Articles | Volume 5, issue 1
https://doi.org/10.5194/ascmo-5-57-2019
https://doi.org/10.5194/ascmo-5-57-2019
16 Apr 2019
 | 16 Apr 2019

Fitting a stochastic fire spread model to data

X. Joey Wang, John R. J. Thompson, W. John Braun, and Douglas G. Woolford

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Cited articles

Albert-Green, A., Dean, C. B., Martell, D. L., and Woolford, D. G.: A methodology for investigating trends in changes in the timing of the fire season with applications to lightning-caused forest fires in Alberta and Ontario, Canada, Can. J. Forest Res., 43, 39–45, 2012. 
Anderson, K., Reuter, G., and Flannigan, M.: Fire-growth modeling using meteorological data with random and systematic perturbations, Int. J. Wildland Fire, 16, 174–182, 2007. 
Boychuk, D., Braun, W. J., Kulperger, R. J., Krougly, Z. L., and Stanford, D. A.: A stochastic model for forest fire growth, INFOR, 45, 9–16, 2007. 
Braun, W. J. and Kulperger, R. J.: Differential equations for moments of an Interacting particle process on a lattice, J. Math. Biol., 31, 199–214, 1993. 
Braun, W. J. and Woolford, D. G.: Assessing a stochastic fire spread simulator, J. Environ. Inform., 22, 1–12, 2013. 
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Short summary
This paper presents the analysis of data from small-scale laboratory experimental smouldering fires that were digitally video-recorded. The video images of these fires bear a resemblance to remotely sensed images of wildfires and provide an opportunity to fit and assess a spatial model for fire spread that attempts to account for uncertainty in fire growth. We found that the fitting method is feasible, and the spatial model provides a suitable mathematical for the fire spread process.