Litcius/Paper detail

When digital twin meets deep reinforcement learning in multi-UAV path planning

Siyuan Li, Xi Lin, Jun Wu, Ali Kashif Bashir, Raheel Nawaz

202218 citationsDOI

Abstract

Unmanned aerial vehicles (UAVs) path planning is one of the promising technologies in the fifth-generation wireless communications. The gap between simulation and reality limits the application of deep reinforcement learning (DRL) in UAV path planning. Therefore, we propose a digital twin-based deep reinforcement learning training framework. With the help of digital twin, DRL model can be trained more effectively deployed to real UAVs. In this training framework, we propose a deep deterministic policy gradient (DDPG) based multi-UAV path planning algorithm. Based on decomposed actor structure in DRL, we design a pooling-based combined LSTM network to better understand different state information in a multi-UAV path planning task. Moreover, we also establish a digital twin platform for multi-UAV system, which has a high degree of simulation and visualization. The simulation result shows that the proposed algorithm can achieve higher mean rewards, and outperforms DDPG in average arrival rate by more than 30%.

Topics & Concepts

Reinforcement learningComputer scienceMotion planningPoolingArtificial intelligencePath (computing)VisualizationReal-time computingTask (project management)Deep learningRobotComputer networkEngineeringSystems engineeringUAV Applications and OptimizationAutonomous Vehicle Technology and SafetySmart Agriculture and AI