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Evaluation of Machine Learning and Deep Learning Algorithms for Fire Prediction in Southeast AsiaVegetation fires are prevalent in South/Southeast Asian countries, making fire prediction crucial due to their potential environmental, economic, and social impacts. Accurate predictions of fires facilitate timely interventions, helping to mitigate uncontrolled fires that can lead to biodiversity loss and air quality issues. In this study, we utilize VIIRS satellite-derived fire data alongside six machine learning and deep learning models—Simple Persistence, Multi-Layer Perceptron (MLP), Convolutional Neural Network (CNN), Long Short-Term Memory (LSTM), CNN-LSTM, and ConvLSTM—to determine the most effective fire prediction model, using Root Mean Square Error (RMSE) as the metric. Our results indicate that the CNN model is the most reliable in regions with spatial dependencies, such as Brunei, Indonesia, Malaysia, the Philippines, Timor-Leste, and Thailand. Conversely, the ConvLSTM model excels in countries with complex spatiotemporal dynamics like Laos, Myanmar, and Vietnam. The CNN-LSTM hybrid model also performed well in Cambodia, suggesting a need for a balanced approach in areas requiring both spatial and temporal feature extraction. Furthermore, simpler models like Persistence and MLP showed limitations in capturing dynamic patterns and temporal dependencies. Our findings highlight the importance of evaluating models before implementing any decision support systems (DSS) in fire management. By tailoring models to specific regional fire data, we can enhance prediction accuracy and responsiveness, ultimately improving fire risk management in Southeast Asia and beyond.
Document ID
20240014552
Acquisition Source
Marshall Space Flight Center
Document Type
Preprint (Draft being sent to journal)
Authors
Aditya Eaturu
(University of Alabama in Huntsville Huntsville, United States)
Krishna Prasad Vadrevu
(Marshall Space Flight Center Redstone Arsenal, United States)
Date Acquired
November 15, 2024
Publication Date
December 1, 2024
Publication Information
Publication: Nature Scientific Reports
Publisher: Nature Journals
ISSN: 2045-2322
URL: https://www.nature.com/srep/
Subject Category
Meteorology and Climatology
Computer Programming and Software
Earth Resources and Remote Sensing
Funding Number(s)
WBS: SCEX22023D
Distribution Limits
Public
Copyright
Public Use Permitted.
Keywords
Deep learning
Machine learning
forecasting
Fires
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