Satellite-derived leaf area index and roughness length information for surface–atmosphere exchange modelling: a case study for reactive nitrogen deposition in north-western Europe using LOTOS-EUROS v2.0
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Published:2020-05-27
Issue:5
Volume:13
Page:2451-2474
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ISSN:1991-9603
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Container-title:Geoscientific Model Development
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language:en
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Short-container-title:Geosci. Model Dev.
Author:
van der Graaf Shelley C.,Kranenburg Richard,Segers Arjo J.,Schaap Martijn,Erisman Jan Willem
Abstract
Abstract. The nitrogen cycle has been continuously disrupted by human
activity over the past century, resulting in almost a tripling of the total
reactive nitrogen fixation in Europe. Consequently, excessive amounts of
reactive nitrogen (Nr) have manifested in the environment, leading to a
cascade of adverse effects, such as acidification and eutrophication of
terrestrial and aquatic ecosystems, and particulate matter formation.
Chemistry transport models (CTMs) are frequently used as tools to simulate
the complex chain of processes that determine atmospheric Nr flows. In
these models, the parameterization of the atmosphere–biosphere exchange of
Nr is largely based on few surface exchange measurement and is
therefore known to be highly uncertain. In addition to this, the input
parameters that are used here are often fixed values, only linked to
specific land use classes. In an attempt to improve this, a combination of
multiple satellite products is used to derive updated, time-variant leaf
area index (LAI) and roughness length (z0) input maps. As LAI, we use
the Moderate Resolution Imaging Spectroradiometer (MODIS) MCD15A2H product. The monthly z0 input maps presented in this
paper are a function of satellite-derived normalized difference vegetation index (NDVI) values (MYD13A3 product) for
short vegetation types (such as grass and arable land) and a combination of
satellite-derived forest canopy height and LAI for forests. The use of these
growth-dependent satellite products allows us to represent the growing
season more realistically. For urban areas, the z0 values are updated,
too, and linked to a population density map. The approach to derive these
dynamic z0 estimates can be linked to any land use map and is as such
transferable to other models. We evaluated the sensitivity of the modelled
Nr deposition fields in LOng Term Ozone Simulation – EURopean
Operational Smog (LOTOS-EUROS) v2.0 to the abovementioned changes
in LAI and z0 inputs, focusing on Germany, the Netherlands and Belgium.
We computed z0 values from FLUXNET sites and compared these to the
default and updated z0 values in LOTOS-EUROS. The root mean square difference (RMSD) for both short
vegetation and forest sites improved. Comparing all sites, the RMSD
decreased from 0.76 (default z0) to 0.60 (updated z0). The
implementation of these updated LAI and z0 input maps led to local
changes in the total Nr deposition of up to ∼30 % and
a general shift from wet to dry deposition. The most distinct changes are
observed in land-use-specific deposition fluxes. These fluxes may show
relatively large deviations, locally affecting estimated critical load
exceedances for specific natural ecosystems.
Publisher
Copernicus GmbH
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