learningComputer scienceMarkov decision processQuality of serviceDistributed computingPlannerResource allocationMotion planningMobile edge computingEnhanced Data Rates for GSM EvolutionEdge computingComputer networkServerMarkov processArtificial intelligenceRobotStatisticsMathematicsUAV Applications and OptimizationIoT and Edge/Fog ComputingDistributed Control Multi-Agent Systems
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