Litcius/Paper detail

Wildfire Susceptibility Mapping Using Five Boosting Machine Learning Algorithms: The Case Study of the Mediterranean Region of Turkey

Sohaib K. M. Abujayyab, Moustafa Moufid Kassem, Ashfaq Ahmad Khan, Raniyah Wazirali, Mücahit Coşkun, Enes Taşoğlu, Ahmet Öztürk, Ferhat TOPRAK

2022Advances in Civil Engineering42 citationsDOIOpen Access PDF

Abstract

Forest fires caused by different environmental and human factors are responsible for the extensive destruction of natural and economic resources. Modern machine learning techniques have become popular in developing very accurate and precise susceptibility maps of various natural disasters to help reduce the occurrence of such calamities. The present study has applied and tested multiple algorithms to map the areas susceptible to wildfire in the Mediterranean Region of Turkey. Besides, the performance of XGBoost, CatBoost, Gradient Boost, AdaBoost, and LightGBM methods for wildfire susceptibility mapping is also examined. The results have revealed the higher testing accuracy of CatBoost (95.47%) algorithm, followed by LightGBM (94.70%), XGBoost (88.8%), AdaBoost (86.0%), and GBM (84.48%) algorithms. Resultant wildfire susceptibility maps provide proper inventories for forest engineers, planners, and local governments for future policies regarding disaster management in Turkey.

Topics & Concepts

AdaBoostBoosting (machine learning)Gradient boostingMediterranean climateComputer scienceNatural disasterArtificial intelligenceAlgorithmMachine learningRandom forestGeographySupport vector machineMeteorologyArchaeologyFire effects on ecosystemsLandslides and related hazardsSpecies Distribution and Climate Change