Leveraging machine learning and optimization models for enhanced seaport efficiency

Date published

2025-12-31

Free to read from

2025-03-10

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

Springer

Department

Type

Article

ISSN

1479-2931

Format

Citation

Jahangard M, Xie Y, Feng Y. (2025) Leveraging machine learning and optimization models for enhanced seaport efficiency. Maritime Economics & Logistics, Available online 14 February 2025

Abstract

This study provides an overview of the application of predictive and prescriptive analytics in seaport operations and explore the potential of integrating predictive outputs into prescriptive analytics to advance research in this field. A systematic review of 124 papers was performed to identify and classify key topics based on application areas, types of applications, and employed techniques. Our findings show a growing interest in developing either predictive or prescriptive analytics models to improve seaport operational efficiency. However, there is limited research combining predictive outputs with prescriptive analytics for data-driven decision-making. Additionally, the hybridization of machine learning and operations research techniques remains underexplored. One promising area is applying machine learning models, such as reinforcement learning, to solve optimization problems. Predictive maintenance and data-enabled operational control measures for port equipment and facilities are also highlighted as interesting future research areas.

Description

Software Description

Software Language

Github

Keywords

3509 Transportation, Logistics and Supply Chains, 4406 Human Geography, 35 Commerce, Management, Tourism and Services, 44 Human Society, Machine Learning and Artificial Intelligence, Generic health relevance, Logistics & Transportation, 3509 Transportation, logistics and supply chains, 4406 Human geography, Seaport operations, Port efficiency, Predictive analytics, Prescriptive analytics, Machine learning, Optimization, Systematic literature review

DOI

Rights

Attribution 4.0 International

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Relationships

Resources

Funder/s

This work was supported by the Engineering and Physical Sciences Research Council UK [grant number EP/Y024605/1] and Department of Transport UK.