Q-learning guided algorithms for bi-criteria minimization of total flow time and makespan in no-wait permutation flowshops

dc.contributor.author Damla Yuksel
dc.contributor.author Levent Kandiller
dc.contributor.author Mehmet Fatih Tasgetiren
dc.contributor.author Yüksel, Damla
dc.contributor.author Taşgetiren, Mehmet Fatih
dc.contributor.author Kandiller, Levent
dc.date AUG
dc.date.accessioned 2025-10-06T16:21:11Z
dc.date.issued 2024
dc.description.abstract Combining Deep Reinforcement Learning and meta-heuristic techniques represents a new research direction for enhancing the search capabilities of meta-heuristic methods in the context of production scheduling. Q-learning is a prominent reinforcement learning in which its utilization aims to direct the selection of actions thus preventing the necessity for a random exploration in the iterative process of the metaheuristics. In this study we provide Q-learning guided algorithms for the Bi-Criteria No-Wait Flowshop Scheduling Problem (NWFSP). The problem is treated as a bi-criteria combinatorial optimization problem where total flow time and makespan are optimized simultaneously. Firstly a deterministic mixed-integer linear programming (MILP) model is provided. Then Q-learning guided algorithms are developed: Bi-Criteria Iterated Greedy Algorithm with Q-Learning (BCIGQL). Bi-Criteria Block Insertion Heuristic Algorithm with Q-Learning (BC-BIHQL). Moreover the performance of the proposed Q-learning guided algorithms is compared over a collection of Bi-Criteria Genetic Local Search Algorithms (BC-GLS) Bi-Criteria Iterated Greedy Algorithm (BC-IG) Bi-Criteria Iterated Greedy Algorithm with a Local Search (BC-IGALL) and Bi-Criteria Variable Block Insertion Heuristic Algorithm (BC-VBIH). The complete computational experiment performed on 480 problem instances of Vallada et al. (2015) which is known as the VRF benchmark set indicates that the BC-BIHQL and the BC-IGQL algorithms outperform the BC-GLS BC-IG BCIGALL and BC-VBIH algorithms in comparative performance metrics. More specifically the proposed BC-BIHQL and BC-IGQL algorithms can yield more non-dominated bi-criteria solutions with the most substantial competitiveness than the remaining algorithms. At the same time both are competitive with each other on the benchmark problems. Moreover the BC-IGQL algorithm dominates almost 97% and 99% of the solutions reached by the BC-IG BC-IGALL and BC-VBIH algorithms in small and large datasets. Similarly The BC-BIHQL algorithm dominates almost 98% and 99% of the solutions reached by the BC-IG BC-IGALL and BC-VBIH algorithms in small and large datasets respectively. This means that among all the features that have been compared the Qlearning-guided algorithms demonstrate the highest level of competitiveness. The outcomes of this study encourage us to discover many more bi-criteria NWFSPs to reveal the trade-off between other conflicting objectives such as makespan & the number of early jobs to overcome various industries' problems.
dc.identifier.doi 10.1016/j.swevo.2024.101617
dc.identifier.issn 2210-6502
dc.identifier.issn 2210-6510
dc.identifier.scopus 2-s2.0-85195865594
dc.identifier.uri http://dx.doi.org/10.1016/j.swevo.2024.101617
dc.identifier.uri https://gcris.yasar.edu.tr/handle/123456789/6736
dc.identifier.uri https://doi.org/10.1016/j.swevo.2024.101617
dc.language.iso English
dc.publisher ELSEVIER
dc.relation.ispartof Swarm and Evolutionary Computation
dc.rights info:eu-repo/semantics/closedAccess
dc.source SWARM AND EVOLUTIONARY COMPUTATION
dc.subject Bi-criteria scheduling problems, No -wait flowshop scheduling problem, Makespan, Total flow time, Mixed -integer linear programming, Bi-criteria heuristic optimization
dc.subject TOTAL WEIGHTED TARDINESS, MULTIOBJECTIVE ELECTROMAGNETISM ALGORITHM, ITERATED GREEDY ALGORITHM, DEPENDENT SETUP TIMES, SCHEDULING PROBLEM, SINGLE-MACHINE, LOCAL SEARCH, MEMETIC ALGORITHM, OPTIMIZATION, SUBJECT
dc.subject Makespan
dc.subject Bi-Criteria Heuristic Optimization
dc.subject Mixed -Integer Linear Programming
dc.subject Bi-Criteria Scheduling Problems
dc.subject No-Wait Flowshop Scheduling Problem
dc.subject Mixed-Integer Linear Programming
dc.subject No -Wait Flowshop Scheduling Problem
dc.subject Total Flow Time
dc.title Q-learning guided algorithms for bi-criteria minimization of total flow time and makespan in no-wait permutation flowshops
dc.type Article
dspace.entity.type Publication
gdc.author.id YÜKSEL, DAMLA/0000-0003-4630-3325
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gdc.author.wosid Kandiller, Levent/B-3392-2019
gdc.author.wosid YÜKSEL, DAMLA/ABE-9888-2020
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gdc.description.department
gdc.description.departmenttemp [Yuksel, Damla; Kandiller, Levent] Yasar Univ, Dept Ind Engn, TR-35100 Izmir, Turkiye; [Tasgetiren, Mehmet Fatih] Baskent Univ, Dept Ind Engn, TR-06790 Ankara, Turkiye
gdc.description.publicationcategory Makale - Uluslararası Hakemli Dergi - Kurum Öğretim Elemanı
gdc.description.startpage 101617
gdc.description.volume 89
gdc.description.woscitationindex Science Citation Index Expanded
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gdc.virtual.author Taşgetiren, Mehmet Fatih
gdc.virtual.author Yüksel, Damla
gdc.virtual.author Kandiller, Levent
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