B George, Mayowa and Onuh Ijiga, Matthew and Adeyemi, Oginni (2025) Enhancing Wildfire Prevention and Grassland Burning Management with Synthetic Data Generation Algorithms for Predictive Fire Danger Index Modeling. International Journal of Innovative Science and Research Technology, 10 (3): 25mar1859. pp. 1930-1944. ISSN 2456-2165

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Abstract

Wildfire prevention and effective grassland burning management rely heavily on accurate Fire Danger Index (FDI) modeling to predict and mitigate fire risks. However, the scarcity and inconsistency of real-world fire data pose significant challenges in developing robust predictive models. This study explores the integration of synthetic data generation algorithms with machine learning to enhance FDI modeling for improved wildfire risk assessment. By leveraging generative adversarial networks (GANs), variational autoencoders (VAEs), and physics-informed neural networks (PINNs), this research aims to generate high-fidelity synthetic fire data that simulate diverse environmental conditions, fuel moisture levels, and ignition patterns. The synthesized datasets augment real-world observations, enabling more accurate FDI computations and predictive analytics. Additionally, we assess the impact of synthetic data augmentation on deep learning- based fire spread simulations to improve early warning systems. The proposed approach enhances decision-making for wildfire prevention, controlled grassland burning, and resource allocation, ultimately contributing to more resilient fire management strategies. The findings highlight the potential of synthetic data-driven methodologies in addressing data limitations, optimizing FDI accuracy, and advancing predictive wildfire risk modeling.

Item Type: Article
Subjects: G Geography. Anthropology. Recreation > G Geography (General)
Divisions: Faculty of Engineering, Science and Mathematics > School of Geography
Depositing User: Editor IJISRT Publication
Date Deposited: 04 Apr 2025 11:29
Last Modified: 04 Apr 2025 11:29
URI: https://eprint.ijisrt.org/id/eprint/278

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