QES-Plume v1.0: a Lagrangian dispersion model

IF 4 3区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Geoscientific Model Development Pub Date : 2023-10-17 DOI:10.5194/gmd-16-5729-2023
Fabien Margairaz, Balwinder Singh, Jeremy A. Gibbs, Loren Atwood, Eric R. Pardyjak, Rob Stoll
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Abstract

Abstract. Low-cost simulations providing accurate predictions of transport of airborne material in urban areas, vegetative canopies, and complex terrain are demanding because of the small-scale heterogeneity of the features influencing the mean flow and turbulence fields. Common models used to predict turbulent transport of passive scalars are based on the Lagrangian stochastic dispersion model. The Quick Environmental Simulation (QES) tool is a low-computational-cost framework developed to provide high-resolution wind and concentration fields in a variety of complex atmospheric-boundary-layer environments. Part of the framework, QES-Plume, is a Lagrangian dispersion code that uses a time-implicit integration scheme to solve the generalized Langevin equations which require mean flow and turbulence fields. Here, QES-Plume is driven by QES-Winds, a 3D fast-response model that computes mass-consistent wind fields around buildings, vegetation, and hills using empirical parameterizations, and QES-Turb, a local-mixing-length turbulence model. In this paper, the particle dispersion model is presented and validated against analytical solutions to examine QES-Plume’s performance under idealized conditions. In particular, QES-Plume is evaluated against a classical Gaussian plume model for an elevated continuous point-source release in uniform flow, the Lagrangian scaling of dispersion in isotropic turbulence, and a non-Gaussian plume model for an elevated continuous point-source release in a power-law boundary-layer flow. In these cases, QES-Plume yields a maximum relative error below 6 % when compared with analytical solutions. In addition, the model is tested against wind-tunnel data for a uniform array of cubical buildings. QES-Plume exhibits good agreement with the experiment with 99 % of matched zeros and 59 % of the predicted concentrations falling within a factor of 2 of the experimental concentrations. Furthermore, results also emphasize the importance of using high-quality turbulence models for particle dispersion in complex environments. Finally, QES-Plume demonstrates excellent computational performance.
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QES-Plume v1.0:拉格朗日色散模型
摘要由于影响平均气流和湍流场的特征具有小规模的异质性,因此需要低成本的模拟来准确预测城市地区、植被冠层和复杂地形中空气物质的运输。用于预测被动标量湍流输运的常用模型是基于拉格朗日随机色散模型的。快速环境模拟(QES)工具是一种低计算成本的框架,用于在各种复杂的大气边界层环境中提供高分辨率的风和浓度场。该框架的一部分,QES-Plume,是一个拉格朗日色散代码,它使用时间隐式积分格式来求解需要平均流场和湍流场的广义朗之万方程。在这里,QES-Plume由QES-Winds和QES-Turb驱动,QES-Winds是一个3D快速响应模型,使用经验参数化计算建筑物、植被和山丘周围的质量一致风场,QES-Turb是一个局部混合长度湍流模型。本文提出了粒子色散模型,并针对解析解进行了验证,以检验理想条件下QES-Plume的性能。特别地,QES-Plume是针对均匀流动中升高的连续点源释放的经典高斯羽流模型、各向同性湍流中色散的拉格朗日标度模型和幂律边界层流动中升高的连续点源释放的非高斯羽流模型进行评估的。在这些情况下,与分析方案相比,QES-Plume产生的最大相对误差低于6%。此外,该模型还针对一组统一的立方体建筑的风洞数据进行了测试。QES-Plume与实验结果吻合良好,99%的匹配零和59%的预测浓度落在实验浓度的2因子范围内。此外,结果还强调了在复杂环境中使用高质量湍流模型来研究粒子分散的重要性。最后,验证了QES-Plume的计算性能。
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来源期刊
Geoscientific Model Development
Geoscientific Model Development GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
8.60
自引率
9.80%
发文量
352
审稿时长
6-12 weeks
期刊介绍: Geoscientific Model Development (GMD) is an international scientific journal dedicated to the publication and public discussion of the description, development, and evaluation of numerical models of the Earth system and its components. The following manuscript types can be considered for peer-reviewed publication: * geoscientific model descriptions, from statistical models to box models to GCMs; * development and technical papers, describing developments such as new parameterizations or technical aspects of running models such as the reproducibility of results; * new methods for assessment of models, including work on developing new metrics for assessing model performance and novel ways of comparing model results with observational data; * papers describing new standard experiments for assessing model performance or novel ways of comparing model results with observational data; * model experiment descriptions, including experimental details and project protocols; * full evaluations of previously published models.
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