Machine learning regression and classification methods for fog events prediction
Author
Castillo-Botón, Carlos
Casillas-Pérez, David
Casanova-Mateo, Carlos
Ghimire, Sujan
Cerro-Prada, Elena
Gutiérrez, Pedro A.
Deo, Ravinesh C.
Salcedo Sanz, S.
Publisher
ElsevierDate
2022Subject
Low-visibility eventsOrographic and hill-fogs
Classification problems
Regression problems
Machine Learning algorithms
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Atmospheric low-visibility events are usually associated with fog formation. Extreme low-visibility events deeply affect the air and ground transportation, airports and motor-road facilities causing accidents and traffic problems every year. Machine Learning (ML) algorithms have been successfully applied to many fog formation and low-visibility prediction problems. The associated problem can be formulated either as a regression or as a classification task, which has an impact on the type of ML approach to be used and on the quality of the predictions obtained. In this paper we carry out a complete analysis of low-visibility events prediction problems, formulated as both regression and classification problems. We discuss the performance of a large number of ML approaches in each type of problem, and evaluate their performance under a common comparison framework. According to the obtained results, we will provide indications on what the most efficient formulation is to tackle low-visibility predictions and the best performing ML approaches for low-visibility events prediction.