Litcius/Paper detail

Multiuser <scp>context‐aware</scp> computation offloading in mobile edge computing based on Bayesian learning automata

Fariba Farahbakhsh, Ali Shahidinejad, Mostafa Ghobaei‐Arani

2020Transactions on Emerging Telecommunications Technologies48 citationsDOI

Abstract

Abstract Today a lot of data sensed from the environment by the Internet of things applications. These data need to process with the lowest delay. Mobile devices (MDs) as ubiquitous tools are end devices in the network. These devices with limited resources cannot process all computations locally. Mobile edge computing (MEC) is a good architecture for processing computations in the network's edge. It solves the cloud challenges such as delay, energy, and cost. If MDs could not process the computations, they will offload tasks to the edge or cloud. Research shows that ignoring context information of application, requests, sensors, resources, and network tools cause to not complete the offloading method. In this article, we consider Bayesian learning automata (BLA) with considering context‐aware offloading in MEC with multiuser. BLA learns all states and actions in the network and helps us to improve the offloading algorithm. The contexts are collected using autonomous management as the monitor‐analysis‐plan‐execution loop in all offloading processes. The simulation results indicate that our method is superior to local computing and offload without considering context‐aware algorithms in some metrics such as energy consumption, execution cost, network usage, delay, and fairness.

Topics & Concepts

Computer scienceComputation offloadingCloud computingEdge computingMobile edge computingDistributed computingContext (archaeology)Enhanced Data Rates for GSM EvolutionMobile deviceMobile cloud computingComputer networkArtificial intelligenceOperating systemBiologyPaleontologyIoT and Edge/Fog ComputingOptimization and Search ProblemsIoT Networks and Protocols