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Use of corn forage for grazing lactating dairy cowsMcClenton, Brandon Jermaine 15 December 2007 (has links)
Two lactation trials were used to investigate corn grazing as a management tool for dairies. Control (n = 18) cows, housed in free-stall barns were allowed ad libitum access to TMR while Grazing (n = 18 to 36) cows were limited TMR down to 70% of that in Controls and allowed 24-h access to corn plots. By wk 3, Grazing cows consumed 7.9 +/- 1.5 kg/hd/d of standing corn. By wk 7, the crop had matured and Grazing cows consumed 11.42 kg/hd/d of corn grain. Intake of TMR by Controls was 20.07 +/- 0.46 kg DM/hd/d, 19.78% greater than Grazing groups. Corn grazing had no impact on body weight, condition score, or ruminal pH, but significantly increased milk production in the Grazing group. Corn grazing reduced the need for purchased commodities, while improving milk production and performance. The value of saved commodities and increased milk production was $0.71 per cow/d.
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EARLY LIFE EVENTS ALTER FUTURE HOLSTEIN HEIFER GROWTH, SURVIVABILITY, REPRODUCTION, AND FIRST LACTATION MILK PRODUCTIONTabitha S Steckler (8876651) 29 July 2020 (has links)
<p>The
objective of this study was to evaluate the long-term effects that early life
events have on heifer growth up to 400 d of age, heifer conception rate,
survivability through first lactation, and first lactation milk production of
calves raised in automatic calf feeders. Chapter one evaluates possible early
life variables that would affect heifer growth and lifetime production as well
as research that has been done to predict future growth. The major points
discussed include pre-weaning feeding strategies, automatic calf feeding
systems, respiratory disease and ways to diagnose cattle with this disease, and
the impact of early
life growth on the future productivity of the dairy cow.<br></p>
<p>The
second chapter discusses in detail the process of creating a predictive
equation using significant early life variables that affect Holstein heifer
growth up to 400 d of age. Variables collected for the growth analysis included
sixty d cumulative milk consumption (MC), serum total protein values, respiratory
disease and scours incidences, genetic body size, birthweights, and incremental
body weight variables on a commercial dairy farm from October 1, 2015 to
January 1, 2019. Calves were fed pasteurized whole milk through an automated
calf feeding system (feeders = 8) for 60 d (range: 48 – 126d), with a 30% Crude Protein (CP)
and 5% Crude Fat enhancer added at 20 g/L of milk. Calves were
weighed at birth and several other times prior to calving. Average birth weight
of calves was 40.6 ± 4.9 kg (mean ± SD), serum total protein was 6.7 ± 0.63
g/dL, and cumulative 60 d MC was 508.1 ± 67.3 L with a range of 179.9 to 785.1 L. Daily body weights were predicted for individual animals using a third
order orthogonal polynomial to model growth curves. The linear and quadratic
effects of cumulative 60 d milk consumption, birthweight, feeder, yr born,
season born, respiratory incidence, and genetic body size score were
significant (<i>P</i><0.0001) when
predicting heifer body weight at 400 d (pBW<sub>400</sub>) of age (R<sup>2</sup>=0.31). There was
up to a 263 kg difference in pBW<sub>400 </sub>between the heaviest and
lightest animal. Birthweight had a significant effect on predicted weights up
to 400 d (<i>P</i><0.0001), and for every
1 kg increase in birthweight, there was a 2.5 kg increase in pBW<sub>400</sub>.
