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https://hdl.handle.net/1959.11/56615
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DC Field | Value | Language |
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dc.contributor.author | Simanungkalit, Gamaliel | en |
dc.contributor.author | Hegarty, Roger | en |
dc.contributor.author | Barwick, Jamie | en |
dc.contributor.author | Cowley, Frances | en |
dc.date.accessioned | 2023-11-16T23:19:36Z | - |
dc.date.available | 2023-11-16T23:19:36Z | - |
dc.date.created | 2022-02 | - |
dc.date.issued | 2022-09-07 | - |
dc.identifier.uri | https://hdl.handle.net/1959.11/56615 | - |
dc.description | Please contact rune@une.edu.au if you require access to this thesis for the purpose of research or study. | en |
dc.description.abstract | <p>Monitoring licking behaviour and time spent licking by grazing cattle offer a means to estimate intake of block supplements. The advancement of sensor-based technologies to measure these makes harnessing information from individual animals possible in an extensive grazing environment. A literature review (Chapter 2) exhaustively discusses the potential of using stationary and wearable (on-animal) sensor-based devices to monitor supplement intake by cattle. Five experimental studies (Chapters 3 – 7) evaluate the effectiveness of ear-tag accelerometers and radio-frequency identification (RFID) integrated into automatic feeders to monitor licking behaviour and time spent licking, thus estimating block supplement intake in grazing beef cattle.</p> <p>The first two studies assessing gravimetric and blood marker-based assessment of supplement intake (Chapters 3 and 4) indicated that:</p> <p>• The total time spent by individual grazing cattle at supplement blocks recorded by an RFID equipped automatic supplement weighing unit (ASW) exhibited a linear relationship with block intake (<i>R<sup>2</sup></i> = 0.93 [Experiment 1] and 0.70 [Experiment 2]; <i>P</i> < 0.001). However, the high mean error of the linear models (RMSE = 34% [Experiment 1] and 42% [Experiment 2]) indicated substantial between- and within-animal variability in block intake.</p> <p>• A linear relationship between the animal's cumulative weighted time spent at the ASW unit and its plasma level of the block intake marker (oxfendazole sulfone) was found (<i>R<sup>2</sup></i> =0.75; <i>P</i> < 0.001).</p> <p>• Using a complex on-ground supplement weighing system over a long period in a large herd was technically prohibitive (Chapter 4). Hence, using an on-animal sensor was considered necessary to monitor time spent licking by individuals at the block supplements.</p> <p>Due to the challenges of using remote weighing platforms in arid Australia (Chapter 4), a pilot study evaluated accelerometers deployed on a neck-collar, or an ear-tag were as alternative supplement intake proxies (Chapter 5)</p> <p>• Both the neck collar and ear-tags were capable of identifying the licking behaviour at a supplement block in Angus steers confined in individual pens. </p> <p>• A behaviour classification model developed using the Random Forest (RF) machine learning algorithm performed well in classifying licking behaviour, with an accuracy ranging between 92% and 98% for neck-collar and between 88% and 98% for ear-tag. </p> <p>• Further research is required to test the ear-tag accelerometer model under actual grazing conditions for predicting licking state (LS) duration or time spent licking.</p> <p>An experiment with a group of cattle in a 900 m<sup>2</sup> yard confirmed that the ear-tag accelerometer performed well in classifying licking behaviour at a supplement block in grazing steers. In this experiment, the block supplement intake was individually accessed through the raceway of an automatic supplement feeder equipped with an RFID system.</p> <p>• Accuracy, kappa coefficient, and F1 scores of the ear-tag accelerometer classification model developed using the Extreme Gradient Boosting (XGB) algorithm for licking behaviour were 93%, 0.88, and 0.88, respectively. The accelerometer model and the RFID system predictions for LS duration were acceptable, with a mean absolute error (MAE) of 22% and 10%, a ratio of root mean square prediction error (RSR) of 0.33 and 0.14 and a modelling efficiency (MEF) of 0.89 and 0.98. </p> <p>A validation study was conducted on Angus (<i>n</i>=7) and Brahman (<i>n</i>=7) heifer groups to test the accelerometer classification model and RFID system to predict an individual’s time spent licking at supplement blocks provided at an ASW unit for each group. </p> <p>• The ear-tag accelerometer behaviour classification model developed using the Support Vector Machine (SVM) algorithm satisfactorily categorised licking behaviour and predicted the time spent licking at the lick-block, with a MAE of 22% and 11%, MEF of 0.81 and 0.94, the concordance correlation coefficient (CCC) of 0.88 and 0.96, and RSR of 0.44 and 0.25, for Angus and Brahman heifers, respectively.