O
Orclever
Back to Journal
Research Article Open AccessOrclever Native

In-Vehicle Loading Optimization System for the Cargo Industry

Yağmur Özen1,
Mehmet Aktaş2,
Yusuf Memiş3,
Didem Zülfikaroğlu4
1MNG Cargo R&D Center
2Yıldız Technical University
3MNG Cargo R&D Center
4MNG Cargo R&D Center
Published:December 31, 2022
DOI: 10.56038/oprd.v1i1.138
Vol. 1, No. 1 · pp. 130–141

Abstract

In the intense operation in the cargo sector, by using the vehicles carrying cargo between transits more optimally, it is essential to minimize the unused idle areas inside the vehicles, to set off the vehicles in the cargo transfer centers with a correct and efficient arrangement, faster, and to increase the service quality by carrying more cargo.

For this purpose, the problem of in-vehicle loading optimization is studied within the scope of this research. Again, within the scope of this research, in-vehicle loading optimization for the cargo sector is carried out; by calculating the dimensions of the packages to be placed in the vehicle, An optimization methodology is proposed, which can ensure that the cargo packages reach the maximum number and the interior volume is minimal.

A prototype implementation of the proposed methodology has been developed. The developed prototype application will enable cargo loading planning and in-vehicle optimization of vehicles operated for companies in the cargo sector. The prototype application's success was tested on a sample vehicle loading dataset, and successful results were obtained.

Keywords
Cargo IndustryOptimizationIn-Vehicle LoadingLogistics SectorIn-Vehicle Loading Optimization

References

  1. 1.Albayrak, E., 2013. İki Boyutlu Dikdörtgen Şekilli Stok Kesme Problemleri için Sezgisel Metasezgisel Algoritma ve Yazılım Geliştirme. Balıkesir Üniversitesi Fen Bilimleri Enstitüsü, Yüksek Lisans Tezi, 95s, Balıkesir
  2. 2.Araújo, E.J., Chaves, A.A., Salles Neto, L.L., Azevedo A.T., 2016. Pareto clustering search applied for 3D container ship loading plan problem. Expert Systems with Applications, 44, 50-57
  3. 3.Daş, G.S., 2010. Solving the 3D Container Loading Problem with Metaheuristics. Gaziantep Üniversitesi Fen Bilimleri Enstitüsü, Doktora Tezi, 121s, Gazientep.
  4. 4.Dereli, T., Daş, G.S., 2010. Konteyner Yükleme Problemleri için Karınca Koloni Optimizasyonu Yaklaşımı. Gazi Üniversitesi Mühendislik – Mimarlık Fakültesi Dergisi, 25(4), 881-894.
  5. 5.Erdem, H.A., 2014. Solving Container Loading Problem with Genetic Algorithm. 15th IEEE International Symposium on Computational Intelligence and Informatics, 19-21 Kasım, Budapest, 391-396.
  6. 6.Gehring, H., Bortfeldt, A., 1997. A Genetic Algorithm for Solving the Container Loading Problem. International Transactions in Operational Research 4, 401-418.
  7. 7.Gehring, H., Bortfeldt, A., 2001. A Hybrid Genetic Algorithm for the Container Loading Problem.
  8. 8.Gehring, H., Bortfeldt, A., 2002. A Parallel Genetic Algorithm for Solving the Container Loading Problem. International Transactions in Operational Research 9, 497-511.
  9. 9.George, J.A., Robinson, D.F., 1980. A Heuristic for Packing Boxes Into a Container. Computers & Operational Research 7, 147-156.
  10. 10.Kang, K., Moon, I., ve Wang, H., A hybrid genetic algorithm with a new packing strategy for the three-dimensional bin packing problem. Applied Mathematics and Computation, 2012 (1287–1299)
  11. 11.Lim, A., Rodriguesb, B, Wang, Y. A multi-faced buildup algorithm for three-dimensional packing problems. Omega ,2003, 31,471–481
  12. 12.Li, X., Zhang, K. A hybrid differential evolution algorithm for multiple container loading problem with heterogeneous containers. Computers & Industrial Engineering, 2015, 90, 305–313
  13. 13.North Carolina History Project, (2022), Malcom P. McLean (1913 – 2001), North Carolina History, https://northcarolinahistory.org/encyclopedia/malcom-p-mclean-1913-2001 adresinden alındıLink
  14. 14.OSQP (2022) – OSQP Document, University Of Oxford, https://osqp.org/docs, adresinden alındıLink
  15. 15.Özsüt, Z., 2015. Konteyner Yükleme Problemleri için Matematiksel Modeller ve Çözüm Yöntemleri. Anadolu Üniversitesi Fen Bilimleri Enstitüsü, Yüksek Lisans Tezi, 78s, Eskişehir
  16. 16.Peng, Y., Zhang, D., Chin, F.Y.L., 2009. A Hybrid Simulated Annealing Algorithm for Container Loading Problem. GEC’09, June 12-14, Shanghai, China, 919-928.
  17. 17.Sheng, L., Xiuqin, S., Changjian, C., Hongxia, Z., Dayong, S., Feiyue, W., 2017. Heuristic Algorithm for the Container Loading Problem with Multiple Constraints. Computers & Industrial Engineering 108, 149-164
Download PDF
Cite This Article
Özen, Y., Aktaş, M., Memiş, Y., Zülfikaroğlu, D. (2022). In-Vehicle Loading Optimization System for the Cargo Industry. *Orclever Proceedings of Research and Development*, 1(1), 130-141. https://doi.org/10.56038/oprd.v1i1.138

Bibliographic Info

JournalOrclever Proceedings of Research and Development
Volume1
Issue1
Pages130–141
PublishedDecember 31, 2022
eISSN2980-020X