Please use this identifier to cite or link to this item: http://hdl.handle.net/11718/21914
Title: A stochastic model for interterminal container transportation
Other Titles: TRANSPORTATION SCIENCE
Authors: Mishra, Nishant
Roy, Debjit
Ommeren, Jan-Kees van
Keywords: interterminal transport;port and container terminal operations;semiopen queuing network
Issue Date: 2017
Publisher: INFORMS
Citation: Mishra, N., Roy, D., & van Ommeren, J. (2017). A stochastic model for interterminal container transportation . Transportation Science 52(1), 67-87. DOI: 10.1287/trsc.2016.0726
Abstract: We propose a novel semiopen queuing network (SOQN) model for the interterminal transportation (ITT) problem where multiple container terminals use a common fleet of vehicles (automated lift vehicles, automated guided vehicles, multitrailers, and barges) to transport containers between terminals. To solve the overall queuing network, our solution approach uses a network decomposition method where the original SOQN is decomposed to a closed and an open queuing network (with bulk-service capacity). To our knowledge, this is the first work that considers bulk service in SOQNs. We develop theoretical upper and lower bounds on the throughput time estimates of our model, and provide an extension for the case when service times at the terminal handling stations depend on the number of containers being loaded/unloaded. We numerically validate our model using simulated data where we find that our model results in errors of less than 5% for vehicle utilization. We also show that our model results in better estimates for the ITT problem when compared to existing approaches in the literature. Finally, we apply our model to real-world data from the Port of Rotterdam and show that it can be used to analyze throughput time trade-offs with alternate dwell point policies, different vehicle types, and variable vehicle capacities.
URI: http://hdl.handle.net/11718/21914
Appears in Collections:Journal Articles

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