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 TrotterMonitoring 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
65Issue
4Start Page
400End Page
409Number of Pages
10eISSN
1836-5795ISSN
1836-0947Publisher
C S I R O PublishingPublisher DOI
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Peer Reviewed
- Yes
Open Access
- No
External Author Affiliations
University of New England;Era Eligible
- Yes
Journal
Crop and Pasture ScienceUsage metrics
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