Leuser Journal of Environmental Studies
Vol. 1 No. 1 (2023): July 2023

TeutongNet: A Fine-Tuned Deep Learning Model for Improved Forest Fire Detection

Idroes, Ghazi Mauer (Unknown)
Maulana, Aga (Unknown)
Suhendra , Rivansyah (Unknown)
Lala, Andi (Unknown)
Karma, Taufiq (Unknown)
Kusumo, Fitranto (Unknown)
Hewindati, Yuni Tri (Unknown)
Noviandy, Teuku Rizky (Unknown)



Article Info

Publish Date
22 Jun 2023

Abstract

Forest fires have emerged as a significant threat to the environment, wildlife, and human lives, necessitating the development of effective early detection systems for firefighting and mitigation efforts. In this study, we introduce TeutongNet, a modified ResNet50V2 model designed to detect forest fires accurately. The model is trained on a curated dataset and evaluated using various metrics. Results show that TeutongNet achieves high accuracy (98.68%) with low false positive and false negative rates. The model's performance is further supported by the ROC curve analysis, which indicates a high degree of accuracy in classifying fire and non-fire images. TeutongNet demonstrates its effectiveness in reliable forest fire detection, providing valuable insights for improved fire management strategies.

Copyrights © 2023






Journal Info

Abbrev

ljes

Publisher

Subject

Agriculture, Biological Sciences & Forestry Earth & Planetary Sciences Energy Environmental Science Other

Description

Leuser Journal of Environmental Studies is a distinguished international, peer-reviewed scientific journal dedicated to advancing knowledge in the field of environmental studies. LJES aims to provide a platform for researchers, practitioners, and academics to publish their high-quality original ...