Future Internet (Apr 2019)

Ant Colony Optimization Task Scheduling Algorithm for SWIM Based on Load Balancing

  • Gang Li,
  • Zhijun Wu

DOI
https://doi.org/10.3390/fi11040090
Journal volume & issue
Vol. 11, no. 4
p. 90

Abstract

Read online

This paper focuses on the load imbalance problem in System Wide Information Management (SWIM) task scheduling. In order to meet the quality requirements of users for task completion, we studied large-scale network information system task scheduling methods. Combined with the traditional ant colony optimization (ACO) algorithm, using the hardware performance quality index and load standard deviation function of SWIM resource nodes to update the pheromone, a SWIM ant colony task scheduling algorithm based on load balancing (ACTS-LB) is presented in this paper. The experimental simulation results show that the ACTS-LB algorithm performance is better than the traditional min-min algorithm, ACO algorithm and particle swarm optimization (PSO) algorithm. It not only reduces the task execution time and improves the utilization of system resources, but also can maintain SWIM in a more load balanced state.

Keywords