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RESEARCH ARTICLE

New ways of measuring intake, efficiency and behaviour of grazing livestock

Paul L. Greenwood A B D , Philip Valencia C , Leslie Overs C , David R. Paull B and Ian W. Purvis B
+ Author Affiliations
- Author Affiliations

A NSW Department of Primary Industries Beef Industry Centre, University of New England, Armidale, NSW 2351, Australia.

B CSIRO Animal Food and Health Sciences, Armidale, NSW 2350, Australia.

C CSIRO Computational Informatics, Pullenvale, Qld 4069, Australia.

D Corresponding author. Email: paul.greenwood@dpi.nsw.gov.au

Animal Production Science 54(10) 1796-1804 https://doi.org/10.1071/AN14409
Submitted: 16 March 2014  Accepted: 28 June 2014   Published: 19 August 2014

Abstract

Wireless sensor networks (WSN) offer a novel method for measuring important livestock phenotypes in commercial grazing environments. This information can then be used to inform genetic parameter estimation and improve precision livestock management. Arguably, these technologies are well suited for such tasks due to their small, non-intrusive form, which does not constrain the animals from expressing the genetic drivers for traits of interest. There are many technical challenges to be met in developing WSN technologies that can function on animals in commercial grazing environments. This paper discusses the challenges of the software development required for the collection of data from multiple types of sensors, the management and analyses of the very large volumes of data, determination of which sensing modalities are sufficient and/or necessary, and the management of the constrained power source. Assuming such challenges can be met however, validation of the sensor accuracy against benchmark data for specific traits must be performed before such a sensor can be confidently adopted. To achieve this, a pasture intake research platform is being established to provide detailed estimates of pasture intake by individual animals through chemical markers and biomass disappearance, augmented with highly annotated video recordings of animal behaviours. This provides a benchmark against which any novel sensor can be validated, with a high degree of flexibility to allow experiments to be designed and conducted under continually differing environmental conditions. This paper also discusses issues underlying the need for new and novel phenotyping methods and in the establishment of the WSN and pasture intake research platforms to enable prediction of feed intake and feed efficiency of individual grazing animals.

Additional keywords: alkanes, cattle, chromic oxide, goats, phenomics, sheep.


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