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Stochastic Event Reconstruction Of Atmospheric Contaminant Dispersion Using Bavesian Inference

机译:基于Bavesian推断的大气污染物扩散的随机事件重构

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摘要

Environmental sensors have been deployed in various cities for early detection of contaminant releases into the atmosphere. Event reconstruction and improved dispersion modeling capabilities are needed to estimate the extent of contamination, which is required to implement effective strategies in emergency management. To this end, a stochastic event reconstruction capability that can process information from an environmental sensor network is developed. A probability model is proposed to take into account both zero and non-zero concentration measurements that can be available from a sensor network because of a sensor's specified limit of detection. The inference is based on the Bayesian paradigm with Markov chain Monte Carlo (MCMC) sampling. Fast-running Gaussian plume dispersion models are adopted as the forward model in the Bayesian inference approach to achieve rapid-response event reconstructions. The Gaussian plume model is substantially enhanced by introducing stochastic parameters in its turbulent diffusion parameterizations and estimating them within the Bayesian inference framework. Additionally, parameters of the likelihood function are estimated in a principled way using data and prior probabilities to avoid tuning in the overall method. The event reconstruction method is successfully validated for both real and synthetic dispersion problems, and posterior distributions of the model parameters are used to generate probabilistic plume envelopes with specified confidence levels to aid emergency decisions.
机译:已在各个城市部署了环境传感器,以及早发现污染物释放到大气中的情况。需要事件重建和改进的扩散建模功能来估计污染程度,这是在应急管理中实施有效策略所必需的。为此,开发了可以处理来自环境传感器网络的信息的随机事件重建功能。提出一种概率模型,以考虑由于传感器指定的检测极限而可从传感器网络获得的零和非零浓度测量值。该推论基于具有马尔可夫链蒙特卡洛(MCMC)采样的贝叶斯范式。快速运行的高斯羽流弥散模型被用作贝叶斯推理方法中的正向模型,以实现快速响应的事件重构。通过在随机湍流扩散参数化中引入随机参数并在贝叶斯推理框架内估计随机参数,可以大大增强高斯羽流模型。另外,使用数据和先验概率以有原则的方式估计似然函数的参数,以避免调整整个方法。事件重建方法已针对真实和合成色散问题进行了成功验证,并且使用模型参数的后验分布来生成具有指定置信度的概率羽状包络,以帮助紧急决策。

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