Meteorological Applications (Jan 2021)

Using machine learning to predict fire‐ignition occurrences from lightning forecasts

  • Ruth Coughlan,
  • Francesca Di Giuseppe,
  • Claudia Vitolo,
  • Christopher Barnard,
  • Philippe Lopez,
  • Matthias Drusch

DOI
https://doi.org/10.1002/met.1973
Journal volume & issue
Vol. 28, no. 1
pp. n/a – n/a

Abstract

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Abstract Lightning‐caused wildfires are a significant contributor to burned areas, with lightning ignitions remaining one of the most unpredictable aspects of the fire environment. There is a clear connection between fuel moisture and the probability of ignition; however, the mechanisms are poorly understood and predictive methods are underdeveloped. Establishing a lightning–ignition relationship would be useful in developing a model that would complement early warning systems designed for fire control and prevention. A machine learning (ML) approach was used to define a predictive model for wildfire ignition based on lightning forecasts and environmental conditions. Three different binary classifiers were adopted: a decision tree, an AdaBoost and a Random Forest, showing promising results, with both ensemble methods (Random Forest and AdaBoost) exhibiting an out‐of‐sample accuracy of 78%. Data provided by a Western Australia wildfire database allowed a comprehensive verification on over 145 lightning‐ignited wildfires in regions of Australia during 2016. This highlighted that in a minimum of 71% of the cases the ML models correctly predicted the occurrence of an ignition when a fire was actually initiated. The super‐learner developed is planned to be used in an operational context to the enhance information connected to fire management.

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