Performance Analysis of Flowshop Scheduling Using Genetic Algorithm Enhanced with Simulation

Authors

  • Ibrahim Al Kattan American University of Sharjah
  • Rajashekar Maragoud University of Massachusetts

DOI:

https://doi.org/10.23055/ijietap.2008.15.1.63

Keywords:

Flow shop problem, perfprmance analysis, hybrid scheduling algorithms, genetic algorithms, Simulation

Abstract

This paper uses the genetic algorithm combined with simulation techniques to evaluate the performance of flowshop scheduling. The problem of scheduling is a NP combinatorial optimization problem. The objective of the study is to develop robust scheduling by using Genetic Algorithms (GA) to obtain good solutions may be close to optimum sequence with minimum cycle time or make span time for a flow shop problem. The next step is to use simulation to analyze the performance of selected sequences to achieve better resource utilization. In this research, newly hybrid genetic algorithm is developed using C-programming language for four different methods to solve flow shop scheduling problems. The proposed methods are implemented on a number of tested problems and compared with exact solutions on smaller scale problems. The alternative sequence obtained here is further analyzed by simulating the production model using ARENA software.

Author Biographies

Ibrahim Al Kattan, American University of Sharjah

B

Rajashekar Maragoud, University of Massachusetts

Rajashekar Maragoud is currently pursuing a Master of Science degree in Mechanical Engineering from the University of Massachusetts Dartmouth, 2002.

Downloads

Published

2022-02-24

How to Cite

Kattan, I. A., & Maragoud, R. (2022). Performance Analysis of Flowshop Scheduling Using Genetic Algorithm Enhanced with Simulation. International Journal of Industrial Engineering: Theory, Applications and Practice, 15(1), 62–72. https://doi.org/10.23055/ijietap.2008.15.1.63

Issue

Section

Production Planning and Control