Data-Driven Wildfire Propagation Modeling with FARSITE-EnKF
Contribuinte(s) |
Trouve, Arnaud Digital Repository at the University of Maryland University of Maryland (College Park, Md.) Fire Protection Engineering |
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Data(s) |
07/09/2016
07/09/2016
2016
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Resumo |
The goal of this study is to provide a framework for future researchers to understand and use the FARSITE wildfire-forecasting model with data assimilation. Current wildfire models lack the ability to provide accurate prediction of fire front position faster than real-time. When FARSITE is coupled with a recursive ensemble filter, the data assimilation forecast method improves. The scope includes an explanation of the standalone FARSITE application, technical details on FARSITE integration with a parallel program coupler called OpenPALM, and a model demonstration of the FARSITE-Ensemble Kalman Filter software using the FireFlux I experiment by Craig Clements. The results show that the fire front forecast is improved with the proposed data-driven methodology than with the standalone FARSITE model. |
Identificador |
doi:10.13016/M2BN4T |
Idioma(s) |
en |
Palavras-Chave | #Engineering #Computer science #data assimilation #forecast #modeling #wildfire |
Tipo |
Thesis |