ENHANCED HYBRID PSO ? ACO ALGORITHM FOR GRID SCHEDULING
Journal: ICTACT Journal on Soft Computing (IJSC) (Vol.1, No. 1)Publication Date: 2010-07-01
Authors : P. Mathiyalagan U.R. Dhepthie; S.N. Sivanandam;
Page : 54-59
Keywords : Pheromone; Swarm Intelligence; Inertia; Grid Scheduling;
Abstract
Grid computing is a high performance computing environment to solve larger scale computational demands. Grid computing contains resource management, task scheduling, security problems, information management and so on. Task scheduling is a fundamental issue in achieving high performance in grid computing systems. A computational GRID is typically heterogeneous in the sense that it combines clusters of varying sizes, and different clusters typically contains processing elements with different level of performance. In this, heuristic approaches based on particle swarm optimization and ant colony optimization algorithms are adopted for solving task scheduling problems in grid environment. Particle Swarm Optimization (PSO) is one of the latest evolutionary optimization techniques by nature. It has the better ability of global searching and has been successfully applied to many areas such as, neural network training etc. Due to the linear decreasing of inertia weight in PSO the convergence rate becomes faster, which leads to the minimal makespan time when used for scheduling. To make the convergence rate faster, the PSO algorithm is improved by modifying the inertia parameter, such that it produces better performance and gives an optimized result. The ACO algorithm is improved by modifying the pheromone updating rule. ACO algorithm is hybridized with PSO algorithm for efficient result and better convergence in PSO algorithm.
Other Latest Articles
- FUZZY LOGIC CONTROLLER BASED ACTIVE POWER LINE CONDITIONERS FOR COMPENSATING REACTIVE POWER AND HARMONICS
- CONSTRICTED PARTICLE SWARM OPTIMIZATION FOR DESIGN OF COLLINEAR ARRAY OF UNEQUAL LENGTH DIPOLE ANTENNAS
- A STUDY ON BIOMETRIC TEMPLATE SECURITY
- INTRUSION DETECTION USING ARTIFICIAL NEURAL NETWORK WITH REDUCED INPUT FEATURES
- MULTI-DOCUMENT TEXT SUMMARIZATION USING CLUSTERING TECHNIQUES AND LEXICAL CHAINING
Last modified: 2013-12-04 18:46:19