Research Article Open Access

Hybridization of Genetic Algorithm with Parallel Implementation of Simulated Annealing for Job Shop Scheduling

Thamilselvan Rakkiannan1 and Balasubramanie Palanisamy1
  • 1 Faculty of Computer Science and Engineering, Kongu Engineering College, Perundurai, Erode 638 052, Tamilnadu, India

Abstract

Problem statement: The Job Shop Scheduling Problem (JSSP) is observed as one of the most difficult NP-hard, combinatorial problem. The problem consists of determining the most efficient schedule for jobs that are processed on several machines. Approach: In this study Genetic Algorithm (GA) is integrated with the parallel version of Simulated Annealing Algorithm (SA) is applied to the job shop scheduling problem. The proposed algorithm is implemented in a distributed environment using Remote Method Invocation concept. The new genetic operator and a parallel simulated annealing algorithm are developed for solving job shop scheduling. Results: The implementation is done successfully to examine the convergence and effectiveness of the proposed hybrid algorithm. The JSS problems tested with very well-known benchmark problems, which are considered to measure the quality of proposed system. Conclusion/Recommendations: The empirical results show that the proposed genetic algorithm with simulated annealing is quite successful to achieve better solution than the individual genetic or simulated annealing algorithm.

American Journal of Applied Sciences
Volume 9 No. 10, 2012, 1694-1705

DOI: https://doi.org/10.3844/ajassp.2012.1694.1705

Submitted On: 1 March 2012 Published On: 25 August 2012

How to Cite: Rakkiannan, T. & Palanisamy, B. (2012). Hybridization of Genetic Algorithm with Parallel Implementation of Simulated Annealing for Job Shop Scheduling. American Journal of Applied Sciences, 9(10), 1694-1705. https://doi.org/10.3844/ajassp.2012.1694.1705

  • 3,580 Views
  • 3,319 Downloads
  • 8 Citations

Download

Keywords

  • Job shop scheduling
  • genetic algorithm
  • simulated annealing