Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/108250
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Title: Super real-time forecast of wildland fire spread by a dual-model deep learning method
Authors: Li, YZ 
Wang, ZL 
Huang, XY 
Issue Date: Mar-2024
Source: Journal of environmental informatics, Mar. 2024, v. 43, no. 1,
Abstract: Driven by climate change, more frequent and extreme wildfires have brought a greater threat to humans globally. Fastspreading wildfires endanger the safety of residents in the wildland-urban interface. To mitigate the hazards of wildfires and facilitate early evacuation, a rapid and accurate forecast of wildfire spread is critical in emergency response. This study proposes a novel dualmodel deep learning approach to achieve a super real-time forecast of 2-dimensional wildfire spread in different scenarios. The first model utilizes the U-Net technique to predict the burnt area up to 5 hours in advance. The second model incorporates ConvLSTM layers to refine the forecasted results based on real-time updated input data. To evaluate the effectiveness of this methodology, we applied it to Sunshine Island, Hong Kong, and generated a numerical database consisting of 210 cases (12,600 samples) to train the deep learning models. The simulated wildfire spread database has a fine resolution of 5 m and a time step of 5 minutes. Results show that both models achieve an overall agreement of over 90% between numerical simulation and AI forecast. The real-time wildfire forecasts by AI only take a few seconds, which is 102 ~ 104 times faster than direct simulations. Our findings demonstrate the potential of AI in offering fast and high-resolution forecasts of wildfire spread, and the novel contribution is to leverage two models which can work in tandem and be utilized at various stages of wildfire management.
Keywords: Wildfire prediction
Artificial intelligence
Fire modelling
Wildland-urban interface
Prescribed burning
Smart firefighting
Publisher: International Society for Environmental Information Sciences
Journal: Journal of environmental informatics 
ISSN: 1726-2135
EISSN: 1684-8799
DOI: 10.3808/jei.202400509
Rights: Copyright © 2024 ISEIS. All rights reserved
Posted with permission of the publisher.
Appears in Collections:Journal/Magazine Article

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