2017
DOI: 10.1016/j.eja.2016.06.005
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Impact analysis of climate data aggregation at different spatial scales on simulated net primary productivity for croplands

Abstract: a b s t r a c tFor spatial crop and agro-systems modelling, there is often a discrepancy between the scale of measured driving data and the target resolution. Spatial data aggregation is often necessary, which can introduce additional uncertainty into the simulation results. Previous studies have shown that climate data aggregation has little effect on simulation of phenological stages, but effects on net primary production (NPP) might still be expected through changing the length of the growing season and the… Show more

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Cited by 35 publications
(20 citation statements)
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“…Soil parameters in these models cannot be measured, and the efficiency of PTFs can be evaluated only in terms of their utility (Gutmann & Small, 2007;Shen et al, 2014). The general problem of change in spatial resolution of the input data by aggregating small-scale information and the resulting output uncertainty for various model states was reported, for example, by Cale et al (1983), Rastetter et al (1992), Hoffmann et al (2016), and Kuhnert et al (2016). Besides presenting spatially dependent variability, PTFs may also have scale dependence (Pringle et al, 2007).…”
Section: Scalingmentioning
confidence: 99%
“…Soil parameters in these models cannot be measured, and the efficiency of PTFs can be evaluated only in terms of their utility (Gutmann & Small, 2007;Shen et al, 2014). The general problem of change in spatial resolution of the input data by aggregating small-scale information and the resulting output uncertainty for various model states was reported, for example, by Cale et al (1983), Rastetter et al (1992), Hoffmann et al (2016), and Kuhnert et al (2016). Besides presenting spatially dependent variability, PTFs may also have scale dependence (Pringle et al, 2007).…”
Section: Scalingmentioning
confidence: 99%
“…State-of-the-art LSMs, e.g. NOAH (Niu et al, 2011), CLM (Oleson et al, 2008), VIC (Liang et al, 1994), JULES (Best et al, 2011) and ORCHIDEE (Ngo-Duc et al, 2007), are key components of regional and global climate models (RCMs/GCMs) and numerical weather prediction models (NWPMs). They form important components of reanalyses (e.g.…”
Section: Introductionmentioning
confidence: 99%
“…Consequently, the fine-scale soil information, available from state-of-the-art soil maps such as the European LUCAS (Land Use/Land Cover Area Frame Survey) (Toth et al, 2013;Ballabio et al, 2016) at 500 m resolution or the global SoilGrid database at 1 km resolution (Hengl et al, 2014), has to be up-scaled to the scale at which the LSMs are being employed. The general problem of up-scaling, or change in spatial resolution of the input data by aggregating small-scale input data, and the resulting output uncertainty for various model states was reported, for example, by Cale et al (1983), Rastetter et al (1992), Pierce and Running (1995), Hoffmann et al (2016), and Kuhnert et al (2016). A practical example is GLDAS2-NOAH, where the porosity and the percentages of sand, silt and clay at the original scale of the input data from Reynolds et al (2000) were horizontally resampled, i.e.…”
Section: Introductionmentioning
confidence: 99%
“…During recent years, progress has been made in the research of cultivated land productivity [13][14][15][16]. Internationally, research on cultivated land productivity has mainly focused on the potential of land productivity.…”
Section: Introductionmentioning
confidence: 99%