Article ID: | iaor1993994 |
Country: | United States |
Volume: | 38 |
Issue: | 10 |
Start Page Number: | 1495 |
End Page Number: | 1509 |
Publication Date: | Oct 1992 |
Journal: | Management Science |
Authors: | Wu S. David, Storer Robert, Vaccari Renzo |
Keywords: | production, heuristics, search, artificial intelligence |
In this paper search heuristics are developed for generic sequencing problems with emphasis on job shop scheduling. The proposed methods integrate problem specific heuristics common to Operations Research and local search approaches from Artificial Intelligence in order to obtain desirable properties from both. The applicability of local search to a wide range of problems, and the incorporation of problem-specific information are both properties of the proposed algorithms. Two methods are proposed, both of which are based on novel definitions of solution spaces and of neighborhoods in these spaces. Applications of the proposed methodology are developed for job shop scheduling problems, and can be easily applied with any scheduling objective. To demonstrate effectiveness, the method is tested on the job shop scheduling problem with the minimum makespan objective. Encouraging results are obtained.