BRAIN. Broad Research in Artificial Intelligence and Neuroscience

Volume: 17 | Issue: 2 |

Application of ConvLSTM Neural Networks in Forest Fire Early Warning Systems for Vietnam

Published June 3, 2026
Cite
Pham Thi Lien - Thai Nguyen University of Information and Communication Technology (VN), Nguyen Thu Huong - Thai Nguyen University of Information and Communication Technology, Viet Nam; MIREA – Russian Technological University, Moscow (RU), Nguyen The Long - Sao Do University, Hai Phong, Viet Nam; MIREA – Russian Technological University, Moscow (RU),

Abstract

Forest fires pose a significant threat to Viet Nam, particularly during the dry season. This study investigates a ConvLSTM-based deep learning architecture for early fire detection. Unlike single-frame or threshold-based methods, ConvLSTM jointly models spatial features (via convolutional layers) and temporal dependencies (via LSTM units). We utilize a publicly available dataset of 999 fire and non-fire images. To apply ConvLSTM to static images, we construct temporal sequences using a sliding window over augmented variants. The proposed model achieves 98.3% accuracy, 98.1% precision, 96.8% recall, and a 98.1% F1-score on the test set. These results are compared with standalone CNN and LSTM models. Limitations include the limited dataset size, class imbalance (75% fire images), and the lack of Viet Nam-specific data. Future work should focus on larger, region-specific datasets and real-time deployment on edge devices.

Academic discipline and sub-disciplines: Artificial Intelligence; Computer Vision; Environmental Science

DOI: http://dx.doi.org/10.70594/brain/17.2/7

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