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

被引:0
作者
Cheng-Chun Lin
Liangzhu (Leon) Wang
机构
[1] Concordia University,Department of Building, Civil and Environmental Engineering
来源
Fire Technology | 2017年 / 53卷
关键词
Data assimilation; Ensemble Kalman filter; Zone model; Real-time forecast; Sensor integration; Smoke transport;
D O I
暂无
中图分类号
学科分类号
摘要
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.
引用
收藏
页码:1101 / 1121
页数:20
相关论文
共 44 条
[1]  
Cowlard A(2010)Sensor assisted fire fighting Fire Technol 46 719-741
[2]  
Jahn W(2010)Comparison of FDS predictions by different combustion models with measured data for enclosure fires Fire Saf J 45 298-313
[3]  
Abecassis-Empis C(2010)Sensor-steered fire simulation Fire Saf J 45 193-205
[4]  
Rein G(2011)Forecasting fire growth using an inverse zone modelling approach Fire Safety J 46 81-88
[5]  
Torero JL(2012)Forecasting fire dynamics using inverse computational fluid dynamics and tangent linearisation Adv Eng Softw 47 114-126
[6]  
Yang D(2014)On the use of real-time video to forecast fire growth in enclosures Fire Technol 50 1021-1040
[7]  
Hu LH(2012)Characterizing heat release rates using an inverse fire modeling technique Fire Technol 48 893-909
[8]  
Jiang YQ(2014)Quantitative testing of fire scenario hypotheses: a bayesian inference approach Fire Technol 51 335-367
[9]  
Huo R(2015)A multi-observable approach to address the Ill-posed nature of inverse fire modeling problems Fire Technol 64 169-176
[10]  
Zhao XY(2013)Forecasting simulations of indoor environment using data assimilation via an Ensemble Kalman Filter Build Environ 7 25-32