Towards Data Assimilation in Level-Set Wildfire Models Using Bayesian Filtering
The level-set method is a prominent approach to modelling the evolution of a fire over time based on a characterised rate of spread. It however does not provide a direct means for assimilating new data and quantifying uncertainty. Fire front predictions can be more accurate and agile if the models a...
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Zusammenfassung: | The level-set method is a prominent approach to modelling the evolution of a
fire over time based on a characterised rate of spread. It however does not
provide a direct means for assimilating new data and quantifying uncertainty.
Fire front predictions can be more accurate and agile if the models are able to
assimilate data in real time. Furthermore, uncertainty estimation of the
location and spread of the fire is critical for decision making. Using Bayesian
filtering approaches, we extend the level-set method to allow for data
assimilation and uncertainty quantification. We demonstrate these approaches on
data from a controlled fire. |
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DOI: | 10.48550/arxiv.2206.08501 |