Applying a Dynamic Data Driven Genetic Algorithm to Improve Forest Fire Spread Prediction
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چکیده
This work represents the first step toward a DDDAS for Wildland Fire Prediction where our main efforts are oriented to take advantage of the computing power provided by High Performance Computing systems to, on the one hand, propose computational data driven steering strategies to overcome input data uncertainty and, on the other hand, to reduce the execution time of the whole prediction process in order to be reliable during real-time crisis. In particular, this work is focused on the description of a Dynamic Data Driven Genetic Algorithm used as steering strategy to automatic adjust certain input data values of forest fire simulators taking into account the underlying propagation model and the real fire behavior.
منابع مشابه
Scalability Analysis of a Parallel Dynamic Data Driven Genetic Algorithm for Forest Fire Spread Prediction∗
This work presents a performance study of a Parallel Dynamic Data Driven Genetic Algorithm (Parallel DDDGA) for Forest Fire Prediction. The main objective is to obtain a trade off between prediction quality and the time incurred in that prediction. For this purpose, High Performance Computing is applied to exploit the parallel features of the proposed parallel DDDGA. A framework was developed, ...
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تاریخ انتشار 2008