The quadratic effect of cumulative 60 d MC was significant for pBW<sub>400</sub>
(<i>P</i><0.0001). When 60 d MC was
divided into quartiles, heifers had the highest pBW<sub>400 </sub>in the third
quartile, when 60 d MC was between 507.8 and 552.5 L. Body size composite
(genomic index) showed a
21.5 kg difference in pBW<sub>400</sub> between the top and bottom 25<sup>th</sup>
percentile of heifers. Heifers were 4.2 kg lighter at 400 d if treated for
respiratory disease 3+ times during the first 60 d of life, compared to heifers
not treated for respiratory disease.</p>
<p>The third
chapter utilizes the data described in chapter two and followed those heifers
through breeding and first lactation. Heifer conception age and 280 d first
lactation milk production (280M) were collected. Average age at conception was 437.5 ± 45.0 d;
range of 308 to 631 d (n=5,193), and average 280M was 9,305 ± 1,371.8 kg; range
of 712-13,358 kg (n=1,324). Heifer conception age was
impacted by season, yr, and the quadratic effects of predicted bodyweight at
300 d of age (pBW<sub>300</sub>) and ADG (0-400; all <i>P</i> < 0.05; total model R<sup>2</sup>
= 0.08). Season
born, ADG (0 - 400 d), genomic milk, and the linear effect of heifer conception
age had a significant impact on 280M (all <i>P</i>
< 0.05; R<sup>2</sup> = 0.28). For every 1 kg increase in genomic milk value
there is 1.42 kg increase in first lactation 280M. Calves not diagnosed
with bovine respiratory disease (BRD) from 60-120 d old had a significantly
higher chance for survival to first lactation than animals treated three or
more times for BRD (hazard ratio = 0.71, 95% CI = 0.574
to 0.886, <i>P </i>= 0.0023, Table 3.3).
Heifers treated twice or more for BRD had reduced likelihood to become pregnant
than heifers not treated for BRD from 60-120 d (twice <i>P </i>= 0.02; three or more <i>P </i>=
0.05). </p>
<p>In
conclusion, the results from this thesis support that early life events in
Holstein heifers continue to influence future growth and productivity. Future
research aims to validate the predictive equation generated in chapter two on
farm as well as adapt the equation to other farms allowing them to utilize it
as well. The goal is to have farms utilize this tool to aid in their
replacement heifer management decisions and to select the most productive
heifers for the future of their herds. </p>
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SPECIAL PROBLEMS IN AGRICULTURAL ECONOMICSSwartz, Alexander Ogden 01 January 2019 (has links)
According to the USDA Economic Research service, farm-level prices are on the decline. This decline in prices particularly hurts smaller scale operators with many needing to rely on off-farm income in order to ensure they remain in operation. This thesis studies two problems of key interest to the Southeast region and the State of Kentucky by investigating dairy management practices and the environmental benefits of hemp production. As dairy prices have been on the decline and dairy co-ops have tightened their restrictions on somatic cell count (SCC) levels, dairy farmers and farm managers must decide the best course of action for maintaining milk quality in order to maintain their contract and profitability. Maintenance decisions as well as factors like sanitation and animal living conditions can all contribute to bulk tank SCC and depending on the type of incentives or penalties instituted by the co-op they can have an impact on net farm income. The objective of the dairy study is to determine which dairy management practices have the largest impact on SCC levels.
Industrial hemp is produced worldwide. Historically, the major producers of hemp have been China, Europe, and Russia. In 2014, the passage of the Farm Bill opened the door to the production of Industrial hemp through the development of state pilot programs. Then the 2018 Farm Bill removed industrial hemp from the Scheduled Drug list. This has further expanded the opportunities and excitement for this crop. The plant’s versatility and the variety of products that can be made from it are coming to light. Sustainability is one of the key attributes touted concerning industrial hemp. Specifically, in the state of Kentucky, it is expected to be a replacement for tobacco and other traditional crops. However, how does the crop compare to tobacco production in terms of sustainability? The objective of the hemp study is to develop a life cycle analysis on the planting and harvesting of hemp and compare its impacts to more traditional crops.
