Abstract

Driven by the vision of 5G communication, the demand for mobile communication services has increased explosively. Ultra-dense networks (UDN) is a key technology in 5G. The combination of mobile edge computing (MEC) and UDN can not only cope with access from mass communication devices, but also provide powerful computing capacity for users at the edge of wireless networks. The UDN based on MEC can effectively process computation-intensive and data-intensive tasks. However, when a large number of users offload tasks to the edge server, both the network load and transmission interference would increase. In this paper, the problem of task offloading and channel resource allocation based on MEC in 5G UDN is studied. Specifically, we formulate task offloading as an integer nonlinear programming problem. Due to the coupling of decision variables, we propose an efficient task offloading and channel resource allocation scheme based on differential evolution algorithm. Simulation results show that the proposed scheme can obviously reduce energy consumption and has good convergence.

Highlights

  • The rapid development of mobile Internet and Internet of Things has driven the explosive growth in the demand for mobile communication services

  • The problem of task offloading and channel resource allocation based on mobile edge computing (MEC) in Ultra-dense network (UDN) is studied

  • We propose a MEC task offloading and resource allocation model based on heterogeneous UDN

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Summary

INTRODUCTION

The rapid development of mobile Internet and Internet of Things has driven the explosive growth in the demand for mobile communication services. Offloading decision in MEC and channel resource allocation in UDN affect quality of service (QoS) of network and quality of experience (QoE) of users [9]–[11]. Some work studies how mobile devices in MEC network make offloading decisions to improve task execution delay, energy consumption and offloading efficiency [12]–[14]. The problem of task offloading and channel resource allocation based on MEC in UDN is studied. VOLUME 7, 2019 the essence of the problem, and the complexity of solving the problem is reduced On this basis, the channel resource allocation algorithm (CRADE) based on differential evolution algorithm is used to give the most effective task offloading and resource allocation scheme.

RELATED WORK
COMPUTATION MODEL
OPTIMAL OFFLOADING DECISION AND CHANNEL RESOURCE ALLOCATION SCHEME
PROBLEM TRANSFORMATION
CHANNEL RESOURCE ALLOCATION
PERFORMANCE EVALUATION
Findings
CONCLUSION
Full Text
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