Predicting Concentration Fluctuations of Locally Emitted Air Pollutants in Urban-like Geometry Using Deep Learning

Bálint Papp, G. Kristóf
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Abstract

The accurate quantification of concentration fluctuations is crucial when evaluating the exposure to toxic, infectious, reactive, flammable, or explosive substances, as well as for the estimation of odor nuisance. However, in the field of Computational Fluid Dynamics (CFD), the industry currently relies predominantly on steady-state RANS turbulence models for simulating near-field pollutant dispersion, which are only capable of producing the time-averaged concentration field. This paper presents a regression relationship for calculating the standard deviation of the local concentration based on the mean concentration and the downstream distance from a point source, over a city-like surface, in the case of the wind direction perpendicular to the streets. The desired peak values and other statistical characteristics can be predicted by assuming a gamma distribution which is fitted based on the average and standard deviation. To obtain the regression function, a deep neural network model was used. The model was trained using time-resolved concentration data obtained from wind tunnel experiments. The validation results show that the concentration fluctuations predicted by the DNN-based model are in satisfactory agreement with the measurement data in terms of the skewness, the kurtosis, the median, and the peak concentrations. Furthermore, the present paper suggests a workflow for estimating the concentration fluctuations based on RANS CFD results, as well as recommendations for generating further training data for specific applications.
利用深度学习预测类城市几何中局部排放空气污染物的浓度波动
在评估有毒、传染性、反应性、易燃或易爆物质的暴露情况以及估算臭味扰民时,准确量化浓度波动至关重要。然而,在计算流体动力学(CFD)领域,目前业界主要依靠稳态 RANS 湍流模型模拟近场污染物扩散,而这种模型只能产生时间平均浓度场。本文提出了一种回归关系,在风向垂直于街道的情况下,根据平均浓度和点源的下游距离,计算城市状表面上局部浓度的标准偏差。根据平均值和标准偏差拟合的伽马分布,可以预测所需的峰值和其他统计特征。为了获得回归函数,使用了深度神经网络模型。该模型是利用从风洞实验中获得的时间分辨浓度数据进行训练的。验证结果表明,基于 DNN 的模型预测的浓度波动在偏度、峰度、中位数和峰值浓度方面与测量数据的一致性令人满意。此外,本文还提出了基于 RANS CFD 结果估算浓度波动的工作流程,以及针对特定应用生成进一步训练数据的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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