LGAICVNov 1, 2022

Deep Learning for Global Wildfire Forecasting

arXiv:2211.00534v321 citationsh-index: 53
AI Analysis

This work addresses the problem of anticipating wildfires globally for climate change mitigation, though it is incremental as it builds on existing deep learning methods for a new application.

The authors tackled global wildfire forecasting by creating a global fire dataset and using deep learning segmentation models to predict burned areas up to 64 days ahead, demonstrating a prototype with sub-seasonal predictions.

Climate change is expected to aggravate wildfire activity through the exacerbation of fire weather. Improving our capabilities to anticipate wildfires on a global scale is of uttermost importance for mitigating their negative effects. In this work, we create a global fire dataset and demonstrate a prototype for predicting the presence of global burned areas on a sub-seasonal scale with the use of segmentation deep learning models. Particularly, we present an open-access global analysis-ready datacube, which contains a variety of variables related to the seasonal and sub-seasonal fire drivers (climate, vegetation, oceanic indices, human-related variables), as well as the historical burned areas and wildfire emissions for 2001-2021. We train a deep learning model, which treats global wildfire forecasting as an image segmentation task and skillfully predicts the presence of burned areas 8, 16, 32 and 64 days ahead of time. Our work motivates the use of deep learning for global burned area forecasting and paves the way towards improved anticipation of global wildfire patterns.

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