TITLE:
A Survey of the Machine Learning Models for Forest Fire Prediction and Detection
AUTHORS:
Prathibha Sobha, Shahram Latifi
KEYWORDS:
AI, Computer Vision, Deep Learning, Forest Fires, ML, UAV
JOURNAL NAME:
International Journal of Communications, Network and System Sciences,
Vol.16 No.7,
July
27,
2023
ABSTRACT: Forest fires are a significant threat to the environment, causing ecological damage, economic losses, and posing a threat to human life. Hence, timely detection and prevention of forest fires are critical to minimizing their impact. In this paper, we review the current state-of-the-art methods in forest fire detection and prevention using predictions based on weather conditions and predictions based on forest fire history. In particular, we discuss different Machine Learning (ML) models that have been used for forest fire detection. Further, we present the challenges faced when implementing the ML-based forest fire detection and prevention systems, such as data availability, model prediction errors and processing speed. Finally, we discuss how recent advances in Deep Learning (DL) can be utilized to improve the performance of current fire detection systems.