Sitkowska B, Kolenda M, Piwczyski D
Department of Biotechnology and Animal Genetics, Faculty of Animal Breeding and Biology, UTP University of Science and Technology, Mazowiecka 28, 85-084 Bydgoszcz, Poland.
Asian-Australas J Anim Sci. 2020 Mar;33(3):408-415. doi: 10.5713/ajas.19.0190. Epub 2019 Jul 1.
The aim of the paper was to compare the fit of data derived from daily automatic milking systems (AMS) and monthly test-day records with the use of lactation curves; data was analysed separately for primiparas and multiparas.
The study was carried out on three Polish Holstein-Friesians (PHF) dairy herds. The farms were equipped with an automatic milking system which provided information on milking performance throughout lactation. Once a month cows were also subjected to test-day milkings (method A4). Most studies described in the literature are based on test-day data; therefore, we aimed to compare models based on both test-day and AMS data to determine which mathematical model (Wood or Wilmink) would be the better fit.
Results show that lactation curves constructed from data derived from the AMS were better adjusted to the actual milk yield (MY) data regardless of the lactation number and model. Also, we found that the Wilmink model may be a better fit for modelling the lactation curve of PHF cows milked by an AMS as it had the lowest values of Akaike information criterion, Bayesian information criterion, mean square error, the highest coefficient of determination values, and was more accurate in estimating MY than the Wood model. Although both models underestimated peak MY, mean, and total MY, the Wilmink model was closer to the real values.
Models of lactation curves may have an economic impact and may be helpful in terms of herd management and decision-making as they assist in forecasting MY at any moment of lactation. Also, data obtained from modelling can help with monitoring milk performance of each cow, diet planning, as well as monitoring the health of the cow.
本文旨在通过泌乳曲线比较每日自动挤奶系统(AMS)数据和每月测定日记录数据的拟合情况;分别对初产牛和经产牛的数据进行分析。
该研究在三个波兰荷斯坦 - 弗里生(PHF)奶牛场进行。这些农场配备了自动挤奶系统,可提供整个泌乳期的挤奶性能信息。每月还对奶牛进行一次测定日挤奶(方法A4)。文献中描述的大多数研究基于测定日数据;因此,我们旨在比较基于测定日和AMS数据的模型,以确定哪种数学模型(伍德或威尔明克)拟合效果更好。
结果表明,无论泌乳次数和模型如何,由AMS数据构建的泌乳曲线对实际产奶量(MY)数据的拟合效果更好。此外,我们发现威尔明克模型可能更适合模拟由AMS挤奶的PHF奶牛的泌乳曲线,因为它的赤池信息准则、贝叶斯信息准则、均方误差值最低,决定系数值最高,并且在估计MY方面比伍德模型更准确。虽然两个模型都低估了产奶高峰、平均产奶量和总产奶量,但威尔明克模型更接近实际值。
泌乳曲线模型可能具有经济影响,并且在牛群管理和决策方面可能有所帮助,因为它们有助于预测泌乳期任何时刻的产奶量。此外,通过建模获得的数据有助于监测每头奶牛的产奶性能、饮食规划以及奶牛健康状况。