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- Title
Robust stacking-based ensemble learning model for forest fire detection.
- Authors
Akyol, K.
- Abstract
Forests reduce soil erosion and prevent drought, wind, and other natural disasters. Forest fires, which threaten millions of hectares of forest area yearly, destroy these precious resources. This study aims to design a deep learning model with high accuracy to intervene in forest fires at an early stage. A stacked-based ensemble learning model is proposed for fire detection from forest landscape images in this context. This model offers high test accuracies of 97.37%, 95.79%, and 95.79% with hold-out validation, fivefold cross-validation, and tenfold cross-validation experiments, respectively. The artificial intelligence model developed in this study could be used in real-time systems run on unmanned aerial vehicles to prevent potential disasters in forest areas. Block diagram of the proposed model
- Subjects
FOREST fires; FOREST fire prevention &; control; WILDFIRE prevention; NATURAL disasters; ARTIFICIAL intelligence; DRONE aircraft; BLOCK diagrams; SOIL erosion
- Publication
International Journal of Environmental Science & Technology (IJEST), 2023, Vol 20, Issue 12, p13245
- ISSN
1735-1472
- Publication type
Article
- DOI
10.1007/s13762-023-05194-z