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首页> 外文期刊>The Journal of Agricultural Science >Comparison of non-linear models to describe the lactation curves of milk yield and composition in Iranian Holsteins.
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Comparison of non-linear models to describe the lactation curves of milk yield and composition in Iranian Holsteins.

机译:非线性模型的比较描述牛奶产量和伊朗Holsteins组合物的哺乳曲线。

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摘要

In order to describe the lactation curves of milk yield (MY) and composition, six non-linear mathematical equations (Wood, Dhanoa, Sikka, Nelder, Hayashi and Dijkstra) were used. Data were 5 535 995 test-day records for MY, fat (FC) and protein (PC) contents and somatic cell score (SCS) from the first three lactations of Iranian Holstein cows that were collected on 2547 dairy herds in the period from 2000 to 2011 by the Animal Breeding Center of Iran. Each model was fitted to monthly production records of dairy cows using the NLIN and MODEL procedures in SAS and the parameters were estimated. The models were tested for goodness of fit using root-mean-square error (RMSE), Durbin-Watson statistic (DW) and Akaike's information criterion (AIC). The Wood and Dhanoa models provided the best fit of the lactation curve for MY in the first and second parities due to the lower values of RMSE and AIC than other models; but the Dijkstra model showed the best fit of milk lactation curve for third-parity dairy cows, FC, PC and SCS in the first three parities because of the lowest values of RMSE and AIC. Also, In general, the Sikka model did not fit the production data as well as the other equations. The results showed that the Dijkstra equation was able to estimate the time to the peak and peak MY more accurately than the other equations. However, the Wood equation provided more accurate predictions of peak MY at second- and third parities than the other equations. For first lactation FC, the Dijkstra equation was able to estimate the minimum FC and for second- and third-parity FC, the Wood equation provided more accurate predictions of minimum FC. For first- and second-lactation PC, the Dijkstra equation was able to estimate the minimum PC but for third parity, the minimum value of PC was predicted more accurately by the Wood model. The Dhanoa and Dijkstra equations for first lactation SCS and the Dhanoa equation for second- and third-lactation SCS were able to estimate the minimum SCS more accurately than the other equations. Overall, evaluation of different equations used in the current study indicated the potential of the non-linear functions for fitting monthly productive records of Holstein cows.
机译:为了描述牛奶产量(我的)和组成的泌乳曲线,使用了六种非线性数学方程式(木材,Dhanoa,Sikka,Nelder,Hayashi和Dijkstra)。来自2000年的2547个乳制牛群的前三个哺乳酸的第2547次乳牛牛群的前三个哺乳动物,数据为我的,脂肪(Fc)和蛋白质(PC)含量和体细胞分数(SCS)的测试日记录。到2011年由伊朗的动物养殖中心。每个模型都安装了使用SAS中的NLIN和模型程序的乳制品奶牛的每月生产记录,并且估计参数。使用根均方误差(RMSE),Durnin-Watson Statistic(DW)和Akaike的信息标准(AIC)测试模型的良好。由于RMSE和AIC的价值低于其他模型,木材和DHANOA模型为我的第一和第二个间隔提供了最佳乳液曲线。但由于RMSE和AIC的最低值,Dijkstra模型显示出前三个间隔的第三阶段乳制品奶牛,FC,PC和SCS的最佳乳汁曲线。此外,通常,Sikka模型不适合生产数据以及其他方程。结果表明,Dijkstra方程能够比其他方程更精确地估计峰值的时间和峰值。然而,木材方程提供了比其他方程在第二和第三个间隔的峰值的更准确的预测。对于第一哺乳FC,Dijkstra方程能够估计最小Fc和用于第二阶段和第三奇偶校验FC,但木材方程提供了更准确的最小FC的预测。对于第一和第二哺乳期PC,Dijkstra方程能够估计最小PC但第三个平等,通过木材模型更准确地预测PC的最小值。用于第一次哺乳期SC的DHANOA和DIJKSTRA方程和用于第二和第三哺乳期SC的DHANOA方程,能够比其他方程更精确地估计最小SC。总体而言,目前研究中使用的不同方程的评估表明了用于拟合Holstein奶牛的月度生产性记录的非线性功能的潜力。

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