Articles | Volume 10, issue 4
https://doi.org/10.5194/gmd-10-1467-2017
https://doi.org/10.5194/gmd-10-1467-2017
Model description paper
 | 
11 Apr 2017
Model description paper |  | 11 Apr 2017

ASIS v1.0: an adaptive solver for the simulation of atmospheric chemistry

Daniel Cariolle, Philippe Moinat, Hubert Teyssèdre, Luc Giraud, Béatrice Josse, and Franck Lefèvre

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This article reports on the development and tests of the adaptive semi-implicit scheme (ASIS) solver for the simulation of atmospheric chemistry. To solve the ordinary differential equations associated with the time evolution of the species concentrations, ASIS adopts a one-step linearized implicit scheme. It conserves mass and has a time-stepping module to control the accuracy of the numerical solution. ASIS was found competitive in terms of computation cost against higher-order schemes.