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A Machine Learning based Approach for Wildfire Susceptibility Mapping. The Case Study of Liguria Region in Italy
[post]
2020
unpublished
Wildfire susceptibility maps display the wildfires occurrence probability, ranked from low to high, under a given environmental context. Current studies in this field often rely on expert knowledge, including or not statistical models allowing to assess the cause-effect correlation. Machine learning (ML) algorithms can perform very well and be more generalizable thanks to their capability of learning from and make predictions on data. Italy is highly affected by wildfires due to the high
doi:10.20944/preprints202001.0385.v1
fatcat:bfdr6mrvbfbbddwggd3gfwkjdu