Zichuan Xu

Professor   Supervisor of Doctorate Candidates   Supervisor of Master's Candidates

Gender:Male

Alma Mater:澳大利亚国立大学

Degree:Doctoral Degree

School/Department:软件学院、国际信息与软件学院

Discipline:Software Engineering

Business Address:开发区校区综合楼

Contact Information:0411-62274514

E-Mail:z.xu@dlut.edu.cn


Paper Publications

Cost-Efficient NFV-Enabled Mobile Edge-Cloud for Low Latency Mobile Applications

Hits:

Indexed by:期刊论文

Date of Publication:2018-03-01

Journal:IEEE TRANSACTIONS ON NETWORK AND SERVICE MANAGEMENT

Included Journals:SCIE、EI

Volume:15

Issue:1

Page Number:475-488

ISSN No.:1932-4537

Key Words:Mobile edge-cloud; low latency applications; dynamic resource allocation; approximation algorithm

Abstract:Mobile edge-cloud (MEC) aims to support low latency mobile services by bringing remote cloud services nearer to mobile users. However, in order to deal with dynamic workloads, MEC is deployed in a large number of fixed-location micro-clouds, leading to resource wastage during stable/low workload periods. Limiting the number of micro-clouds improves resource utilization and saves operational costs, but faces service performance degradations due to insufficient physical capacity during peak time from nearby micro-clouds. To efficiently support services with low latency requirement under varying workload conditions, we adopt the emerging network function virtualization (NFV)-enabled MEC, which offers new flexibility in hosting MEC services in any virtualized network node, e.g., access points, routers, etc. This flexibility overcomes the limitations imposed by fixed-location solutions, providing new freedom in terms of MEC service-hosting locations. In this paper, we address the questions on where and when to allocate resources as well as how many resources to be allocated among NFV-enabled MECs, such that both the low latency requirements of mobile services and MEC cost efficiency are achieved. We propose a dynamic resource allocation framework that consists of a fast heuristic-based incremental allocation mechanism that dynamically performs resource allocation and a reoptimization algorithm that periodically adjusts allocation to maintain a near-optimal MEC operational cost over time. We show through extensive simulations that our flexible framework always manages to allocate sufficient resources in time to guarantee continuous satisfaction of applications' low latency requirements. At the same time, our proposal saves up to 33% of cost in comparison to existing fixed-location MEC solutions.

Pre One:Routing Cost Minimization and Throughput Maximization of NFV-Enabled Unicasting in Software-Defined Networks

Next One:Online unicasting and multicasting in software-defined networks

Profile

Currently I am a Professor at Dalian University of Technology. I obtained my PhD degree from Australian National University (ANU), and my PhD thesis is entitled "Cost-Aware Resource Allocation and Provisioning in Cloud Networks". Before joining ANU, I received my Bachelor and Master degree from Dalian University of Technology in China in 2008 and 2011. I was a Research Associate at University College London (UCL) from 2016 to 2017. Website: https://zichuanxu.com/