Journal
NATURAL HAZARDS
Volume 110, Issue 2, Pages 899-935Publisher
SPRINGER
DOI: 10.1007/s11069-021-04973-6
Keywords
Forest fire; Prediction map; Algorithm; Statistical learning; GIS
Funding
- NASA Headquarters
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This study analyzed 15 environmental features to prepare a wildfire likelihood map of Sikkim Himalaya and compared the efficiency of machine learning methods for wildfire prediction. The results show that Random Forest outperformed other methods in predicting wildfires, with factors like average temperature, average wind speed, proximity to roadways and tree cover percentage being the most important determinants of wildfires in the region.
Wildfires in limited extent and intensity can be a boon for the forest ecosystem. However, recent episodes of wildfires of 2019 in Australia and Brazil are sad reminders of their heavy ecological and economical costs. Understanding the role of environmental factors in the likelihood of wildfires in a spatial context would be instrumental in mitigating it. In this study, 15 environmental features encompassing meteorological, topographical, ecological, in situ and anthropogenic factors have been considered for preparing the wildfire likelihood map of Sikkim Himalaya. A comparative study on the efficiency of machine learning methods like Generalized Linear Model, Support Vector Machine, Random Forest (RF) and Gradient Boosting Model (GBM) has been performed to identify the best performing algorithm in wildfire prediction. The study indicates that all the machine learning methods are good at predicting wildfires. However, RF has outperformed, followed by GBM in the prediction. Also, environmental features like average temperature, average wind speed, proximity to roadways and tree cover percentage are the most important determinants of wildfires in Sikkim Himalaya. This study can be considered as a decision support tool for preparedness, efficient resource allocation and sensitization of people towards mitigation of wildfires in Sikkim.
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