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Comparison of atmospheric modelling systems simulating the flow, turbulence and dispersion at the microscale within obstacles

Academic Article
Publication Date:
2017
abstract:
Three different modelling techniques to simulate the pollutant dispersion in the atmosphere at the microscale and in presence of obstacles are evaluated and compared. The Eulerian and Lagrangian approaches are discussed, using RAMS6.0 and MicroSpray models respectively. Both prognostic and diagnostic modelling systems are considered for the meteorology as input to the Lagrangian model, their differences and performances are investigated. An experiment from the Mock Urban Setting Test field campaign observed dataset, measured within an idealized urban roughness, is used as reference for the comparison. A case in neutral conditions was chosen among the available ones. The predicted mean flow, turbulence and concentration fields are analysed on the basis of the observed data. The performances of the different modelling approaches are compared and their specific characteristics are addressed. Given the same flow and turbulence input fields, the quality of the Lagrangian particle model is found to be overall comparable to the fullEulerian approach. The diagnostic approach for the meteorology shows a worse agreement with observations than the prognostic approach but still providing, in a much shorter simulation time, fields that are suitable and reliable for driving the dispersion model.
Iris type:
01.01 Articolo in rivista
Keywords:
Flow around obstacles; Air pollutant dispersion; Eulerian and Lagrangian models; MUST experiment
List of contributors:
TRINI CASTELLI, Silvia
Authors of the University:
TRINI CASTELLI SILVIA
Handle:
https://iris.cnr.it/handle/20.500.14243/343058
Published in:
ENVIRONMENTAL FLUID MECHANICS
Journal
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