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Stochastic reconstruction of multiple source atmospheric contaminant dispersion events

机译:多源大气污染物扩散事件的随机重建

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摘要

Reconstruction of intentional or accidental release of contaminants into the atmosphere using concentration measurements from a sensor network constitutes an inverse problem. An added complexity arises when the contaminant is released from multiple sources. Determining the correct number of sources is critical because an incorrect estimation could mislead and delay response efforts. We present a Bayesian inference method coupled with a composite ranking system to reconstruct multiple source contaminant release events. Our approach uses a multi-source data-driven Gaussian plume model as the forward model to predict the concentrations at sensor locations. Bayesian inference with Markov chain Monte Carlo (MCMC) sampling is then used to infer model parameters within minutes on a conventional processor. The composite ranking system enables the estimation of the number of sources involved in a release event. The ranking formula allows plume model results to be evaluated based on a combination of error (scatter), bias, and correlation components. We use the 2007 FUSION Field Trial concentration data resulting from near-ground-level sources to test the multi-source event reconstruction tool (MERT). We demonstrate successful reconstructions of source parameters, as well as the number of sources involved in a release event with as many as three sources.
机译:使用来自传感器网络的浓度测量来重建污染物有意或无意地释放到大气中是一个反问题。当污染物从多种来源释放时,会增加复杂性。确定正确的来源数量至关重要,因为错误的估算可能会误导并延误响应工作。我们提出了一种贝叶斯推断方法,并结合了一个综合排名系统,以重构多个污染源释放事件。我们的方法使用多源数据驱动的高斯羽流模型作为正向模型来预测传感器位置的浓度。然后,使用马尔可夫链蒙特卡洛(MCMC)采样进行贝叶斯推断,可以在常规处理器上在几分钟之内推断出模型参数。综合排名系统可以估算发布事件中涉及的来源数量。排序公式允许基于错误(散布),偏差和相关性成分的组合评估羽状模型结果。我们使用2007年FUSION现场试验浓度数据(由近地源产生)来测试多源事件重建工具(MERT)。我们展示了成功重构源参数以及包含多达三个源的发布事件中涉及的源数量。

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