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Real-Time Forecasting of Building Fire Growth and Smoke Transport via Ensemble Kalman Filter

机译:通过集成卡尔曼滤波器实时预测建筑火灾和烟雾传播

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Forecasting building fire growth and smoke dispersion is a challenging task but can provide early warnings to first responders and building occupants and thus significantly benefit active building fire protection. Although existent computer simulation models may provide acceptable estimations of smoke temperature and quantity, most simulations are still not able to achieve real-time forecast of building fire due to high computational requirements, and/or simulation accuracy subject to users' inputs. This paper investigates one of the possibilities of using ensemble Kalman filter (EnKF), a statistical method utilizing the real-time sensor data from thermocouple trees in each room, to estimate the spread of an accidental building fire and further forecast smoke dispersion in real time. A general approach to forecasting building fire and smoke is outlined and demonstrated by a 1:5 scaled compartment fire experiment using a 1.0 kW to 2.8 kW propane burner as fire source. The results indicate that the EnKF method is able to forecast smoke transport in a multi-room building fire using 40 ensemble members and provide noticeable accuracy and lead time. Unlike other methods that directly use measurement data as model inputs, the developed model is able to statistically update model parameters to maintain the forecasting accuracy in real time. The results obtained from the model can be potentially applied to assist mechanical smoke removal, emergency evacuation and firefighting.
机译:预测建筑物的火灾增长和烟雾扩散是一项艰巨的任务,但可以向急救人员和建筑物占用者提供预警,从而显着受益于积极的建筑物防火。尽管现有的计算机仿真模型可以提供可接受的烟雾温度和烟雾数量估算,但是由于高计算要求和/或取决于用户输入的仿真精度,大多数仿真仍无法实现建筑物火灾的实时预测。本文研究了使用集成卡尔曼滤波器(EnKF)的一种可能性,这是一种统计方法,该方法利用来自每个房间的热电偶树的实时传感器数据来估计意外建筑火灾的蔓延并进一步实时预测烟雾扩散。 。通过使用1.0 kW至2.8 kW丙烷燃烧器作为火源的1:5比例缩放隔室火灾实验,概述并演示了预测建筑物火灾和烟雾的一般方法。结果表明,EnKF方法能够使用40个合奏成员预测多房间建筑火灾中的烟雾传播,并提供明显的准确性和提前期。与直接使用测量数据作为模型输入的其他方法不同,开发的模型能够统计更新模型参数以保持实时的预测准确性。从模型中获得的结果可以潜在地应用于辅助机械除烟,紧急疏散和消防。

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