Litcius/Paper detail

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

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

2021Meteorological Applications63 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

Lightning (connector)Context (archaeology)Ignition systemLightning detectionAdaBoostEnvironmental scienceComputer scienceRandom forestDecision treeFlammabilityMeteorologyMachine learningSupport vector machineGeographyEngineeringThunderstormThermodynamicsPhysicsQuantum mechanicsAerospace engineeringArchaeologyPower (physics)Fire effects on ecosystemsLightning and Electromagnetic PhenomenaAtmospheric and Environmental Gas Dynamics