| Article ID: | iaor2009978 |
| Country: | United Kingdom |
| Volume: | 35 |
| Issue: | 4 |
| Start Page Number: | 1084 |
| End Page Number: | 1098 |
| Publication Date: | Apr 2008 |
| Journal: | Computers and Operations Research |
| Authors: | Karimi Behrooz, Kashan Ali Husseinzadeh, Jenabi Masoud |
| Keywords: | heuristics: genetic algorithms, optimization: simulated annealing |
This paper investigates the scheduling problem of parallel identical batch processing machines in which each machine can process a group of jobs simultaneously as a batch. Each job is characterized by its size and processing time. The processing time of a batch is given by the longest processing time among all jobs in the batch. Based on developing heuristic approaches, we proposed a hybrid genetic heuristic (HGH) to minimize makespan objective. To verify the performance of our algorithm, comparisons are made through using a simulated annealing approach addressed in the literature as a comparator algorithm. Computational experiments reveal that affording the knowledge of problem through using heuristic procedures, gives HGH the ability of finding optimal or near optimal solutions in a reasonable time.