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Task Reverse Offloading with Deep Reinforcement Learning in Multi-Access Edge Computing

Mamoon M. Saeed, Rashid A. Saeed, Rania A. Mokhtar, Othman Omran Khalifa, Zeinab E. Ahmed, Mohammed Barakat, Areeg Ali Elnaim

202326 citationsDOI

Abstract

The Multi-access Edge Computing (MEC) technology’s quick development greatly benefits the Collaborative Mobile Infrastructure System (CMIS). To combine the data and produce tasks, crowd-sensing data will be transferred to the MEC server in CMIS. Nevertheless, if there are too many devices, it becomes extremely difficult for MEC to decide appropriately based on the data from the devices and infrastructure. This study builds a framework for reverse offloading that carefully balances the relationship between task completion time and user mobile energy consumption. Moreover, to decrease system use generally, an adaptive optimal reverse offloading method based on Deep Q-Network is created (DQN). The results of the simulations demonstrate that the suggested approach may successfully minimize energy consumption and work latency when compared to full local and fixed offloading techniques.

Topics & Concepts

Computer scienceMobile deviceReinforcement learningEnergy consumptionEdge computingMobile edge computingDistributed computingTask (project management)ServerEdge deviceLatency (audio)Enhanced Data Rates for GSM EvolutionMobile computingComputation offloadingTask analysisComputer networkCloud computingArtificial intelligenceOperating systemTelecommunicationsEcologyEconomicsBiologyManagementIoT and Edge/Fog ComputingContext-Aware Activity Recognition SystemsAge of Information Optimization
Task Reverse Offloading with Deep Reinforcement Learning in Multi-Access Edge Computing | Litcius