An eXplainable Artificial Intelligence framework to predict marine scrubbers performances
An eXplainable Artificial Intelligence framework to predict marine scrubbers performances
Venue & metadata
- Journal/Proceedings: Engineering Applications of Artificial Intelligence
- Volume: 160
- Note: Cited by: 0
- Author keywords: CatBoost regression model; Chemical engineering; Explainable Artificial Intelligence; Marine scrubbers; SHapley Additive Explanations method; Sulfur dioxide removal
Abstract
This study presents an eXplainable Artificial Intelligence (XAI) framework to predict the performance of marine scrubbers used for sulfur dioxide (SO2) removal from marine diesel engine flue gases. Using an aggregated dataset from a roll-on/roll-off (Ro-Ro) cargo ship equipped with an open-loop scrubber, combined with satellite data, the study constructs and evaluates multiple artificial intelligence models, including ensemble models, which were benchmarked against each other using standard regression metrics such as the coefficient of determination (R2), mean absolute error (MAE), and mean squared error (MSE). Results achieve high accuracy R2>0.92 and offer insights for optimizing scrubber operations. Nevertheless, artificial intelligence models lack transparency. To overcome this problem, this research integrates post-hoc explainability techniques to elucidate the contributions of various features to model predictions, thereby enhancing interpretability and reliability. The integration of SHapley Additive exPlanations (SHAP) and Explain Like I’m 5 (ELI5) not only confirmed the consistency of feature importance rankings (e.g. seawater acidity level, SO2 inlet concentration, outlet temperature) but also aligned with the physical-chemical principles of SO2 absorption. Quantitative comparisons with theoretical expectations demonstrated the reliability of the XAI insights, enhancing both model transparency and interpretability. This can improve the current capability of designing scrubber units by defining more efficient and less expensive options for environmental regulation compliance. © 2025 The Authors
Keywords
Additives GS Diesel engines GS Marine engines GS Regression analysis GS Regulatory compliance GS Ships GS Sulfur dioxide GS Transparency GS Catboost regression model GS Explainable artificial intelligence GS Intelligence models GS Marine scrubber GS Performance GS Regression modelling GS Shapley GS Shapley additive explanation method GS SO 2 GS Sulphur dioxide removal GS Mean square error GS Scrubbers GS
Links & artifacts
Suggested citation
Di Bonito, L. P., Campanile, L., Iacono, M., & Di Natale, F. (2025). An eXplainable Artificial Intelligence framework to predict marine scrubbers performances [Article]. Engineering Applications of Artificial Intelligence, 160. https://doi.org/10.1016/j.engappai.2025.111860