Clevers, Jan
Table 3: Deviations in final yield (t ha!) for the 5 winter wheat fields in 1997 (Observed - Simulated). The average
presents the average absolute deviation.
Field-id | Simulation Simulation + Simulation,
reset reset +
interpolation
101 -0.858 -0.370 -0.647
120 -0.139 0.226 -0.017
208 1.158 1.625 1.302
210 1.868 2.244 2.073
300 -0.134 0.381 0.027
average | 0.83 0.97 0.81
5 CONCLUSIONS
Results show that the semi-empirical CLAIR model can well be used for estimating LAI of wheat fields in Southern
France. The parameters derived for cereals in The Netherlands can be applied in Southern France. Moreover, the
relationships and methods derived from field-based and airborne observations can be applied to spaceborne
measurements. This indicates that this approach may have a broad applicability and that parameter estimates are not
site-specific.
Often the lack of specific field data hampers the good calibration of mechanistic simulation models like Rotask y 1.5.
Remote sensing has proven to offer a valuable tool for the run-time calibration, leading to better estimates of LAI and
grain yield in situations where only average values for model input parameters are available. If the cropping calendar is
more or less known, the timing and frequency of calibration by remote sensing images can be optimized. The error in
LAI estimation by SPOT remote sensing images is directly imposed on the simulation model, and can lead to
unsatisfactory results.
ACKNOWLEDGEMENTS
The Alpilles-ReSeDA project is funded by the EEC-DG XII (contract ENV4-CT96-0326 - PL952071), the French
Programme National de Télédétection Spatiale and Programme de Recherches en Hydrologie. The IRSA-MARS project
provides access to ground data and SPOT images (Arles segment).
REFERENCES
Ahlrichs, J.S. and Bauer, M.E., 1983. Relation of agronomic and multispectral reflectance characteristics of spring
wheat canopies. Agronomy Journal, 75, pp. 987-993.
Baret, F. et al., 1999. ReSeDA: Assimilation of multisensor & multitemporal remote sensing data to monitor vegetation
and soil functioning. Second Annual Report ReSeDA project, INRA, July 1999, 46 pp.
Bouman, B.A.M., 1991. Linking X-band radar backscattering and optical reflectance with crop growth models. Ph.D.
Thesis, Wageningen Agricultural University, Wageningen, The Netherlands.
Bouman, B.A.M., Van Kasteren, H.W.J., and Uenk, D., 1992. Standard relations to estimate ground cover and LAI of
agricultural crops from reflectance measurements. Eur. J. Agron., 4, pp. 249-262.
Clevers, J.G.P-W., 1988. The derivation of a simplified reflectance model for the estimation of Leaf Area Index. Remote
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278 International Archives of Photogrammetry and Remote Sensing. Vol. XXXIII, Part B7. Amsterdam 2000.
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