Towards predictive data-driven simulations of wildfire spread – Part I: Reduced-cost Ensemble Kalman Filter based on a Polynomial Chaos surrogate model for parameter estimation
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Published:2014-11-10
Issue:11
Volume:14
Page:2951-2973
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ISSN:1684-9981
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Container-title:Natural Hazards and Earth System Sciences
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language:en
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Short-container-title:Nat. Hazards Earth Syst. Sci.
Author:
Rochoux M. C.ORCID, Ricci S., Lucor D., Cuenot B., Trouvé A.
Abstract
Abstract. This paper is the first part in a series of two articles and presents a data-driven wildfire simulator for forecasting wildfire spread scenarios, at a reduced computational cost that is consistent with operational systems. The prototype simulator features the following components: an Eulerian front propagation solver FIREFLY that adopts a regional-scale modeling viewpoint, treats wildfires as surface propagating fronts, and uses a description of the local rate of fire spread (ROS) as a function of environmental conditions based on Rothermel's model; a series of airborne-like observations of the fire front positions; and a data assimilation (DA) algorithm based on an ensemble Kalman filter (EnKF) for parameter estimation. This stochastic algorithm partly accounts for the nonlinearities between the input parameters of the semi-empirical ROS model and the fire front position, and is sequentially applied to provide a spatially uniform correction to wind and biomass fuel parameters as observations become available. A wildfire spread simulator combined with an ensemble-based DA algorithm is therefore a promising approach to reduce uncertainties in the forecast position of the fire front and to introduce a paradigm-shift in the wildfire emergency response. In order to reduce the computational cost of the EnKF algorithm, a surrogate model based on a polynomial chaos (PC) expansion is used in place of the forward model FIREFLY in the resulting hybrid PC-EnKF algorithm. The performance of EnKF and PC-EnKF is assessed on synthetically generated simple configurations of fire spread to provide valuable information and insight on the benefits of the PC-EnKF approach, as well as on a controlled grassland fire experiment. The results indicate that the proposed PC-EnKF algorithm features similar performance to the standard EnKF algorithm, but at a much reduced computational cost. In particular, the re-analysis and forecast skills of DA strongly relate to the spatial and temporal variability of the errors in the ROS model parameters.
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences
Reference89 articles.
1. Beezley, J. D., and Mandel, J.: Morphing Ensemble Kalman filters, Tellus A, 60, 131–140, https://doi.org/10.1111/j.1600-0870.2007.00275.x, 2008. 2. Birolleau, A., Poëtte, G., and Lucor, D.: Adaptive Bayesian inference for discontinuous inverse problems, application to hyperbolic conservation laws, Commun. Comput. Phys., 16, 1–34, 2014. 3. Blanchard, E. D., Sandu, A., and Sandu, C.: A polynomial chaos-based Kalman filter approach for parameter estimation of mechanical systems, J. Dyn. Sys., Meas., Control, 132, 061404, https://doi.org/10.1115/1.4002481, 2010. 4. Boé, J., Terray, L., Martin, E., and Habets, F.: Projected changes in components of the hydrological cycle in French river basins during the 21st century, Water Resour. Res., 45, W08426, https://doi.org/10.1029/2008WR007437, 2009. 5. Bouttier, F. and Courtier, P.: Data Assimilation Concepts and Methods, ECMWF, Meteorological Training Course Lecture Series, March 1999.
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