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Model Considerations for Fire Scene Reconstruction Using a Bayesian Framework

机译:使用贝叶斯框架的火灾场景重建模型考虑因素

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摘要

Towards the development of a more rigorous approach for coupling collected fire scene data to computational tools, a Bayesian computational strategy is presented in this work. The Bayesian inversion technique is exercised on synthetic, time-integrated data to invert for the location, size, and time-to-peak of an unknown fire using two well-known forward models; Consolidated Model of Fire and Smoke Transport (CFAST) and Fire Dynamics Simulator (FDS). A Gaussian process surrogate model was fit to coarse FDS simulations to facilitate Markov Chain Monte Carlo sampling. The inversion framework was able to predict the total energy release by all fire cases except for one CFAST forward model, a 1000 kW steady fire. It was found that insufficient information was available in the time-integrated data to distinguish the temporal variations in peak times. FDS performed better than CFAST in predicting the maximum energy release rate with the posterior mean of the best configurations being 0.05% and 2.77% of the true values respectively. Both models performed equally well on locating the fire in a compartment.
机译:为了开发更严格的耦合收集的火灾场景数据到计算工具的方法,在这项工作中介绍了贝叶斯计算策略。贝叶斯反演技术在合成,时间综合数据上进行,以使用两个众所周知的前进模型反转未知火灾的位置,尺寸和时间到高峰;综合火灾模型和烟雾运输(CFast)和消防动力学模拟器(FDS)。高斯过程代理模型适合粗略的FDS模拟,以促进马尔可夫链蒙特卡罗采样。反转框架能够预测所有消防案例的总能源释放,除了一个CFast前进模型,1000 kW稳定的火灾。发现信息不足,在时间集成数据中可用,以区分高峰时间的时间变化。 FDS比Cfast更好地执行,在预测最大配置的最大能量释放速率时,最佳配置的最大释放速率分别为0.05%和2.77%的真实值。两种型号在将火灾中定位在隔室中同样好。

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