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Deep Reinforcement Learning for Trajectory Design and Power Allocation in UAV Networks

Nan Zhao, Yiqiang Cheng, Yiyang Pei, Ying‐Chang Liang, Dusit Niyato

202029 citationsDOI

Abstract

Unmanned aerial vehicle (UAV) is considered to be a key component in the next-generation cellular networks. Considering the non-convex characteristic of the trajectory design and power allocation problem, it is difficult to obtain the optimal joint strategy in UAV-assisted cellular networks. In this paper, a reinforcement learning-based approach is proposed to obtain the maximum long-term network utility while meeting with user equipments' quality of service requirement. The Markov decision process (MDP) is formulated with the design of state, action space, and reward function. In order to achieve the joint optimal policy of trajectory design and power allocation, deep reinforcement learning approach is investigated. Due to the continuous action space of the MDP model, deep deterministic policy gradient approach is presented. Simulation results show that the proposed algorithm outperforms other approaches on overall network utility performance with higher system capacity and faster processing speed.

Topics & Concepts

Reinforcement learningMarkov decision processComputer scienceTrajectoryQ-learningMathematical optimizationState spaceMarkov processComponent (thermodynamics)Function (biology)Artificial intelligenceMathematicsStatisticsAstronomyBiologyPhysicsThermodynamicsEvolutionary biologyUAV Applications and OptimizationDistributed Control Multi-Agent SystemsSmart Parking Systems Research