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Ensemble transform Kalman filter (ETKF) for large-scale wildland fire spread simulation using FARSITE tool and state estimation method

机译:Ensemble转换卡尔曼滤波器(ETKF)用于使用Farsite工具和状态估计方法进行大型野火灭火仿真

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Ensemble transform Kalman filter (ETKF) is an extension of ensemble Kalman filter (EnKF), which avoids using "perturbed observations" to eliminate additional sampling errors. This paper demonstrates the capability of ETKF algorithm for sequentially correcting dynamically evolving fire perimeter positions at regular time intervals to enhance the prediction accuracy of wildfire spread. Forecast error covariance inflation scheme is adopted in the ETKF to address the underestimation problem of forecast error covariance of EnKF. Coupled to a widely-used fire spread simulator, FARSITE, the proposed approach is employed to a landscape with complex topography, where a fire barrier is also considered. The merits of ETKF algorithm for wildfire spread prediction are highlighted by simulation experiments using synthetically-generated observations. In order to quantitatively evaluate the prediction performance of ETKF, this paper has adopted a conservative index, Hausdorff distance, which is widely used in image processing area. This work is the first attempt of applying ETKF to wildfire spread simulation. The ETKF algorithm has been demonstrated to be more accurate than EnKF for a given ensemble size for wildfire spread simulation. The findings show that the ETKF-based data assimilation strategy is a promising tool for large-scale wildfire spread simulation.
机译:合奏变换卡尔曼滤波器(ETKF)是Ensemble Kalman滤波器(ENKF)的扩展,避免使用“扰动观察”来消除额外的采样错误。本文展示ETKF算法以规则间隔顺序校正动态演化的火周边位置,以增强野火扩散的预测精度。预测错误协方差通胀计划是通过etkf来解决ENKF预测误差协方差的低估问题。耦合到广泛使用的火灾扩散模拟器,不法,所提出的方法用于具有复杂地形的景观,其中也考虑了火灾障碍。通过使用综合生成的观察结果,通过模拟实验突出了野火扩频预测的ETKF算法的优点。为了定量评估ETKF的预测性能,本文采用了保守指标,广泛应用于图像处理区域。这项工作是第一次将ETKF应用于Wildfire扩展仿真的尝试。 ETKF算法已经证明比野火扩展模拟的给定集合尺寸更准确。调查结果表明,基于ETKF的数据同化策略是大规模野火蔓延模拟的有希望的工具。

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