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Capability of crop canopy sensing to predict crop parameters of cut grass swards aiming at early season variable rate nitrogen top dressings

Published online by Cambridge University Press:  01 June 2017

G. Portz*
Affiliation:
Research Centre Hanninghof, Yara International ASA, Hanninghof 35, 48249 Duelmen, Germany
M. L. Gnyp
Affiliation:
Research Centre Hanninghof, Yara International ASA, Hanninghof 35, 48249 Duelmen, Germany
J. Jasper
Affiliation:
Research Centre Hanninghof, Yara International ASA, Hanninghof 35, 48249 Duelmen, Germany
*
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Abstract

This study aims to evaluate actual biomass and N-uptake estimates with the Yara N-Sensor in intensively managed grass swards across several trial sites in Europe. The dataset was split by location into an independent calibration data (UK and Finland) and a validation data (Germany) for the first two cuts. Yara N-Sensor readings were better correlated with N-uptake (R2=0.71) than actual biomass (R2=0.53) for the 1st cut. At the 2nd cut, the R2 values for both parameters were higher (0.80 and 0.56). A cross-validation with a German grass trial indicated the potential for predicting N-uptake (R2>0.8). It can be concluded that the technology has the potential to guide management decisions and variable rate nitrogen application on European grass swards.

Type
Precision Pasture
Copyright
© The Animal Consortium 2017 

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