Ecosystem models are routinely used to estimate
net
primary production (NPP) from the stand to global scales. Complex
ecosystem models, implemented at small scales (< 10 km2), are
impractical at global scales and, therefore, require simplifying logic
based on key ecological first principles and
model drivers derived from
remotely sensed data. There is a need for an improved understanding of
the factors that influence the variability of NPP model estimates at
different scales so we can improve the accuracy of NPP estimates at the
global scale. The objective of this study was to examine the effects of
using
leaf area index (LAI) and three different aggregated
land cover
classification products - two factors derived from remotely sensed data
and strongly affect NPP estimates - in a light use efficiency (LUE)
model to estimate NPP in a heterogeneous temperate forest landscape in
northern
Wisconsin,
USA. Three separate land cover classifications were
derived from three different remote sensors with spatial resolutions of
15, 30, and 1000 m. Average modeled net primary production (NPP) ranged
from 402 gC m
-2 year
-1 (15 m data) to 431 gC m
-2
year
-1 (1000 m data), for a maximum difference of 7%. Almost
50% of the difference was attributed each to LAI estimates and land
cover classifications between the fine and coarse scale NPP estimate.
Results from this study suggest that ecosystem models that use
biome-level land cover classifications with associated LUE coefficients
may be used to model NPP in heterogeneous land cover areas dominated by
cover types with similar NPP. However, more
research is needed to
examine scaling errors in other heterogeneous areas and NPP errors
associated with deriving LAI estimates.
Ahl, D., S. T. Gower, D. S. Mackay, S. N. Burrows, J. M. Norman, and
G. Diak. 2005. The effects of aggregated land cover data on estimating
NPP in northern Wisconsin, USA. Remote Sensing of Environment 97:1-14
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