A vibrant crossbreed social spider optimization with genetic algorithm tactic for flexible job shop scheduling problem

Job shop scheduling is one of the major issues in which the scheduling process is associated with the real-time manufacturing industry. A flexible job shop scheduling problem is one of the most important issues among the hardest combinatorial advancement issues. Flexible job shop scheduling is extre...

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Main Authors: S Kavitha, P Venkumar
Format: Article
Language:English
Published: SAGE Publishing 2020-01-01
Series:Measurement + Control
Online Access:https://doi.org/10.1177/0020294019889085
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spelling doaj-22a5bb998c66404598cfbf010a41e97d2020-11-25T03:49:23ZengSAGE PublishingMeasurement + Control0020-29402020-01-015310.1177/0020294019889085A vibrant crossbreed social spider optimization with genetic algorithm tactic for flexible job shop scheduling problemS KavithaP VenkumarJob shop scheduling is one of the major issues in which the scheduling process is associated with the real-time manufacturing industry. A flexible job shop scheduling problem is one of the most important issues among the hardest combinatorial advancement issues. Flexible job shop scheduling is extremely a nondeterministic polynomial combinatorial problem. In this paper, it is proposed that a mixture of improvement demonstrates to make makespan minimization in the flexible job shop scheduling problem issue. This paper includes the hybridization of social spider optimization and genetic algorithm that is effectively controlled by the calculation via optimization techniques. Most of the part in this method is given as the scavenging methodology of social insects, which use the vibrations spread over the bug-catching network to decide the position of the target. These hybridization approaches after arachnid upgrading process hereditary calculation chromosomes are chosen to produce new arrangements nearer to the minimum makespan time. The main objective of this paper is to minimize the makespan time of “ n ” jobs and “ m ” machines. The proposed algorithms have effectively investigated many benchmark problems and the computational results were compared with existing metaheuristic, including progressive calculations and algorithms for the swarm intelligence in the flexible job shop scheduling problem.https://doi.org/10.1177/0020294019889085
collection DOAJ
language English
format Article
sources DOAJ
author S Kavitha
P Venkumar
spellingShingle S Kavitha
P Venkumar
A vibrant crossbreed social spider optimization with genetic algorithm tactic for flexible job shop scheduling problem
Measurement + Control
author_facet S Kavitha
P Venkumar
author_sort S Kavitha
title A vibrant crossbreed social spider optimization with genetic algorithm tactic for flexible job shop scheduling problem
title_short A vibrant crossbreed social spider optimization with genetic algorithm tactic for flexible job shop scheduling problem
title_full A vibrant crossbreed social spider optimization with genetic algorithm tactic for flexible job shop scheduling problem
title_fullStr A vibrant crossbreed social spider optimization with genetic algorithm tactic for flexible job shop scheduling problem
title_full_unstemmed A vibrant crossbreed social spider optimization with genetic algorithm tactic for flexible job shop scheduling problem
title_sort vibrant crossbreed social spider optimization with genetic algorithm tactic for flexible job shop scheduling problem
publisher SAGE Publishing
series Measurement + Control
issn 0020-2940
publishDate 2020-01-01
description Job shop scheduling is one of the major issues in which the scheduling process is associated with the real-time manufacturing industry. A flexible job shop scheduling problem is one of the most important issues among the hardest combinatorial advancement issues. Flexible job shop scheduling is extremely a nondeterministic polynomial combinatorial problem. In this paper, it is proposed that a mixture of improvement demonstrates to make makespan minimization in the flexible job shop scheduling problem issue. This paper includes the hybridization of social spider optimization and genetic algorithm that is effectively controlled by the calculation via optimization techniques. Most of the part in this method is given as the scavenging methodology of social insects, which use the vibrations spread over the bug-catching network to decide the position of the target. These hybridization approaches after arachnid upgrading process hereditary calculation chromosomes are chosen to produce new arrangements nearer to the minimum makespan time. The main objective of this paper is to minimize the makespan time of “ n ” jobs and “ m ” machines. The proposed algorithms have effectively investigated many benchmark problems and the computational results were compared with existing metaheuristic, including progressive calculations and algorithms for the swarm intelligence in the flexible job shop scheduling problem.
url https://doi.org/10.1177/0020294019889085
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AT skavitha vibrantcrossbreedsocialspideroptimizationwithgeneticalgorithmtacticforflexiblejobshopschedulingproblem
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