Telecommunications Science ›› 2020, Vol. 36 ›› Issue (2): 95-100.doi: 10.11959/j.issn.1000-0801.2020047

• Power Informationization Column • Previous Articles     Next Articles

Improved ant colony algorithm based cloud computing user task scheduling algorithm

Sining LUO,Hualong WANG,Hongyu LI,Wei PENG   

  1. China Energy Engineering Group Guangxi Electric Power Design Institute Co.,Ltd.,Nanning 530004,China
  • Revised:2020-01-20 Online:2020-02-20 Published:2020-05-19

Abstract:

In recent years,with the development of power information,more and more power applications and tasks are deployed in the cloud.Because of the dynamic heterogeneity of cloud resources and power applications,it is a challenge in the cloud computing system to realize resource division and task scheduling.Power applications need to be able to achieve a rapid response and minimum completion time,and schedulers should consider the load of each cloud computing node to ensure the reliability of cloud computing.A task scheduling algorithm based on the algorithm of improving an ant colony was proposed to solve the problem of task scheduling in virtual machines.Through the improvement of the standard ant colony algorithm,the task scheduling time was reduced and load balancing was realized while minimizing the overall completion time.The results show that the algorithm can shorten the task scheduling time and realize the load balancing of cloud nodes,which provides technical basis for the optimization of power cloud computing.

Key words: cloud computing, task scheduling, load balancing

CLC Number: 

No Suggested Reading articles found!