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Validation of a Stereo Vision System to Estimate Total Mixed Ration Volume and Feeding Behavior of Dairy CattleMcKinley Noelle Flinders (19166155) 19 July 2024 (has links)
<p dir="ltr">Consistent intake and feeding behavior records collected on a per-cow basis are useful measures for optimization of feed efficiency, production, and ultimately, resource and economic sustainability of dairy operations. However, current methods for collection are often labor-intensive and impractical to maintain for both individual- and group-housed cows. Across the dairy industry, total mixed rations (TMR) are fed to promote balanced nutrient intake and satisfy evolving energy requirements. TMR intake is an extensively investigated phenotype of dairy cattle and is known to be highly variable due to both intrinsic and extrinsic determinants, which can include composition and palatability of offered TMR, intensity of environmental stressors, and biological aspects of the individual animal. Reductions in TMR intake negatively impact health and production; thus, industry demand has heightened for precise intake monitoring systems. Cyber-physical systems that employ cameras as a sensing device are proposed solutions to ambiguity in existing feeding strategies. Prior studies have demonstrated the efficacy of camera systems to monitor other phenotypes of dairy cattle including body condition, locomotion and gait, social interaction, and early detection of negative health events. In this study, an OAK-D PoE stereo vision camera system was employed to estimate volume of TMR and monitor feeding behavior in a dynamic barn environment. The system leveraged open-source Python software to measure relative depth in near real time and autonomously estimate the amount of TMR present in a feed bunk. Image data were processed to generate a point cloud for which volume of TMR was estimated at a rate of approximately 50 estimates/min. Two experiments were conducted in which mass, volume, and density of TMR, as well as feeding behavior (exclusive to Exp. 2) were manually recorded to be compared to volume estimates of TMR output by the camera system. In Exp. 1, diet type (high-density vs. low-density; HD and LD, respectively), lighting (10,000 Lm vs. existing barn lighting; on vs. off, respectively), and shape of offered TMR (undisturbed vs. simulated post-meal bout; no divot vs. divot, respectively) were assessed for impact on system accuracy across five intervals of known TMR volume. In Exp. 2, system volume estimates were evaluated over time when a cow was present and exhibiting normal feeding behavior. The system accurately estimated volume of TMR across evaluated conditions in Exp. 1, despite significance of the divot condition. As TMR disappeared over time in Exp. 2, system volume estimates decreased with a similar pattern. When the cow was removed and measured TMR volume was unchanged at 2 h collection timepoints in Exp. 2, system volume estimates also remained unchanged and consistent. Post-collection of replicates in Exp. 2, frequency and duration of meal bout events were estimated based on differences in volume when cows were eating. Estimated frequency and durations were similar to manually recorded data and indicated feasibility of behavioral monitoring as an opportunity for further system development. Prior studies have integrated machine learning approaches for refinement of camera monitoring systems and mitigation of reported environmental impact on accurate quantification of TMR volume. Further development of the current system through integration of machine learning applications will improve accuracy and industry applicability as an automated feed bunk management tool for collection of TMR intake and behavioral data on a per-cow basis.</p>
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AVALIAÇÃO DO APLICATIVO DE TECNOLOGIA MÓVEL ANDROID C7 LEITE: ZOOTECNIA DE PRECISÃO / ASSESSMENT OF THE MOBILE TECHNOLOGY FOR THE ANDROID APPLICATION C7 MILK: PRECISION ANIMAL SCIENCEAgnol, Sidnei Dal 30 August 2016 (has links)
Nowadays those who live or work in the countryside have increasingly access to
technologies that favor the development of their daily activities. Smartphones and
tablets with android operating systems, which are every day more accessible to the
farmers, offer opportunities for the use of applications that support them in decisionmaking.
These new tools are available to the rural man, rural extension and/or
technical assistance professionals, and can be used to increase the competitiveness
of their properties. This study aimed to assess the C7 Milk II application to find out its
strengths and weaknesses, as well as to contribute to the provision of a free
management system, which is efficient and easy for the farmers and technicians to
use, positively influencing the management of dairy farming properties. Thus we
tested the use of this application in two family farms: one in the city of Alto Alegre/RS
and another in the city of Espumoso/RS. We accompanied the development of the
activities related to the tool use, and recorded the farmers´ perceptions on it. We also
used contacts and questionnaires to find out the perception of field technicians who
work in the region in order to identify the potential and limitations of the use of the
applications among the rural men. At the end of the study, we found out that the
application has potential as a tool to give greater precision to the dairy management,
since it has several strengths. However, it also has some weaknesses, which need to
be improved to have greater acceptance by farmers and technicians. Among the
limitations of the application use, there are some difficulties for the farmers to adopt a
notes routine about the activity, as well as their lack of ability to work with new
technologies. These aspects impair their use in a big scale as a complementary tool
in the management of dairy farming. The agility and the mobility of the tool; the
generating of information for decision-making with low cost access and application
service; and the farmer´s thinking on his activity have being considered potential
factors. / Atualmente quem mora ou trabalha na zona rural tem cada vez mais acesso a
tecnologias que favorecem o desenvolvimento das atividades. Os aparelhos
smartphones e tablets com sistema operacional android, cada dia mais acessíveis
ao homem do campo, oferecem oportunidades para utilização de aplicativos que
auxiliam o produtor (a) rural na tomada de decisões. Estas novas ferramentas
disponíveis ao homem do campo, profissionais da extensão rural e/ou assistência
técnica podem ser utilizadas para aumentar a competitividade dessas propriedades.
