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Evaluation of machine learning techniques to select marine oil spill response methods under small-sized dataset conditions.

Authors :
Mohammadiun, Saeed
Hu, Guangji
Gharahbagh, Abdorreza Alavi
Li, Jianbing
Hewage, Kasun
Sadiq, Rehan
Source :
Journal of Hazardous Materials. Aug2022, Vol. 436, pN.PAG-N.PAG. 1p.
Publication Year :
2022

Abstract

Oil spill incidents can significantly impact marine ecosystems in Arctic/subarctic areas. Low biodegradation rate, harsh environments, remoteness, and lack of sufficient response infrastructure make those cold waters more susceptible to the impacts of oil spills. A major challenge in Arctic/subarctic areas is to timely select suitable oil spill response methods (OSRMs), concerning the process complexity and insufficient data for decision analysis. In this study, we used various regression-based machine learning techniques, including artificial neural networks (ANNs), Gaussian process regression (GPR), and support vector regression, to develop decision-support models for OSRM selection. Using a small hypothetical oil spill dataset, the modelling performance was thoroughly compared to find techniques working well under data constraints. The regression-based machine learning models were also compared with integrated and optimized fuzzy decision trees models (OFDTs) previously developed by the authors. OFDTs and GPR outperformed other techniques considering prediction power (> 30 % accuracy enhancement). Also, the use of the Bayesian regularization algorithm enhanced the performance of ANNs by reducing their sensitivity to the size of the training dataset (e.g., 29 % accuracy enhancement compared to an unregularized ANN). [Display omitted] • Machine learning-based models are developed for effective response selection. • Models' performance is compared on a hypothetical oil spill dataset in the Arctic. • The best-performing models suited for small training datasets are selected. • Optimized fuzzy decision trees and Gaussian process regression models outperformed. • Recommendations are provided to prevent models' overtraining on small datasets. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03043894
Volume :
436
Database :
Academic Search Index
Journal :
Journal of Hazardous Materials
Publication Type :
Academic Journal
Accession number :
157522789
Full Text :
https://doi.org/10.1016/j.jhazmat.2022.129282