Articles | Volume 8, issue 6
https://doi.org/10.5194/gmd-8-1595-2015
https://doi.org/10.5194/gmd-8-1595-2015
Model description paper
 | 
01 Jun 2015
Model description paper |  | 01 Jun 2015

A size-composition resolved aerosol model for simulating the dynamics of externally mixed particles: SCRAM (v 1.0)

S. Zhu, K. N. Sartelet, and C. Seigneur

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Cited articles

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This article presents the Size-Composition Resolved Aerosol Model (SCRAM) for simulating the dynamics of externally mixed atmospheric particles. The model is first validated by comparison with a reference solution and with results of simulations using internally mixed particles. Then, the importance of representing the mixing state when modelling atmospheric aerosol concentrations is investigated in a box model simulation using data representative of air pollution in Greater Paris.
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