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Dairy Cows Estrus Estimation Using Predictive And Quantitative Methods [estimativa De Estro Em Vacas Leiteiras Utilizando Métodos Quantitativos Preditivos]

机译:使用预测性和定量方法估算奶牛发情[使用预测性定量方法估算奶牛的乳汁]

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摘要

Brazil is the sixth world's larger milk producer, increasing its production at an annual rate of 4% above other producer countries. Part of this raise in milk production was due to the use of several technologies that have being developed for the sector, mainly those related to genetics and herd management. Accurate estrus detection in dairy cows is a limiting factor in the reproduction efficiency of dairy cattle, and it has been considered the most important deficiency in the field of reproduction. Failing to detect estrus efficiently may cause losses for the producer. Quantitative predictive methods based on historical data and specialist knowledge may allow, from an organized data base, the prediction of estrus pattern with lower error. This research compared the precision of the estrus prediction techniques for freestall confined Holstein dairy cows using quantitative predictive methods, through the interpolation of intermediate points of historical herd data set. A base of rules was formulated and the values of weight for each statement is within the interval of 0 to 1; and these limits were used to generate a function of pertinence fuzzy that had as output the estrus prediction. In the following stage Data mining technique was applied using the parameters of movement rate, milk production, days of lactation and mounting behavior, and a decision tree was built for analyzing the most significant parameters for predicting estrus in dairy cows. The results indicate that the prediction of estrus incidence may be achieved either using the association of cow's movement (87%, with estimated error of 4%) or the observation of mounting behavior (78%, with estimated error of 11%).
机译:巴西是世界第六大牛奶生产国,其年产量比其他生产国高出4%。牛奶产量增加的部分原因是由于使用了为该部门开发的几种技术,主要是与遗传和畜群管理有关的技术。奶牛的准确发情检测是奶牛繁殖效率的限制因素,并且被认为是繁殖领域最重要的缺陷。无法有效地检测发情可能会给生产者造成损失。基于历史数据和专业知识的定量预测方法可以从组织化的数据库中预测具有较低误差的发情模式。本研究通过对历史畜群数据集的中间点进行插值,比较了使用定量预测方法对速冻圈养荷斯坦奶牛的发情预测技术的精度。制定了规则基础,每个语句的权重值在0到1的范围内;这些限制用于生成相关模糊函数,该函数具有发情预测输出。在接下来的阶段中,将数据挖掘技术应用于运动速度,产奶量,泌乳天数和坐骑行为等参数,并建立决策树来分析预测奶牛发情的最重要参数。结果表明,发情发生率的预测可以通过奶牛运动的关联(87%,估计误差为4%)或观察坐骑行为(78%,估计误差为11%)来实现。

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