AO-PHJan 15, 2009
Data Assimilation for Wildland Fires: Ensemble Kalman filters in coupled atmosphere-surface modelsJan Mandel, Jonathan D. Beezley, Janice L. Coen et al.
Two wildland fire models are described, one based on reaction-diffusion-convection partial differential equations, and one based on semi-empirical fire spread by the level let method. The level set method model is coupled with the Weather Research and Forecasting (WRF) atmospheric model. The regularized and the morphing ensemble Kalman filter are used for data assimilation.
NAJan 15, 2008
A wildland fire model with data assimilationJan Mandel, Lynn S. Bennethum, Jonathan D. Beezley et al.
A wildfire model is formulated based on balance equations for energy and fuel, where the fuel loss due to combustion corresponds to the fuel reaction rate. The resulting coupled partial differential equations have coefficients that can be approximated from prior measurements of wildfires. An ensemble Kalman filter technique with regularization is then used to assimilate temperatures measured at selected points into running wildfire simulations. The assimilation technique is able to modify the simulations to track the measurements correctly even if the simulations were started with an erroneous ignition location that is quite far away from the correct one.