Abstract

Recent studies have suggested that due to climate change, the number of wildfires across the globe have been increasing and continue to grow even more. The recent massive wildfires, which hit Australia during the 2019–2020 summer season, raised questions to what extent the risk of wildfires can be linked to various climate, environmental, topographical, and social factors and how to predict fire occurrences to take preventive measures. Hence, the main objective of this study was to develop an automatized and cloud-based workflow for generating a training dataset of fire events at a continental level using freely available remote sensing data with a reasonable computational expense for injecting into machine learning models. As a result, a data-driven model was set up in Google Earth Engine platform, which is publicly accessible and open for further adjustments. The training dataset was applied to different machine learning algorithms, i.e., Random Forest, Naïve Bayes, and Classification and Regression Tree. The findings show that Random Forest outperformed other algorithms and hence it was used further to explore the driving factors using variable importance analysis. The study indicates the probability of fire occurrences across Australia as well as identifies the potential driving factors of Australian wildfires for the 2019–2020 summer season. The methodical approach and achieved results and drawn conclusions can be of great importance to policymakers, environmentalists, and climate change researchers, among others.

Highlights

  • Australia was seriously affected by the fire events known as “Black Summer” during the 2019–2020 summer season [1]

  • The findings show that Random Forest outperformed other algorithms and it was used further to explore the driving factors using variable importance analysis

  • ResultsThe first section provides the results of the fire occurrence locations gathered from the Sentinel-2 mission and the FIRMS dataset

Read more

Summary

Introduction

Australia was seriously affected by the fire events known as “Black Summer” during the 2019–2020 summer season [1]. At least 46 million acres of land burnt [2] and “fires near me” became Google’s most searched words in Australia during that fire season [3]. This fire disaster has raised a vital question regarding to what extent the wildfires’ occurrence can be linked to various climate, environmental, and social factors. Human activities might be predominant rather than natural phenomena in wildfire ignition, as a recent study showed in Portugal [6].

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call