Proactive berth scheduling with data‐driven buffer time in container terminals

Author:

Woo Sung Hun1ORCID,Park Hyun Ji2,Cho Sung Won34ORCID,Kim Ki Hong2

Affiliation:

1. Department of Applied Artificial Intelligence Korea University Seoul Republic of Korea

2. Department of Industrial and Management Engineering Korea University Seoul Republic of Korea

3. Department of Management Engineering Dankook University Cheonan Republic of Korea

4. Maritime Digital Transformation Research Center Korea Research Institute of Ships and Ocean Engineering Daejeon Republic of Korea

Abstract

AbstractGlobal shipment volumes have been increasing due to changes in the business environment of e‐commerce and manufacturing. Consequently, container vessels carry more cargo for international trade, increasing uncertainties in terminal management. Terminal operators manage terminals by establishing a proactive schedule that responds to disruptions such as vessel delays, and the introduction of buffer time is a representative proactive strategy. In this study, by analyzing historical delay data with machine learning, we propose data‐driven buffer times to consider the heterogeneous arrival uncertainty of vessels. Thus, we proactive scheduling with data‐driven buffer times according to the desired robustness levels. This is a novel study on berth scheduling that applies data mining approaches to improve operations research techniques. Numerical experiments were conducted on the berth scheduling with time‐invariant quay crane assignment using real‐life data to validate the effectiveness of the proposed method. These experimental results revealed that applying the data‐driven buffer time could effectively reduce the cost incurred at the terminal by balancing baseline and recovery costs. In addition, our proposed methodology ensured the quality of the solution compared with a stochastic method and reduced the computational burden of a stochastic problem by using the data‐driven buffer times obtained prior to the solution construction. Therefore, the proposed method can be introduced into terminal operations to overcome the deficiencies of traditional approaches in terms of academic perspective.

Funder

Ministry of Oceans and Fisheries

Ministry of Science and ICT, South Korea

Publisher

Wiley

Subject

Management of Technology and Innovation,Management Science and Operations Research,Strategy and Management,Computer Science Applications,Business and International Management

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