Article ID: | iaor2009993 |
Country: | United Kingdom |
Volume: | 46 |
Issue: | 6 |
Start Page Number: | 1431 |
End Page Number: | 1454 |
Publication Date: | Jan 2008 |
Journal: | International Journal of Production Research |
Authors: | Uzsoy Reha, Geiger Christopher D. |
Keywords: | heuristics: genetic algorithms, production |
Batch processor scheduling, where machines can process multiple jobs simultaneously, is frequently harder than its unit-capacity counterpart because an effective scheduling procedure must not only decide how to group the individual jobs into batches, but also determine the sequence in which the batches are to be processed. We extend a previously developed genetic learning approach to automatically discover effective dispatching policies for several batch scheduling environments, and show that these rules yield good system performance. Computational results show the competitiveness of the learned rules with existing rules for different performance measures. The autonomous learning approach addresses a growing practical need for rapidly developing effective dispatching rules for these environments by automating the discovery of effective job dispatching procedures.