This paper studies effective task scheduling problem in the process of grid computing. Generally, task scheduling in the process of grid computing can be realized in shorter time, which guarantees the efficiency of task scheduling in grid computing. Traditional algorithm can not fully consider the resources load balance in calculating task scheduling in grid computing, resulting in network resources idleness. Finally, it can't reasonably use network resources. In order to avoid the above defects, this paper proposes a task scheduling method in grid computing based on double fitness particle swarm optimization algorithm. In the process of grid computing, channel perception method is applied to forecast the amount of grid computing tasks in the channel so as to provide the basis for task scheduling in grid computing. Realize task scheduling in grid computing by the use of double fitness particle swarm optimization algorithm. Experimental results show that under the condition of larger tasks of grid computing, the performance of task scheduling in grid computing by using the algorithm presented in this paper is superior to the traditional particle swarm optimization algorithm and can get ideal task scheduling result.
[1]
Rajkumar Buyya,et al.
Economic-based Distributed Resource Management and Scheduling for Grid Computing
,
2002,
ArXiv.
[2]
Muli Ben-Yehuda,et al.
The Reservoir model and architecture for open federated cloud computing
,
2009,
IBM J. Res. Dev..
[3]
Richard Wolski,et al.
The Eucalyptus Open-Source Cloud-Computing System
,
2009,
2009 9th IEEE/ACM International Symposium on Cluster Computing and the Grid.
[4]
Andrew A. Chien,et al.
Entropia: architecture and performance of an enterprise desktop grid system
,
2003,
J. Parallel Distributed Comput..
[5]
Yong Zhao,et al.
Cloud Computing and Grid Computing 360-Degree Compared
,
2008,
GCE 2008.