A DE Based Variable Iterated Greedy Algorithm for the No-Idle Permutation Flowshop Scheduling Problem with Total Flowtime Criterion
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Date
2012
Authors
M. Fatih Tasgetiren
Quan-Ke Pan
Ling Wang
Angela H. -L. Chen
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Publisher
SPRINGER-VERLAG BERLIN
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Abstract
In this paper we present a variable iterated greedy (vIGP_DE) algorithm where its parameters (basically destruction size and cooling parameter for the simulated annealing type of acceptance criterion) are optimized by the differential evolution algorithm. A unique multi-chromosome solution representation is presented such that first chromosome represents the destruction size and cooling parameter of the iterated greedy algorithm while second chromosome is simply a permutation assigned to each individual in the population randomly. As an application area we choose to solve the no-idle permutation tlowshop scheduling problem with the total flowtime criterion. To the best of our knowledge the no-idle permutation flowshop problem hasn't yet been studied thought it's a variant of the well-known permutation flowshop scheduling problem. The performance of the vIGP_DE algorithm is tested on the Tail lard's benchmark suite and compared to a very recent variable iterated greedy algorithm from the existing literature. The computational results show its highly competitive performance and ultimately we provide the best known solutions for the total flowtime criterion for the Tail lard's benchmark suit.
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Keywords
Differential evolution algorithm, iterated greedy algorithm, local search, no-idle permutation flowshop scheduling problem, DIFFERENTIAL EVOLUTION, SEQUENCING PROBLEM, OPTIMIZATION
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Source
7th International Conference on Intelligent Computing (ICIC)
