A BAYESIAN SPATIO-TEMPORAL LEVEL SET DYNAMIC MODEL AND APPLICATION TO FIRE FRONT PROPAGATION

成果类型:
Article
署名作者:
Yoo, Myungsoo; Wikle, Christopher K.
署名单位:
University of Missouri System; University of Missouri Columbia
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/23-AOAS1794
发表日期:
2024
页码:
404-423
关键词:
wildfire spread simulations
摘要:
Intense wildfires impact nature, humans, and society, causing catastrophic damage to property and the ecosystem as well as the loss of life. Forecasting wildfire front propagation and understanding the behavior of wildfire propagation within a formal uncertainty quantification framework are essential in order to support fire fighting efforts and plan evacuations. The level set method has been widely used to analyze the change in surfaces, shapes, and boundaries. In particular, a signed distance function used in level set methods can readily be interpreted to represent complicated boundaries and their changes in time. While there is substantial literature on the level set method in wildfire applications, these implementations have relied on a heavily -parameterized formula for the rate of spread. These implementations have not typically considered uncertainty quantification, incorporated datadriven learning, nor summarized the effect of the environmental covariates. Here we present a Bayesian spatio-temporal dynamic model, based on level sets, which can be utilized for inference and forecasting the boundary of interest in the presence of uncertain data and lack of knowledge about the boundary velocity. The methodology relies on both a mechanistically -motivated dynamic model for level sets and a stochastic spatio-temporal dynamic model for the front velocity. We show the effectiveness of our method via simulation and with forecasting the fire front boundary evolution of two classic California megafires-the 2017-2018 Thomas fire and the 2017 Haypress fire.
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