Data-Driven Ship Berthing Forecasting for Cold Ironing in Maritime Transportation

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Date

2022

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Volume Title

Publisher

Elsevier Ltd

Open Access Color

HYBRID

Green Open Access

Yes

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Top 1%
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Abstract

Cold ironing (CI) is an electrification alternative in the maritime sector used to reduce shipborne emissions by switching from fuel to electricity when a ship docks at a port. During the ship's berthing mode of operation, accurately estimating the berthing duration could assist the port operator to manage the berth allocation and energy scheduling optimally. However, the involvement of multiple input parameters with a large dataset requires a suitable handling method. Thus, this paper proposed a data-driven approach for ship berthing forecasting of cold ironing with various models such as artificial neural networks, multiple linear regression, random forest, decision tree, and extreme gradient boosting. Meanwhile, RMSE and MAE are two main indicators applied to assess forecasting accuracy. The simulation-based result shows that the artificial neural network outperforms all other models with the lowest error performance of RMSE (3.1343) and MAE (0.2548), suggesting its capability to handle nonlinearities in complex forecasting problems of port activity. The high accuracy of forecasting output in this study, which is berthing duration contributes to close estimation of two info: 1) CI power consumption and 2) departure time of the ship. This information is vital to the port operator to be used in the energy management system (EMS) as well as in the berth allocation problem (BAP). © 2022 The Author(s)

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Keywords

Cold ironing, Data-driven, Electrification, Emission, Forecasting, Ship transportation, Artificial neural network, Artificial intelligence, Environmental Engineering, Ocean Engineering, Port Efficiency, Operations research, Optimization of Container Terminal Operations and Logistics, Industrial and Manufacturing Engineering, Emission, Maritime Transportation, Shipping, Engineering, Decision tree, FOS: Mathematics, Data mining, Maritime Transportation Safety and Risk Analysis, Electrification, Statistics, FOS: Environmental engineering, data driven, Port (circuit theory), Computer science, Environmental Impact of Maritime Transportation Emissions, Energy consumption, Operations management, cold ironing, Electrical engineering, Environmental Science, Physical Sciences, Gradient boosting, Mean squared error, Ship Propulsion, ship transportation, Scheduling (production processes), Mathematics, Forecasting, Random forest

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Fields of Science

0211 other engineering and technologies, 02 engineering and technology, 0202 electrical engineering, electronic engineering, information engineering

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Q1

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Q1
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OpenCitations Citation Count
24

Source

Applied Energy

Volume

326

Issue

Start Page

119947

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Citations

CrossRef : 33

Scopus : 43

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Mendeley Readers : 79

SCOPUS™ Citations

43

checked on Feb 04, 2026

Web of Science™ Citations

37

checked on Feb 04, 2026

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