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Fire spread estimation on forest wildfire using ensemble kalman filter

机译:使用集合Kalman滤波器的森林野火的火传播估计

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Wildfire is one of the most frequent disasters in the world, for example forest wildfire, causing population of forest decrease. Forest wildfire, whether naturally occurring or prescribed, are potential risks for ecosystems and human settlements. These risks can be managed by monitoring the weather, prescribing fires to limit available fuel, and creating firebreaks. With computer simulations we can predict and explore how fires may spread. The model of fire spread on forest wildfire was established to determine the fire properties. The fire spread model is prepared based on the equation of the diffusion reaction model. There are many methods to estimate the spread of fire. The Kalman Filter Ensemble Method is a modified estimation method of the Kalman Filter algorithm that can be used to estimate linear and non-linear system models. In this research will apply Ensemble Kalman Filter (EnKF) method to estimate the spread of fire on forest wildfire. Before applying the EnKF method, the fire spread model will be discreted using finite difference method. At the end, the analysis obtained illustrated by numerical simulation using software. The simulation results show that the Ensemble Kalman Filter method is closer to the system model when the ensemble value is greater, while the covariance value of the system model and the smaller the measurement.
机译:野火是世界上最常见的灾难之一,例如森林野火,导致森林人口减少。无论是自然发生还是规定的森林野火都是生态系统和人类住区的潜在风险。这些风险可以通过监测天气,处方火灾来限制可用燃料,并创建防火率来管理。通过计算机模拟,我们可以预测和探索如何传播的火灾。建立了在森林野火上传播火灾模型,以确定火灾特性。基于扩散反应模型的等式制备火涂抹模型。有许多方法来估计火的传播。 Kalman滤波器集合方法是卡尔曼滤波器算法的修改估计方法,可用于估计线性和非线性系统模型。在这项研究中,将应用Ensemble Kalman滤波器(ENKF)方法来估算森林野火的火灾传播。在应用ENKF方法之前,将使用有限差分法离散火力扩展模型。最后,通过使用软件进行数值模拟来说明的分析。仿真结果表明,当集成值更大时,集合卡尔曼滤波方法更接近系统模型,而系统模型的协方差值较小,测量越小。

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