volume 18 issue 1

Wildfire CNN: An Enhanced Wildfire Detection Model Leveraging CNN and VIIRS in Indian Context

R Manoranjitham
S. Punitha
Vinayakumar Ravi
Stephan Thompson
Pradeep Ravi
Prabhishek Singh
Manoj Diwakar
Publication typeJournal Article
Publication date2024-10-29
scimago Q3
SJR0.273
CiteScore1.7
Impact factor
ISSN18741495
Abstract
Introduction

Wildfires are an unexpected global hazard that significantly impact environmental change. An accurate and affordable method of identifying and monitoring on wildfire areas is to use coarse spatial resolution sensors, such as the Moderate Resolution Imaging Spectroradiometer (MODIS) and Visible Infrared Imaging Radiometer Suite (VIIRS). Compared to MODIS, wildfire observations from VIIRS sensor data are around three times as extensive.

Objective

The traditional contextual wildfire detection method using VIIRS data mainly depends on the threshold value for classifying the fire or no fire which provides less performance for detecting wildfire areas and also fails in detecting small fires. In this paper, a wildfire detection method using Wildfiredetect Convolution Neural Network model is proposed for an effective wildfire detection and monitoring system using VIIRS data.

Methods

The proposed method uses the Convolutional Neural Network model and the study area dataset containing fire and non-fire spots is tested. The performance metrics such as recall rate, precision rate, omission error, commission error, F-measure and accuracy rate are considered for the model evaluation.

Results

The experimental analysis of the study area shows a 99.69% recall rate, 99.79% precision rate, 0.3% omission error, 0.2% commission error, 99.73% F-measure and 99.7% accuracy values for training data. The proposed method also proves to detect small fires in Alaska forest dataset for the testing data with 100% recall rate, 99.2% precision rate, 0% omission error, 0.7% commission error, 99.69% F-measure and 99.3% accuracy values. The proposed model achieves a 26.17% higher accuracy rate than the improved contextual algorithm.

Conclusion

The experimental findings demonstrate that the proposed model identifies small fires and works well with VIIRS data for wildfire detection and monitoring systems.

Found 

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Manoranjitham R. et al. Wildfire CNN: An Enhanced Wildfire Detection Model Leveraging CNN and VIIRS in Indian Context // Open Civil Engineering Journal. 2024. Vol. 18. No. 1.
GOST all authors (up to 50) Copy
Manoranjitham R., Punitha S., Ravi V., Thompson S., Ravi P., Singh P., Diwakar M. Wildfire CNN: An Enhanced Wildfire Detection Model Leveraging CNN and VIIRS in Indian Context // Open Civil Engineering Journal. 2024. Vol. 18. No. 1.
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TY - JOUR
DO - 10.2174/0118741495324737240722111958
UR - https://opencivilengineeringjournal.com/VOLUME/18/ELOCATOR/e18741495324737/
TI - Wildfire CNN: An Enhanced Wildfire Detection Model Leveraging CNN and VIIRS in Indian Context
T2 - Open Civil Engineering Journal
AU - Manoranjitham, R
AU - Punitha, S.
AU - Ravi, Vinayakumar
AU - Thompson, Stephan
AU - Ravi, Pradeep
AU - Singh, Prabhishek
AU - Diwakar, Manoj
PY - 2024
DA - 2024/10/29
PB - Bentham Science Publishers Ltd.
IS - 1
VL - 18
SN - 1874-1495
ER -
BibTex
Cite this
BibTex (up to 50 authors) Copy
@article{2024_Manoranjitham,
author = {R Manoranjitham and S. Punitha and Vinayakumar Ravi and Stephan Thompson and Pradeep Ravi and Prabhishek Singh and Manoj Diwakar},
title = {Wildfire CNN: An Enhanced Wildfire Detection Model Leveraging CNN and VIIRS in Indian Context},
journal = {Open Civil Engineering Journal},
year = {2024},
volume = {18},
publisher = {Bentham Science Publishers Ltd.},
month = {oct},
url = {https://opencivilengineeringjournal.com/VOLUME/18/ELOCATOR/e18741495324737/},
number = {1},
doi = {10.2174/0118741495324737240722111958}
}