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Deep Reinforcement Learning for Fresh Data Collection in UAV-assisted IoT Networks

Mengjie Yi, Xijun Wang, Juan Liu, Yan Zhang, Bo Bai

2020121 citationsDOI

Abstract

Due to the flexibility and low operational cost, dispatching unmanned aerial vehicles (UAVs) to collect information from distributed sensors is expected to be a promising solution in Internet of Things (IoT), especially for time-critical applications. How to maintain the information freshness is a challenging issue. In this paper, we investigate the fresh data collection problem in UAV-assisted IoT networks. Particularly, the UAV flies towards the sensors to collect status update packets within a given duration while maintaining a non-negative residual energy. We formulate a Markov Decision Process (MDP) to find the optimal flight trajectory of the UAV and transmission scheduling of the sensors that minimizes the weighted sum of the age of information (AoI). A UAV-assisted data collection algorithm based on deep reinforcement learning (DRL) is further proposed to overcome the curse of dimensionality. Extensive simulation results demonstrate that the proposed DRL-based algorithm can significantly reduce the weighted sum of the AoI compared to other baseline algorithms.

Topics & Concepts

Computer scienceMarkov decision processReinforcement learningCurse of dimensionalityNetwork packetInternet of ThingsReal-time computingFlexibility (engineering)Scheduling (production processes)Data collectionWireless sensor networkDroneArtificial intelligenceMarkov processMachine learningComputer networkMathematical optimizationEmbedded systemBiologyGeneticsStatisticsMathematicsAge of Information OptimizationIoT Networks and ProtocolsUAV Applications and Optimization