A Novel General Variable Neighborhood Search through Q-Learning for No-Idle Flowshop Scheduling

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Date

2020

Authors

Hande Oztop
M. Fatih Tasgetiren
Levent Kandiller
Quanke Pan

Journal Title

Journal ISSN

Volume Title

Publisher

Institute of Electrical and Electronics Engineers Inc.

Open Access Color

Green Open Access

No

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No
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Top 10%
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Average
Popularity
Top 10%

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Abstract

In this study a novel general variable neighborhood search through Q-learning (GVNS-QL) algorithm is proposed to solve the no-idle flowshop scheduling problem with the makespan objective. In the outer loop of the GVNS-QL insertion and exchange operators are used to shaking the permutation. On the other hand in the inner loop of variable neighborhood descent procedure variable iterated greedy and variable block insertion heuristic algorithms are employed with two effective insertion local search procedures. The proposed GVNS-QL defines the parameters of the algorithm using a Q-learning mechanism. The developed GVNS-QL algorithm is compared with the traditional iterated greedy (IG) algorithm using the well-known benchmark set. The comprehensive computational experiments show that the GVNS-QL outperforms the traditional IG algorithm. The results of the IG and GVNS-QL algorithms are also compared with the current best-known solutions reported in the literature. The computational results show that the proposed GVNS-QL algorithm improves the current best-known solutions for 104 out of 250 instances. © 2020 Elsevier B.V. All rights reserved.

Description

Keywords

General Variable Neighborhood Search, Makespan, No-idle Flowshop Scheduling Problem, Q-learning, Variable Block Insertion, Variable Iterated Greedy, Evolutionary Algorithms, Heuristic Algorithms, Optimization, Reinforcement Learning, Scheduling, Computational Experiment, Computational Results, Exchange Operators, Flow Shop Scheduling Problem, Flow-shop Scheduling, Makespan Objective, Variable Neighborhood Descents, Variable Neighborhood Search, Learning Algorithms, Evolutionary algorithms, Heuristic algorithms, Optimization, Reinforcement learning, Scheduling, Computational experiment, Computational results, Exchange operators, Flow shop scheduling problem, Flow-shop scheduling, Makespan objective, Variable neighborhood descents, Variable neighborhood search, Learning algorithms

Fields of Science

0211 other engineering and technologies, 02 engineering and technology

Citation

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OpenCitations Citation Count
13

Source

2020 IEEE Congress on Evolutionary Computation CEC 2020

Volume

Issue

Start Page

1

End Page

8
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CrossRef : 3

Scopus : 23

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Mendeley Readers : 28

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