Litcius/Paper detail

Multiobjective Optimized Cloudlet Deployment and Task Offloading for Mobile-Edge Computing

Xiaojian Zhu, MengChu Zhou

2021IEEE Internet of Things Journal67 citationsDOI

Abstract

Mobile-edge computing provides an effective approach to reducing the workload of smart devices and the network delay induced by data transfer through deploying computational resources in the proximity of the devices. In a mobile-edge computing system, it is of great importance to improve the quality of experience of users and reduce the deployment cost for service providers. This article investigates a joint cloudlet deployment and task offloading problem with the objectives of minimizing energy consumption and task response delay of users and the number of deployed cloudlets. Since it is a multiobjective optimization problem, a set of tradeoff solutions ought to be found. After formulating this problem as a mixed-integer nonlinear program and proving its NP-completeness, we propose a modified guided population archive whale optimization algorithm to solve it. The superiority of our devised algorithm over other methods is confirmed through extensive simulations.

Topics & Concepts

CloudletComputer scienceMobile edge computingEdge computingCloud computingSoftware deploymentDistributed computingMobile cloud computingMobile devicePopulationOptimization problemTask (project management)Quality of serviceMobile computingComputer networkServerAlgorithmSociologyManagementOperating systemDemographyEconomicsIoT and Edge/Fog ComputingIoT Networks and ProtocolsAge of Information Optimization
Multiobjective Optimized Cloudlet Deployment and Task Offloading for Mobile-Edge Computing | Litcius