Genetic algorithm for minimizing tardiness in flow-shop scheduling

The present paper reports on a new approach to applying a genetic algorithm to the flow-shop scheduling problem. Three different objective functions considered are: minimizing total tardiness; minimizing number of tardy jobs; and minimizing both the above objective functions simultaneously. Two sets...

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Veröffentlicht in:Production planning & control 1999, Vol.10 (5), p.462-471
Hauptverfasser: Onwubolu, Godfrey C., Mutingi, Michael
Format: Artikel
Sprache:eng
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Zusammenfassung:The present paper reports on a new approach to applying a genetic algorithm to the flow-shop scheduling problem. Three different objective functions considered are: minimizing total tardiness; minimizing number of tardy jobs; and minimizing both the above objective functions simultaneously. Two sets of solutions are presented; the first is based on a traditional heuristic, the second on a genetic algorithm metaheuristic. The former is suitable for relatively small-scale problem instances, while the latter finds very high quality optimum or near-optimum solution within a reasonably fast time, and is both effective and efficient for both medium- to large-scale problem instances. Results of computational testing are presented and confirm that the approach reported here is of high quality, fast for large problem instances, effective and efficient for flow-shop scheduling.
ISSN:0953-7287
1366-5871
DOI:10.1080/095372899232993