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A Markov chain model for predicting transient particle transport in enclosed environments

机译:预测封闭环境中瞬态粒子传输的马尔可夫链模型

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摘要

Obtaining information about particle dispersion in a room is crucial in reducing the risk of infectious disease transmission among occupants. This study developed a Markov chain model for quickly obtaining the information on the basis of a steady-state flow field calculated by computational fluid dynamics. When solving the particle transport equations, the Markov chain model does not require iterations in each time step, and thus it can significantly reduce the computing cost. This study used two sets of experimental data for transient particle transport to validate the model. In general, the trends in the particle concentration distributions predicted by the Markov chain model agreed reasonably well with the experimental data. This investigation also applied the model to the calculation of person-to-person particle transport in a ventilated room. The Markov chain model produced similar results to those of the Lagrangian and Eulerian models, while the speed of calculation increased by 8.0 and 6.3 times, respectively, in comparison to the latter two models.
机译:获得有关房间内颗粒扩散的信息对于降低乘员之间传染病传播的风险至关重要。这项研究开发了一个马尔可夫链模型,用于在通过计算流体动力学计算出的稳态流场的基础上快速获取信息。在求解粒子传输方程时,马尔可夫链模型不需要在每个时间步中进行迭代,因此可以大大降低计算成本。这项研究使用了两组用于暂态粒子传输的实验数据来验证模型。通常,由马尔可夫链模型预测的颗粒浓度分布趋势与实验数据吻合得很好。这项研究还将模型应用于通风房间中人与人之间的颗粒物运输。马尔可夫链模型产生的结果与拉格朗日模型和欧拉模型相似,而计算速度与后两个模型相比分别提高了8.0和6.3倍。

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