Machine Learning Methods and Synthetic Data Generation to Predict Large Wildfires

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Author
Pérez Porras, Fernando
Triviño Tarradas, Paula María
Cima-Rodríguez, Carmen
Meroño de Larriva, José Emilio
García-Ferrer Porras, Alfonso
Mesas Carrascosa, Francisco Javier
Publisher
MDPIDate
2021Subject
Imbalanced dataBurned area
Prediction large wildfire
Logistic regression
Multi-layer perceptron
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Wildfires are becoming more frequent in different parts of the globe, and the ability to predict when and where they will occur is a complex process. Identifying wildfire events with high probability of becoming a large wildfire is an important task for supporting initial attack planning. Different methods, including those that are physics-based, statistical, and based on machine learning (ML) are used in wildfire analysis. Among the whole, those based on machine learning are relatively novel. In addition, because the number of wildfires is much greater than the number of large wildfires, the dataset to be used in a ML model is imbalanced, resulting in overfitting or underfitting the results. In this manuscript, we propose to generate synthetic data from variables of interest together with ML models for the prediction of large wildfires. Specifically, five synthetic data generation methods have been evaluated, and their results are analyzed with four ML methods. The results yield an improvement in the prediction power when synthetic data are used, offering a new method to be taken into account in Decision Support Systems (DSS) when managing wildfires.