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Original scientific paper

https://doi.org/10.21278/brod76405

Explainable machine learning-based prediction of fuel consumption in ship main engines using operational data

Anh Tuan Hoang ; Faculty of Engineering, Dong Nai Technology University, Bien Hoa City, Vietnam
Thi Anh Em Bui ; Institute of Engineering, HUTECH University, Ho Chi Minh City, Vietnam
Xuan Phuong Nguyen ; PATET Research Group, Ho Chi Minh City University of Transport, Ho Chi Minh City, Vietnam
Van Hung Bui ; University of Technology and Education, The University of Danang, Danang, Vietnam
Quang Chien Nguyen ; Institute of Research and Development, Duy Tan University, Da Nang, Vietnam
Thanh Hai Truong ; PATET Research Group, Ho Chi Minh City University of Transport, Ho Chi Minh City, Vietnam
Nghia Chung ; Institute of Maritime, Ho Chi Minh City University of Transport, Ho Chi Minh City, Vietnam


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Abstract

A significant percentage of fuel consumption and emissions from transportation activities is related to maritime transportation. Hence, accurate prediction models for fuel consumption are quite important. Machine learning offers a data-driven approach to improving fuel consumption prediction, thereby promoting environmental sustainability, lowering operational costs, and enhancing financial viability. This work explores several machine learning approaches by employing statistical measures, including mean squared error (MSE), coefficient of determination (R²), and Kling-Gupta efficiency (KGE), to develop main engine fuel consumption (MEFC) prediction models. Hyperparameter optimization via grid search was conducted to improve the generalizability and robustness of the models. With the lowest test MSE (0.69), a robust testing R² (0.9867), and a high KGE (0.9681), the Random Forests proved to be the most appropriate model for MEFC modeling among all others. Extreme Gradient Boosting followed closely with competitive accuracy, with MSE values of 0.75 and a robust testing R² (0.9856). Using Shapley additive explanations and Local interpretable model-agnostic explanations, this study improves model interpretability even more and indicates that main engine speed and wind speed were revealed to be the most important factors controlling MEFC. Explainable artificial intelligence techniques offer transparency in decision-making, thereby helping marine operators maximize fuel economy. Employing reliable and interpretable predictive modeling, this study offers insightful information for sustainable shipping, hence lowering operating costs and emissions.

Keywords

Ship fuel consumption; prediction model; local interpretable model-agnostic explanations; shapley additive explanations; explainable artificial intelligence

Hrčak ID:

334956

URI

https://hrcak.srce.hr/334956

Publication date:

1.10.2025.

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