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Use of proximal sensors to evaluate at the sub-paddock scale a pasture growth-rate model based on light-use efficiency

journal contribution
posted on 2018-08-30, 00:00 authored by MM Rahman, DW Lamb, JN Stanley, Mark TrotterMark Trotter
Monitoring pasture growth rate is an important component of managing grazing livestock production systems. In this study, we demonstrate that a pasture growth rate (PGR) model, initially designed for NOAA AVHRR normalised difference vegetation index (NDVI) and since adapted to MODIS NDVI, can provide PGR at spatial resolution of ∼2m with an accuracy of ∼2kg DM/ha.day when incorporating in-situ sensor data. A PGR model based on light-use efficiency (LUE) was combined with in-situ measurements from proximal weather (temperature), plant (fraction of absorbed photosynthetically active radiation, fAPAR) and soil (relative moisture) sensors to calculate the growth rate of a tall fescue pasture. Based on an initial estimate of LUEmax for the candidate pasture, followed by a process of iterating LUEmax to reduce prediction errors, the model was capable of estimating PGR with a root mean square error of 1.68kg/ha.day (R2≤0.96, P-value≈0). The iterative process proved to be a convenient means of estimating LUE of this pasture (1.59g DM/MJ APAR) under local conditions. The application of the LUE-PGR approach to developing an in-situ pasture growth rate monitoring system is discussed. © 2014 CSIRO.

Funding

Category 4 - CRC Research Income

History

Volume

65

Issue

4

Start Page

400

End Page

409

Number of Pages

10

eISSN

1836-5795

ISSN

1836-0947

Publisher

C S I R O Publishing

Peer Reviewed

  • Yes

Open Access

  • No

External Author Affiliations

University of New England;

Era Eligible

  • Yes

Journal

Crop and Pasture Science

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