A new memetic algorithm for mitigating tandem automated guided vehicle system partitioning problem

Abstract Automated Guided Vehicle System (AGVS) provides the flexibility and automation demanded by Flexible Manufacturing System (FMS). However, with the growing concern on responsible management of resource use, it is crucial to manage these vehicles in an efficient way in order reduces travel tim...

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Main Author: Parinaz Pourrahimian
Format: Article
Language:English
Published: Islamic Azad University 2017-11-01
Series:Journal of Industrial Engineering International
Subjects:
Online Access:http://link.springer.com/article/10.1007/s40092-017-0247-1
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spelling doaj-d419c23c53fe455ba8b5e2c2388ac3142021-02-02T05:03:01ZengIslamic Azad UniversityJournal of Industrial Engineering International1735-57022251-712X2017-11-0114484585510.1007/s40092-017-0247-1A new memetic algorithm for mitigating tandem automated guided vehicle system partitioning problemParinaz Pourrahimian0Department of Mechanical and Manufacturing Engineering, Faculty of Engineering, Universiti Putra MalaysiaAbstract Automated Guided Vehicle System (AGVS) provides the flexibility and automation demanded by Flexible Manufacturing System (FMS). However, with the growing concern on responsible management of resource use, it is crucial to manage these vehicles in an efficient way in order reduces travel time and controls conflicts and congestions. This paper presents the development process of a new Memetic Algorithm (MA) for optimizing partitioning problem of tandem AGVS. MAs employ a Genetic Algorithm (GA), as a global search, and apply a local search to bring the solutions to a local optimum point. A new Tabu Search (TS) has been developed and combined with a GA to refine the newly generated individuals by GA. The aim of the proposed algorithm is to minimize the maximum workload of the system. After all, the performance of the proposed algorithm is evaluated using Matlab. This study also compared the objective function of the proposed MA with GA. The results showed that the TS, as a local search, significantly improves the objective function of the GA for different system sizes with large and small numbers of zone by 1.26 in average.http://link.springer.com/article/10.1007/s40092-017-0247-1AGVSTandem configurationTabu searchMemetic algorithmGenetic algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Parinaz Pourrahimian
spellingShingle Parinaz Pourrahimian
A new memetic algorithm for mitigating tandem automated guided vehicle system partitioning problem
Journal of Industrial Engineering International
AGVS
Tandem configuration
Tabu search
Memetic algorithm
Genetic algorithm
author_facet Parinaz Pourrahimian
author_sort Parinaz Pourrahimian
title A new memetic algorithm for mitigating tandem automated guided vehicle system partitioning problem
title_short A new memetic algorithm for mitigating tandem automated guided vehicle system partitioning problem
title_full A new memetic algorithm for mitigating tandem automated guided vehicle system partitioning problem
title_fullStr A new memetic algorithm for mitigating tandem automated guided vehicle system partitioning problem
title_full_unstemmed A new memetic algorithm for mitigating tandem automated guided vehicle system partitioning problem
title_sort new memetic algorithm for mitigating tandem automated guided vehicle system partitioning problem
publisher Islamic Azad University
series Journal of Industrial Engineering International
issn 1735-5702
2251-712X
publishDate 2017-11-01
description Abstract Automated Guided Vehicle System (AGVS) provides the flexibility and automation demanded by Flexible Manufacturing System (FMS). However, with the growing concern on responsible management of resource use, it is crucial to manage these vehicles in an efficient way in order reduces travel time and controls conflicts and congestions. This paper presents the development process of a new Memetic Algorithm (MA) for optimizing partitioning problem of tandem AGVS. MAs employ a Genetic Algorithm (GA), as a global search, and apply a local search to bring the solutions to a local optimum point. A new Tabu Search (TS) has been developed and combined with a GA to refine the newly generated individuals by GA. The aim of the proposed algorithm is to minimize the maximum workload of the system. After all, the performance of the proposed algorithm is evaluated using Matlab. This study also compared the objective function of the proposed MA with GA. The results showed that the TS, as a local search, significantly improves the objective function of the GA for different system sizes with large and small numbers of zone by 1.26 in average.
topic AGVS
Tandem configuration
Tabu search
Memetic algorithm
Genetic algorithm
url http://link.springer.com/article/10.1007/s40092-017-0247-1
work_keys_str_mv AT parinazpourrahimian anewmemeticalgorithmformitigatingtandemautomatedguidedvehiclesystempartitioningproblem
AT parinazpourrahimian newmemeticalgorithmformitigatingtandemautomatedguidedvehiclesystempartitioningproblem
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