Efficient task offloading using particle swarm optimization algorithm in edge computing for industrial internet of things

被引:0
作者
Qian You
Bing Tang
机构
[1] School of Computer Science and Engineering,
[2] Hunan University of Science and Technology,undefined
来源
Journal of Cloud Computing | / 10卷
关键词
Mobile edge computing; Task offloading; Particle swarm optimization; Industrial internet of things;
D O I
暂无
中图分类号
学科分类号
摘要
As a new form of computing based on the core technology of cloud computing and built on edge infrastructure, edge computing can handle computing-intensive and delay-sensitive tasks. In mobile edge computing (MEC) assisted by 5G technology, offloading computing tasks of edge devices to the edge servers in edge network can effectively reduce delay. Designing a reasonable task offloading strategy in a resource-constrained multi-user and multi-MEC system to meet users’ needs is a challenge issue. In industrial internet of things (IIoT) environment, considering the rapid increase of industrial edge devices and the heterogenous edge servers, a particle swarm optimization (PSO)-based task offloading strategy is proposed to offload tasks from resource-constrained edge devices to edge servers with energy efficiency and low delay style. A multi-objective optimization problem that considers time delay, energy consumption and task execution cost is proposed. The fitness function of the particle represents the total cost of offloading all tasks to different MEC servers. The offloading strategy based on PSO is compared with the genetic algorithm (GA) and the simulated annealing algorithm (SA) through simulation experiments. The experimental results show that the task offloading strategy based on PSO can reduce the delay of the MEC server, balance the energy consumption of the MEC server, and effectively realize the reasonable resource allocation.
引用
收藏
相关论文
共 112 条
  • [1] Abbas N(2018)Mobile edge computing: A survey IEEE Internet Things J 5 450-465
  • [2] Zhang Y(2020)A survey of multi-access edge computing in 5g and beyond: Fundamentals, technology integration, and state-of-the-art IEEE Access 8 116974-117017
  • [3] Taherkordi A(2021)Adaptive contention window MAC protocol in a global view for emerging trends networks IEEE Access 9 18402-18423
  • [4] Skeie T(2021)A parallel joint optimized relay selection protocol for wake-up radio enabled wsns Phys Commun 47 101320-8897
  • [5] Pham Q(2021)Mobile edge server placement based on meta-heuristic algorithm J Intell Fuzzy Syst 40 8883-2358
  • [6] Fang F(2021)Joint optimization of network selection and task offloading for vehicular edge computing J Cloud Comput 10 23-137667
  • [7] Ha VN(2020)Reliable mobile edge service offloading based on P2P distributed networks Symmetry 12 821-169
  • [8] Piran MJ(2017)A survey on mobile edge computing: The communication perspective IEEE Commun Surv Tutorials 19 2322-6265
  • [9] Le M(2019)Mobile edge computing-based data-driven deep learning framework for anomaly detection IEEE Access 7 137656-696
  • [10] Le LB(2019)An edge-computing based architecture for mobile augmented reality IEEE Netw 33 162-289