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Kernel-Based Machine Learning Methods for Modeling Daily Truck Volume at Seaport Terminals

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  • Xie, Yuanchang
  • Huynh, Nathan

Abstract

The heavy truck traffic generated by major seaports can have huge impacts on local and regional transportation networks. Transportation agencies, port authorities, and terminal operators have a need to know in advance the truck traffic in order to accommodate them accordingly. Several previous studies have developed models for predicting the daily truck traffic at seaport terminals using terminal operations data. In this study, two kernel-based supervised machine learning methods are introduced for the same purpose: Gaussian Processes (GP) and ε-Support Vector Machines (ε-SVMs). They are compared against the Multilayer Feed-forward Neural Networks (MLFNNN) model, which was used in past studies, to provide a comparison of their relative performance. The model development is done using the data from Bayport and Barbours Cut (BCT) container terminals at the Port of Houston. Truck trips generated by import and export activities at the two terminals are investigated separately, generating four sets of data for model testing and comparison. For all test datasets, the GP and ε-SVMs models perform equally well and their prediction performance compares favorably to that of the MLFNN model. On a practical note, the GP and ε-SVMs models require less effort in model fitting compared to the MLFNN model. The strong performance of the GP and ε-SVMs models relative to the commonly used MLFNN model suggest that they can be considered as alternative approaches to the MLFNN in other predictive applications.

Suggested Citation

  • Xie, Yuanchang & Huynh, Nathan, 2010. "Kernel-Based Machine Learning Methods for Modeling Daily Truck Volume at Seaport Terminals," 51st Annual Transportation Research Forum, Arlington, Virginia, March 11-13, 2010 207231, Transportation Research Forum.
  • Handle: RePEc:ags:ndtr10:207231
    DOI: 10.22004/ag.econ.207231
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    Cited by:

    1. Tang, Jinjun & Zhang, Xinshao & Yu, Tianjian & Liu, Fang, 2021. "Missing traffic data imputation considering approximate intervals: A hybrid structure integrating adaptive network-based inference and fuzzy rough set," Physica A: Statistical Mechanics and its Applications, Elsevier, vol. 573(C).
    2. Raeesi, Ramin & Sahebjamnia, Navid & Mansouri, S. Afshin, 2023. "The synergistic effect of operational research and big data analytics in greening container terminal operations: A review and future directions," European Journal of Operational Research, Elsevier, vol. 310(3), pages 943-973.
    3. Filom, Siyavash & Amiri, Amir M. & Razavi, Saiedeh, 2022. "Applications of machine learning methods in port operations – A systematic literature review," Transportation Research Part E: Logistics and Transportation Review, Elsevier, vol. 161(C).

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