Este trabalho buscou avaliar o aplicativo C7 Leite II, seus pontos fortes e a melhorar,
com isso, contribuir para a disponibilização de um sistema gerencial gratuito,
eficiente e de fácil utilização por parte de produtores e técnicos, influenciando
positivamente no gerenciamento de propriedades rurais que trabalham na atividade
leiteira. Para esta avaliação foi testado a utilização do aplicativo em duas
propriedades rurais da agricultura familiar, uma no município de Alto Alegre/RS e
outra em Espumoso/RS, sendo acompanhado o desenvolvimento das atividades de
utilização da ferramenta e registro das percepções dos produtores. Também foi
levantado através de contatos e aplicação de questionários, a percepção de técnicos
de campo que atuam na região de estudo, tentando identificar os potenciais e os
limitantes da utilização de aplicativos junto ao seu público assistido. Ao final
verificou-se que o aplicativo tem potencial como ferramenta para dar maior precisão
no gerenciamento leiteiro, por apresentar vários pontos fortes, mas também precisa
melhorar em outros pontos para que tenha maior aceitação pelos produtores e
técnicos. Entre os limitantes do uso do aplicativo, aparecem com maior força as
dificuldades dos produtores adotarem uma rotina de anotações sobre a atividade, e
a falta de habilidade em trabalhar com as novas tecnologias, aspectos que
comprometem até certo ponto o uso em maior escala de aplicativos como
ferramenta complementar no gerenciamento da atividade leiteira. Já como potenciais
aparecem a agilidade e mobilidade da ferramenta, geração de informações para
tomada de decisão com baixo custo de acesso e manutenção do aplicativo, e a
reflexão gerada no produtor (a) sobre como vem conduzindo sua atividade.
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VALUE OF SYSTEMATIC THORACIC ULTRASONOGRAPHY INFORMATION FOR DETECTING BOVINE RESPIRATORY DISEASE (BRD) RELATED LUNG DAMAGE IN CROSSBRED DAIRY CALVESEvan Bryant Long (10715370) 28 April 2021 (has links)
The purpose of this
study is to evaluate the value of systematic thoracic ultrasonography (TUS) for
detecting bovine respiratory disease (BRD) related lung damage in Holstein x
Angus crossbred calves. Because the dairy industry is known to operate on small
profit margins, it is important to assess the potential of this technology to
help prevent the main source of financial loss related to calf production that dairy
producers face. Studies have shown that BRD may impact nearly a fourth of all
dairy calves before weaning. In an industry that is currently growing and
evolving, it is important that producers have all the necessary resources to
operate efficiently. TUS is known to be a quick and accurate predictor of BRD
related lung damage, but this study focuses on the financial implications of BRD
related lung damage on calf growth and efficiency—average daily gain (ADG) and milk-to-gain
(M:G)—and the value of implementing TUS information to make sound management
decisions. TUS along with BRD diagnosis information give producers a unique
perspective on future growth and development of calves and could be part of the
solution to promote larger profit margins for dairy producers. We find that the
value associated with TUS and BRD diagnosis information is between $0.88/head
and $13.44/head and depends on BRD incidence rate, feed price, and feeder price.
Depending on the cost to the farm, it may be beneficial to implement this as a
way to manage BRD damage, which we know to influence calf growth and efficiency.
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