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State-parameter estimation approach for data-driven wildland fire spread modeling: Application to the 2012 RxCADRE S5 field-scale experiment

机译:数据驱动威胁火灾扩展建模的状态参数估计方法:应用于2012 rxcadre S5现场规模实验

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摘要

Data assimilation is an emerging and powerful tool towards real-time flame front monitoring for wildland fire applications. The key idea is to regularly update the state and/or parameters of a fire spread model using observed firelines in order to improve a forecast on future fire locations. The merits of combining state estimation and parameter estimation through a hybrid state-parameter estimation algorithm are demonstrated through the 2012 RxCADRE S5 field-scale controlled burn experiment. For state estimation, we adopt a cost-effective Luenberger observer formulation to reconstruct a complete view of the burning state at a given time. For parameter estimation, we use an ensemble transform Kalman filter to solve the inverse modeling problem consisting of inferring more realistic wind conditions given observations of the actual burning state. The data driven model relies on a front shape similarity measure derived from image segmentation theory to quantify position errors. We show that the hybrid approach provides an efficient framework to address all sources of model uncertainties and to select burning scenarios that are most likely to occur. Parameter estimation is a key component of the data-driven model by reducing model bias. Using the fire spread model in forecast mode is then an asset to accurately track the flame front dynamics at future lead times.
机译:数据同化是对荒地防火应用的实时火焰前线监控的新兴和强大的工具。关键的想法是定期使用观察到的FireCelines更新火传播模型的状态和/或参数,以改善未来火灾位置的预测。通过混合状态参数估计算法组合状态估计和参数估计的优点是通过2012 RXCadre S5场刻度控制烧伤实验进行了演示。对于国家估算,我们采用了经济高效的Luenberger观察者制定,以在给定时间重建燃烧状态的完整视图。对于参数估计,我们使用集合变换卡尔曼滤波器来解决方案,该问题包括推断更现实的风力条件,给出了实际燃烧状态的观察。数据驱动模型依赖于从图像分割理论导出的前形状相似度测量来量化位置误差。我们表明混合方法提供了一种有效的框架来解决所有模型不确定性的来源,并选择最有可能发生的刻录方案。参数估计是通过减少模型偏压来数据驱动模型的关键组件。在预测模式下使用火力扩展模型是一种资产,可以在未来的转速时间准确地跟踪火焰前部动态。

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