Spatial analysis and machine learning prediction of forest fire susceptibility: a comprehensive approach for effective management and mitigation
Manoranjan Mishra(Fakir Mohan University), FX Anjar Tri Laksono(Jenderal Soedirman University), Celso Augusto Guimarães Santos(Universidade Federal da Paraíba), Rajkumar Guria(Fakir Mohan University), Ambika Prasad Nanda(Tata Steel (India)), Richarde Marques da Silva(Universidade Federal da Paraíba), Biswaranjan Baraj(Fakir Mohan University)
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