Abstract

Mobile edge computing (MEC) brings a breakthrough for Internet of Things (IoT) for its ability of offloading tasks from user equipments (UEs) to nearby servers which have rich computation resource. 5G network brings a huge breakthrough on transmission rate. Together with MEC and 5G, both execution delay of tasks and time delay from downloading would be shorter and the quality of experience (QoE) of UEs can be improved. Considering practical conditions, the computation resource of an MEC server is finite to some extent. Therefore, how to prevent the abuse of MEC resource and further allocate the resource reasonably becomes a key point for an MEC system. In this paper, an MEC system with multi-user is considered where a base station (BS) with an MEC server, which can not only provide computation offloading service but also data cache service. Especially, we take the charge for both data transmission and task computation as one part of total cost of UEs, and then explore a joint optimization for downlink resource allocation, offloading decision and computation resource allocation to minimize the total cost in terms of the time delay and the charge to UEs. The proposed problem is formulated as a mixed integer programming (MIP) one which is NP-hard. Therefore, we decouple the original problem into two subproblems which are downlink resource allocation problem and joint offloading decision and computation resource allocation problem. Then we address these two subproblems by using convex and nonconvex optimization techniques, respectively. An iterative algorithm is proposed to obtain a suboptimal solution in polynomial time. Simulation results show that our proposed algorithm performs better than benchmark algorithms.

Highlights

  • T HE EMERGENCE of Internet of Things (IoT) brings enormous challenges to existing technologies because IoT allows thousands of user equipments (UEs) including smartphones, Pads and intelligent wearable devices connected to Internet simultaneously [1]

  • Some novel applications requiring high computation capability and high energy consumption are on demands, such as massive multiplayer online game, virtual reality (VR), augmented reality (AR) and face recognition

  • As the emergence of 5G network brings a huge breakthrough on transmission rate, Mobile edge computing (MEC)-enable IoT was proved as a promising solution to reduce the delay of task and save the energy of UEs in some IoT scenarios [4]

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Summary

Introduction

T HE EMERGENCE of IoT brings enormous challenges to existing technologies because IoT allows thousands of UEs including smartphones, Pads and intelligent wearable devices connected to Internet simultaneously [1]. Some novel applications requiring high computation capability and high energy consumption are on demands, such as massive multiplayer online game, virtual reality (VR), augmented reality (AR) and face recognition. These applications are sensitive to latency, which puts higher requirement for UEs, especially CPU and battery. WANG et al.: JOINT OFFLOADING AND CHARGE COST MINIMIZATION IN MEC for UEs because of their stringent equipment-size constraint To address these challenges, mobile cloud computing (MCC) is considered as a possible solution for IoT. Reference [6] showed that MEC was suitable for vehicular networks because it significantly reduced delay and average system cost

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