Content area

Abstract

Priority-dispatching rules have been studied for many decades, and they form the backbone of much industrial scheduling practice. Developing new dispatching rules for a given environment, however, is usually a tedious process involving implementing different rules in a simulation model of the facility under study and evaluating the rule through extensive simulation experiments. In this research, an innovative approach is presented, which is capable of automatically discovering effective dispatching rules. This is a significant step beyond current applications of artificial intelligence to production scheduling, which are mainly based on learning to select a given rule from among a number of candidates rather than identifying new and potentially more effective rules. The proposed approach is evaluated in a variety of single machine environments, and discovers rules that are competitive with those in the literature, which are the results of decades of research. [PUBLICATION ABSTRACT]

Details

Title
Rapid Modeling and Discovery of Priority Dispatching Rules: An Autonomous Learning Approach
Author
Geiger, Christopher D; Uzsoy, Reha; Aytug, Haldun
Pages
7-34
Publication year
2006
Publication date
Feb 2006
Publisher
Springer Nature B.V.
ISSN
10946136
e-ISSN
10991425
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
232424415
Copyright
Springer Science + Business Media, Inc. 2006