Litcius/Paper detail

Dinkelbach-Guided Deep Reinforcement Learning for Secure Communication in UAV-Aided MEC Networks

Weidang Lu, Yu Ding, Yunqi Feng, Guoxing Huang, Nan Zhao, Arumugam Nallanathan, Xiaoniu Yang

2022GLOBECOM 2022 - 2022 IEEE Global Communications Conference13 citationsDOI

Abstract

Unmanned aerial vehicle-aided (UAV-aided) mobile edge computing (MEC) network can greatly reduce the data growth pressure of Internet of Things (IoT) and expand the wireless communication coverage. However, there is a risk of eavesdropping on the offloading information of terminal users (TUs) because of UAV light-of-sight (LoS) transmission. In this paper, we propose a Dinkelbach-guided deep reinforcement learning (DRL) scheme for secure communication in the UAV-aided MEC network. Specifically, the security calculating efficiency of the network is maximized by optimizing offloading decision and resource allocation under the condition of the data queue stability and minimum calculating requirement. The problem is intractable due to the fractional structure and binary constraint. Firstly, we deal with the fractional structure by taking advantage of Dinkelbach optimization. Then, offloading decision is generated based on DRL and the resource is allocated by successive convex approximation (SCA). Simulation results show that the proposed Dinkelbach-guided DRL scheme efficiently improves the security calculating efficiency of the network.

Topics & Concepts

Computer scienceReinforcement learningMobile edge computingEavesdroppingComputer networkResource allocationWireless networkCellular networkDistributed computingWirelessServerArtificial intelligenceTelecommunicationsUAV Applications and OptimizationAdvanced Wireless Communication TechnologiesIoT and Edge/Fog Computing