Short term forecasting of large scale wind-driven wildfires using thermal imaging and inverse modelling techniques
2014
A key factor in decision-making process during a wildfire incident is counting on the forecast of how the fire is
likely to behave in different fuels, weather conditions and terrain. Wildfire models and simulators attempt to
assist fire responders in gaining understanding of the fire behaviour. The main hurdle to overcome when
applying such technologies at operational level is the lack of a complete model that describes wildfire governing
physics and the trade-off between accuracy and computing time. A forecasting prediction must be delivered
within a positive lead time and current physical models are far beyond this requirement.
Inverse modelling and data assimilation techniques offer a great potential of operational applicability in
wildfires, coupling fire monitoring and fire behaviour forecast at real time. With this approach, a better
description of the processes simulated by the fire behaviour models can be achieved when adding real-state
information of the system, since discrepancies between simulated fire behaviour variables and observed
variables are minimized. The use of this approach accelerates fire simulations without loss of forecast accuracy.
In this paper we explore the adaptation to real fire scenarios of a synthetic-data-based inverse modelling
structure for fire behaviour forecast. Improvements are investigated to extrapolate the already existing algorithm
to real data assimilation from IR aerial monitoring. The technique explores elliptical Huygens expansion
coupled with simple -yet effective- semi-empirical wildfire models. The algorithm assimilates fire fronts
positions extracted from airborne thermal imaging and additional available data as wind speed and direction or
fuel characteristics. The invariants -set of governing parameters that are mutually independent and constant for
a significant amount of time- are resolved by means of forward model and linear tangent minimization.
The technique has been adapted to be employed in large-scale mallee-heath shrubland fires experiments
conducted in South Australia in 2008. Fires were filmed with a helicopter transported TIR camera. The IR
images were processed to obtain the position of the fire perimeter at a maximum frequency of one isochrone
every 10 seconds. The algorithm shows great capability to simulate fire fronts observations and opens the door
to keep developing a fully automatic data assimilation algorithm with forecasting capacity.
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