</p> <p>• However, the RFID system predictions of time spent licking for both breeds were unacceptable as the low-frequency RFID system (134.2 kHz) was unable to capture the presence of multiple RFID tags accurately.</p> <p>This thesis revealed that an ear-tag accelerometer in conjunction with an RFID system offers the possibility of estimating the lick-block supplement intake of individual grazing cattle by determining the time spent licking. This may apply in remote rangelands where on-ground measurement of block intake was found too difficult (Chapter 4). Ear-tag based supplement intake estimates could be downloaded from the tags at key locations such as water points and transmitted to the farm manager.</p> | en |
dc.language | en | en |
dc.publisher | University of New England | - |
dc.relation.uri | https://hdl.handle.net/1959.11/56616 | en |
dc.title | On the Deployment of Sensor-Based Technologies for Monitoring Supplement Intake Behaviours in Grazing Cattle | en |
dc.type | Thesis Doctoral | en |
local.contributor.firstname | Gamaliel | en |
local.contributor.firstname | Roger | en |
local.contributor.firstname | Jamie | en |
local.contributor.firstname | Frances | en |
local.subject.seo2008 | 830501 Eggs | en |
local.subject.seo2008 | 859801 Management of Gaseous Waste from Energy Activities (excl. Greenhouse Gases) | en |
local.hos.email | ers-sabl@une.edu.au | en |
local.thesis.passed | Passed | en |
local.thesis.degreelevel | Doctoral | en |
local.thesis.degreename | Doctor of Philosophy - PhD | en |
local.contributor.grantor | University of New England | - |
local.profile.school | School of Environmental and Rural Science | en |
local.profile.school | School of Environmental and Rural Science | en |
local.profile.school | School of Environmental and Rural Science | en |
local.profile.school | School of Environmental and Rural Science | en |
local.profile.email | gsimanu2@une.edu.au | en |
local.profile.email | rhegart3@une.edu.au | en |
local.profile.email | jbarwic2@une.edu.au | en |
local.profile.email | fcowley@une.edu.au | en |
local.output.category | T2 | en |
local.record.place | au | en |
local.record.institution | University of New England | en |
local.publisher.place | Armidale, Australia | - |
local.contributor.lastname | Simanungkalit | en |
local.contributor.lastname | Hegarty | en |
local.contributor.lastname | Barwick | en |
local.contributor.lastname | Cowley | en |
dc.identifier.staff | une-id:gsimanu2 | en |
dc.identifier.staff | une-id:rhegart3 | en |
dc.identifier.staff | une-id:jbarwic2 | en |
dc.identifier.staff | une-id:fcowley | en |
local.profile.orcid | 0000-0002-9401-8388 | en |
local.profile.orcid | 0000-0003-0905-8527 | en |
local.profile.orcid | 0000-0002-6475-1503 | en |
local.profile.role | author | en |
local.profile.role | supervisor | en |
local.profile.role | supervisor | en |
local.profile.role | supervisor | en |
local.identifier.unepublicationid | une:1959.11/56615 | en |
dc.identifier.academiclevel | Student | en |
dc.identifier.academiclevel | Academic | en |
dc.identifier.academiclevel | Academic | en |
dc.identifier.academiclevel | Academic | en |
local.thesis.bypublication | Yes | en |
local.title.maintitle | On the Deployment of Sensor-Based Technologies for Monitoring Supplement Intake Behaviours in Grazing Cattle | en |
local.output.categorydescription | T2 Thesis - Doctorate by Research | en |
local.school.graduation | School of Environmental & Rural Science | en |
local.thesis.borndigital | Yes | - |
local.search.author | Simanungkalit, Gamaliel | en |
local.search.supervisor | Hegarty, Roger | en |
local.search.supervisor | Barwick, Jamie | en |
local.search.supervisor | Cowley, Frances | en |
local.uneassociation | Yes | en |
local.atsiresearch | No | en |
local.sensitive.cultural | No | en |
local.year.conferred | 2022 | - |
local.subject.for2020 | 300301 Animal growth and development | en |
local.subject.for2020 | 300303 Animal nutrition | en |
local.subject.for2020 | 300402 Agro-ecosystem function and prediction | en |
local.profile.affiliationtype | UNE Affiliation | en |
local.profile.affiliationtype | UNE Affiliation | en |
local.profile.affiliationtype | UNE Affiliation | en |
local.profile.affiliationtype | UNE Affiliation | en |
Appears in Collections: | School of Environmental and Rural Science Thesis Doctoral |
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