Abstract

Airborne mineral dust is an important component of the Earth system and is increasingly predicted prognostically in weather and climate models. The recent development of data assimilation for remotely sensed aerosol optical depths (AODs) into models offers a new opportunity to better understand the characteristics and sources of model error. Here we examine assimilation increments from Moderate Resolution Imaging Spectroradiometer AODs over northern Africa in the Met Office global forecast model. The model underpredicts (overpredicts) dust in light (strong) winds, consistent with (submesoscale) mesoscale processes lifting dust in reality but being missed by the model. Dust is overpredicted in the Sahara and underpredicted in the Sahel. Using observations of lighting and rain, we show that haboobs (cold pool outflows from moist convection) are an important dust source in reality but are badly handled by the model's convection scheme. The approach shows promise to serve as a useful framework for future model development.

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  • Items deposited in White Rose Research Online are protected by copyright, with all rights reserved unless indicated otherwise

  • The publisher or other rights holders may allow further reproduction and re-use of the full text version. This is indicated by the licence information on the White Rose Research Online record for the item

  • The supporting information outlines the evaluation of the assimilation of MODIS aerosol optical depth (AOD) into the model against surface AERONET sites (S1)

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Introduction

Items deposited in White Rose Research Online are protected by copyright, with all rights reserved unless indicated otherwise. Article: Pope, RJ orcid.org/0000-0002-3587-837X, Marsham, J orcid.org/0000-0003-3219-8472, Knippertz, P et al (2 more authors) (2016) Identifying errors in dust models from data assimilation. This is indicated by the licence information on the White Rose Research Online record for the item.

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