Predicting Large Wildfires in the Contiguous United States Using Deep Neural Networks Institutional Repository Document uri icon

abstract

  • Over the last several decades, large wildfires are increasingly common across the United States causing disproportionate impact on forest health and function, human well-being, and economy. Here, we examine the severity of large wildfires across the Contiguous United States over the past decade (2011-2020) using a wide array of meteorological, vegetational, and topographical features in the Deep Neural Network model. A total of 4,538 wildfire incidents were used in the analysis covering 87,305 square miles of burned area. We observed the highest number of large wildfires in California, Texas, and Idaho, with lightning causing 43 % of these incidents. Importantly, results indicate that the severity of wildfire occurrences is highly correlated with the climatological forcings, land cover, location, and elevation of the ecosystem. Overall, results may serve useful guide in managing landscapes under changing climate and disturbance regimes.

author list (cited authors)

  • Dhal, S. B., Jain, S., Gadepally, K. C., Vijaykumar, P., Sharma, B. H., Acharya, B. S., Nowka, K., & Kalafatis, S.

complete list of authors

  • Dhal, Sambandh Bhusan||Jain, Shubham||Gadepally, Krishna Chaitanya||Vijaykumar, Prathik||Sharma, Bhavesh Hariom||Acharya, Bharat Sharma||Nowka, Kevin||Kalafatis, Stavros

Book Title

  • Preprints.org

publication date

  • May 2023