Data-driven dynamic stacking strategy for export containers in container terminals
- Authors
- Park, H.J.; Cho, S.W.; Nanda, A.; Park, J.H.
- Issue Date
- 3월-2023
- Publisher
- Springer
- Keywords
- Container stacking problem (CSP); Container terminals; Gaussian mixture model (GMM); Machine learning
- Citation
- Flexible Services and Manufacturing Journal, v.35, no.1, pp 170 - 195
- Pages
- 26
- Journal Title
- Flexible Services and Manufacturing Journal
- Volume
- 35
- Number
- 1
- Start Page
- 170
- End Page
- 195
- URI
- https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/9446
- DOI
- 10.1007/s10696-022-09457-8
- ISSN
- 1936-6582
1936-6590
- Abstract
- This study investigates a method for improving real-time decisions regarding the storage location of export containers while the containers are arriving. To manage the decision-making process, we propose a two module-based data-driven dynamic stacking strategy that facilitates stowage planning. Module 1 generates the Gaussian mixture model (GMM) specific to each container group for container weight classification. Module 2 implements the data-driven dynamic stacking strategy as an online algorithm to determine the storage location of an arriving container in real time. Numerical experiments were conducted using real-life data to validate the effectiveness of the proposed method compared to other alternative stacking strategies. These experiments revealed that the performance of the proposed method is robust, and therefore it can improve yard operations and container terminal competitiveness. ? 2022, The Author(s).
- Files in This Item
-
- Appears in
Collections - 해양공공디지털연구본부 > 해사디지털서비스연구센터 > Journal Articles
Items in ScholarWorks are protected by copyright, with all rights reserved, unless otherwise indicated.