Research Article
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Year 2023, Volume: 12 Issue: 3, 380 - 401, 28.09.2023
https://doi.org/10.33714/masteb.1324266

Abstract

References

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Optimizing Shipbuilding Production Project Scheduling Under Resource Constraints Using Genetic Algorithms and Fuzzy Sets

Year 2023, Volume: 12 Issue: 3, 380 - 401, 28.09.2023
https://doi.org/10.33714/masteb.1324266

Abstract

This study explores the application of Genetic Algorithms (GA) in optimizing shipbuilding production processes in the presence of uncertain environments. The research addresses two key aspects: firstly, the integration of GA RCPSP (Resource-Constrained Project Scheduling Problem) with techniques for managing uncertainty in shipbuilding production; and secondly, the analysis of Pareto optimal solutions generated by GA to achieve optimal scheduling in the shipbuilding context. The proposed framework aims to minimize project completion time and maximize resource utilization by incorporating probabilistic models, scenario analysis to handle uncertainties. Furthermore, the study focuses on evaluating the trade-offs between project completion time, resource allocation, and cost through the analysis of Pareto optimal solutions, using visualization techniques and sensitivity analyses to support decision-making processes. The findings contribute to enhancing shipbuilding production by providing a comprehensive approach for effectively managing uncertainty, improving resource allocation, and reducing project duration through the integration of GA RCPSP and uncertainty management techniques.

Thanks

This article was prepared based on the doctoral thesis entitled “Model of Ship Production Management in Shipyard: A Case Study in Marmara Region” completed by the first author in the “Maritime Transportation Management Engineering” PhD Program at Institute of Graduate Studies in Science, İstanbul University.

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There are 148 citations in total.

Details

Primary Language English
Subjects Maritime Engineering (Other)
Journal Section Research Article
Authors

Ercan Akan 0000-0003-0383-8290

Güler Alkan 0000-0001-5052-111X

Publication Date September 28, 2023
Submission Date July 7, 2023
Acceptance Date August 30, 2023
Published in Issue Year 2023 Volume: 12 Issue: 3

Cite

APA Akan, E., & Alkan, G. (2023). Optimizing Shipbuilding Production Project Scheduling Under Resource Constraints Using Genetic Algorithms and Fuzzy Sets. Marine Science and Technology Bulletin, 12(3), 380-401. https://doi.org/10.33714/masteb.1324266
AMA Akan E, Alkan G. Optimizing Shipbuilding Production Project Scheduling Under Resource Constraints Using Genetic Algorithms and Fuzzy Sets. Mar. Sci. Tech. Bull. September 2023;12(3):380-401. doi:10.33714/masteb.1324266
Chicago Akan, Ercan, and Güler Alkan. “Optimizing Shipbuilding Production Project Scheduling Under Resource Constraints Using Genetic Algorithms and Fuzzy Sets”. Marine Science and Technology Bulletin 12, no. 3 (September 2023): 380-401. https://doi.org/10.33714/masteb.1324266.
EndNote Akan E, Alkan G (September 1, 2023) Optimizing Shipbuilding Production Project Scheduling Under Resource Constraints Using Genetic Algorithms and Fuzzy Sets. Marine Science and Technology Bulletin 12 3 380–401.
IEEE E. Akan and G. Alkan, “Optimizing Shipbuilding Production Project Scheduling Under Resource Constraints Using Genetic Algorithms and Fuzzy Sets”, Mar. Sci. Tech. Bull., vol. 12, no. 3, pp. 380–401, 2023, doi: 10.33714/masteb.1324266.
ISNAD Akan, Ercan - Alkan, Güler. “Optimizing Shipbuilding Production Project Scheduling Under Resource Constraints Using Genetic Algorithms and Fuzzy Sets”. Marine Science and Technology Bulletin 12/3 (September 2023), 380-401. https://doi.org/10.33714/masteb.1324266.
JAMA Akan E, Alkan G. Optimizing Shipbuilding Production Project Scheduling Under Resource Constraints Using Genetic Algorithms and Fuzzy Sets. Mar. Sci. Tech. Bull. 2023;12:380–401.
MLA Akan, Ercan and Güler Alkan. “Optimizing Shipbuilding Production Project Scheduling Under Resource Constraints Using Genetic Algorithms and Fuzzy Sets”. Marine Science and Technology Bulletin, vol. 12, no. 3, 2023, pp. 380-01, doi:10.33714/masteb.1324266.
Vancouver Akan E, Alkan G. Optimizing Shipbuilding Production Project Scheduling Under Resource Constraints Using Genetic Algorithms and Fuzzy Sets. Mar. Sci. Tech. Bull. 2023;12(3):380-401.

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