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High fidelity simulation of hazardous plume concentration time series based on models of turbulent dispersion

机译:基于湍流色散模型的危险羽状浓度时间序列高保真仿真

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High fidelity simulation of hazardous plume concentration time series is important for military operations analysis and for the first responders to gain insights into the impact of hazardous releases. Concentration realisations are crucial to obtain accurate and realistic estimates of human health effects due to exposure to Chemical, Biological and Radiological (CBR) releases and for testing and evaluation of new sensor models, network topologies, and associated data fusion algorithms. Simulation of concentration fluctuations of a plume dispersing in turbulent atmosphere is a challenging task, usually requiring extensive domain knowledge, advanced mathematical expertise, and sophisticated computing resources. This is due to the fact that stochastic model for these fluctuations cannot be postulated based on any ad-hoc assumptions and should be deduced and aligned with underlying models of turbulent mixing and dispersion. For instance, simply using a simple Gaussian probability density function for concentration time series leads to inconsistency in the underlying concentration field (negative values) and hence is not physically realisable. In a recent publication [1], we described a simplified algorithm to generate concentration time series based on the rigorous framework of turbulent dispersion. In this approach, the key statistical parameters of the distributions are fed from the “ensemble-averaged” dispersion models and our algorithm provides the realisation of associated time series. In the current paper, we improve the previously proposed algorithm and extend it to the case of non steady sources. To test our algorithm, we used the Hazard Prediction and Assessment Capability (HPAC)(Fig. 1), developed by Defence Threat Reduction Agency (DTRA), USA, and an example non-stationary random concentration realisation generated by applying the proposed algorithm to a time-varying mean concentration profile sampled from within the HPAC simulation environment is presented (Fig 11).
机译:危险羽流浓度时间序列的高保真模拟对于军事运营分析至关重要,以及第一个响应者对危险释放的影响深入了解。由于暴露于化学,生物和放射学(CBR)释放以及用于测试和评估新的传感器模型,网络拓扑和相关数据融合算法,因此集中实现至关重要。湍流气氛中羽流分散的浓度波动的模拟是一个具有挑战性的任务,通常需要广泛的域名知识,高级数学专业知识和复杂的计算资源。这是由于这些波动的随机模型不能根据任何临时假设假设,并且应该推导出并与湍流混合和分散的底层模型对齐。例如,只需使用简单的高斯概率密度函数,用于浓度时间序列导致底层集中场(负值)不一致,因此不可能实现。在最近的出版物[1]中,我们描述了一种简化的算法,基于湍流色散的严格框架产生浓度时间序列。在这种方法中,分布的关键统计参数从“集合平均”的分散模型中馈送,我们的算法提供了相关时间序列的实现。在目前的论文中,我们改进了先前提出的算法,并将其扩展到非稳态源的情况。为了测试我们的算法,我们采用通过应用该算法来产生的危害的预测和评估能力(HPAC)(图1),由国防威胁降低局(DTRA),美国开发的,一个例子非平稳随机浓度实现从模拟HPAC环境内采样的随时间变化的平均浓度分布被呈现(图11)。

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