An adaptive genetic algorithm for a dynamic single-machine scheduling problem
Nowadays, industries cope with a wide range of situations and/or perturbations that endanger the manufacturing productivity. Traditionally, manufacturing control systems are responsible for managing the manufacturing scheduling and execution, as these have the capability of maintaining the productio...
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Growing Science
2018-08-01
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Online Access: | http://www.growingscience.com/msl/Vol8/msl_2018_94.pdf |
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doaj-dde4df02827a464da355f85e53f567d62020-11-25T01:13:28ZengGrowing ScienceManagement Science Letters1923-93351923-93432018-08-018111117113210.5267/j.msl.2018.8.011An adaptive genetic algorithm for a dynamic single-machine scheduling problem Jose-Fernando JimenezEliana Gonzalez-NeiraGabriel Zambrano-ReyNowadays, industries cope with a wide range of situations and/or perturbations that endanger the manufacturing productivity. Traditionally, manufacturing control systems are responsible for managing the manufacturing scheduling and execution, as these have the capability of maintaining the production operations regardless of a given perturbation. Still, the challenge of these systems is to achieve an optimal performance after the perturbations occur. For this reason, manufacturing control systems must incorporate a mechanism with intelligent capabilities to look for optimal performance and operation reactivity regardless of any scenario. This paper proposes a generic control strategy for a manufacturing control system for piloting the execution of a dynamic scheduling problem, considering a new job arrival as the manufacturing perturbation. The study explores a predictive-reactive approach that couples a genetic algorithm for the predictive scheduling and an adaptive genetic algorithm for reactivity control aiming to minimize the weighted tardiness in a dynamic manufacturing scenario. The results obtained from this proposal verify that the effectiveness was improved by using adaptive metaheuristic in a dynamic scheduling problem, considering absorbing the degradation caused by the perturbation.http://www.growingscience.com/msl/Vol8/msl_2018_94.pdfAdaptive Genetic algorithmDynamic SchedulingManufacturing controlPredictive-ReactiveOptimalityReactivity |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jose-Fernando Jimenez Eliana Gonzalez-Neira Gabriel Zambrano-Rey |
spellingShingle |
Jose-Fernando Jimenez Eliana Gonzalez-Neira Gabriel Zambrano-Rey An adaptive genetic algorithm for a dynamic single-machine scheduling problem Management Science Letters Adaptive Genetic algorithm Dynamic Scheduling Manufacturing control Predictive-Reactive Optimality Reactivity |
author_facet |
Jose-Fernando Jimenez Eliana Gonzalez-Neira Gabriel Zambrano-Rey |
author_sort |
Jose-Fernando Jimenez |
title |
An adaptive genetic algorithm for a dynamic single-machine scheduling problem |
title_short |
An adaptive genetic algorithm for a dynamic single-machine scheduling problem |
title_full |
An adaptive genetic algorithm for a dynamic single-machine scheduling problem |
title_fullStr |
An adaptive genetic algorithm for a dynamic single-machine scheduling problem |
title_full_unstemmed |
An adaptive genetic algorithm for a dynamic single-machine scheduling problem |
title_sort |
adaptive genetic algorithm for a dynamic single-machine scheduling problem |
publisher |
Growing Science |
series |
Management Science Letters |
issn |
1923-9335 1923-9343 |
publishDate |
2018-08-01 |
description |
Nowadays, industries cope with a wide range of situations and/or perturbations that endanger the manufacturing productivity. Traditionally, manufacturing control systems are responsible for managing the manufacturing scheduling and execution, as these have the capability of maintaining the production operations regardless of a given perturbation. Still, the challenge of these systems is to achieve an optimal performance after the perturbations occur. For this reason, manufacturing control systems must incorporate a mechanism with intelligent capabilities to look for optimal performance and operation reactivity regardless of any scenario. This paper proposes a generic control strategy for a manufacturing control system for piloting the execution of a dynamic scheduling problem, considering a new job arrival as the manufacturing perturbation. The study explores a predictive-reactive approach that couples a genetic algorithm for the predictive scheduling and an adaptive genetic algorithm for reactivity control aiming to minimize the weighted tardiness in a dynamic manufacturing scenario. The results obtained from this proposal verify that the effectiveness was improved by using adaptive metaheuristic in a dynamic scheduling problem, considering absorbing the degradation caused by the perturbation. |
topic |
Adaptive Genetic algorithm Dynamic Scheduling Manufacturing control Predictive-Reactive Optimality Reactivity |
url |
http://www.growingscience.com/msl/Vol8/msl_2018_94.pdf |
work_keys_str_mv |
AT josefernandojimenez anadaptivegeneticalgorithmforadynamicsinglemachineschedulingproblem AT elianagonzalezneira anadaptivegeneticalgorithmforadynamicsinglemachineschedulingproblem AT gabrielzambranorey anadaptivegeneticalgorithmforadynamicsinglemachineschedulingproblem AT josefernandojimenez adaptivegeneticalgorithmforadynamicsinglemachineschedulingproblem AT elianagonzalezneira adaptivegeneticalgorithmforadynamicsinglemachineschedulingproblem AT gabrielzambranorey adaptivegeneticalgorithmforadynamicsinglemachineschedulingproblem |
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1725162064646766592 |