GRID SCHEDULING USING ENHANCED ANT COLONY ALGORITHM
Journal: ICTACT Journal on Soft Computing (IJSC) (Vol.1, No. 2)Publication Date: 2010-10-01
Authors : P. Mathiyalagan U.R. Dhepthie; S.N. Sivanandam;
Page : 85-87
Keywords : Pheromone; Swarm Intelligence; Inertia; Grid Scheduling;
Abstract
Grid computing is a high performance computing used to solve larger scale computational demands. Task scheduling is a major issue in grid computing systems. Scheduling of tasks is the NP hard problem. The heuristic approach provides optimal solution for NP hard problems .The ant colony algorithm provides optimal solution. The existing ant colony algorithm takes more time to schedule the tasks. In this paper ant colony algorithm improved by enhancing pheromone updating rule such that it schedules the tasks efficiently and better resource utilization. The simulation results prove that proposed method reduces the execution time of tasks compared to existing ant colony algorithm.
Other Latest Articles
- A NEURAL NETWORK BASED IRIS RECOGNITION SYSTEM FOR PERSONAL IDENTIFICATION
- TDCCREC: AN EFFICIENT AND SCALABLE WEB-BASED RECOMMENDATION SYSTEM
- PARALLEL MINING OF FREQUENT MAXIMAL ITEMSETS USING ORDER PRESERVING GENERATORS
- ENHANCED HYBRID PSO ? ACO ALGORITHM FOR GRID SCHEDULING
- FUZZY LOGIC CONTROLLER BASED ACTIVE POWER LINE CONDITIONERS FOR COMPENSATING REACTIVE POWER AND HARMONICS
Last modified: 2013-12-04 18:53:23