Learning machine scheduling strategies are addressed while concentrating on the dynamic nature of real systems. A framework is proposed consisting of two modules: intelligent simulation (IS) and incremental learning. A simulation technique is basically exploited to mirror the manufacturing system. The knowledge base incorporated within the simulation environment enables the IS to behave intelligently as well as to evaluate the knowledge base (KB). A genetic algorithm drives the learning module. Its ingredients are tailored to tackle such a problem with a huge search space. A set of decision rules is identified as a chromosome. The rule set’s fitness is related to the scheduling performance measure and is scaled. A crossover and three kinds of mutations together with a steady‐state replacement technique are designed to discover the (near) best rule set. The whole framework is designed to work in an automated way. A series of test results on a basic model show that the proposed system learns, adapts itself to the dominating dynamic patterns, and converges to the optimum solution.
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1 July 2000
This article was originally published in
Integrated Manufacturing Systems
Research Article|
July 01 2000
Intelligent dynamic scheduling system: the application of genetic algorithms Available to Purchase
M. Jahangirian;
M. Jahangirian
University of Manchester Institute of Science and Technology, Manchester, UK
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G.V. Conroy
G.V. Conroy
University of Manchester Institute of Science and Technology, Manchester, UK
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Publisher: Emerald Publishing
Online ISSN: 1758-583X
Print ISSN: 0957-6061
© MCB UP Limited
2000
Integrated Manufacturing Systems (2000) 11 (4): 247–257.
Citation
Jahangirian M, Conroy G (2000), "Intelligent dynamic scheduling system: the application of genetic algorithms". Integrated Manufacturing Systems, Vol. 11 No. 4 pp. 247–257, doi: https://doi.org/10.1108/09576060010326375
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