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预测个体奶牛的采食量。

Predicting feed intake of the individual dairy cow.

作者信息

Halachmi I, Edan Y, Moallem U, Maltz E

机构信息

Agricultural Research Organization (A.R.O.), Ministry of Agriculture and Rural Development, the Volcani Center, P. O. Box 6, Bet Dagan 50250, Israel.

出版信息

J Dairy Sci. 2004 Jul;87(7):2254-67. doi: 10.3168/jds.S0022-0302(04)70046-6.

DOI:10.3168/jds.S0022-0302(04)70046-6
PMID:15328240
Abstract

The voluntary feed intake of the dairy cow is an important variable in dairy operation but is impossible to measure individually when cows are kept in groups or grazing. Existing formulas that calculate dry matter intake (DMI) from ration and performance variables are not applicable to an individual cow for online decision-making, such as daily ration density adjustment by computerized feeders in a milking robot. This led to a new DMI modeling approach of using only animal factors that are measurable online on an individual basis. In 1997 we published a small-scale attempt of this approach using milk yield (MY) and body weight (BW). In 2001, this approach was adopted by the National Research Council (NRC), using 4% fat-corrected milk rather than MY together with BW and time after calving. In the present study, we increased the number of cows. The model is a multiple regression, where the descriptive variables are the interrelation MY/BW, daily BW change, and milk fat including the effect of previous 2 d. The coefficients are calculated on daily basis, i.e., each day has its own coefficients. Our model differs from that of the NRC by: 1) the descriptive variable, 2) using daily coefficients to deal with the ever-changing physiological state of lactation, and 3) considering previous performance. Two data sets (60 cows together) acquired in 2 intervals of the Volcani Center herd were used to calibrate (18 cows) and test (42 cows) the model. Model validity was statistically tested, compared to that of the NRC, and was not rejected with 99.5% confidence.

摘要

奶牛的自愿采食量是奶牛养殖中的一个重要变量,但当奶牛成群饲养或放牧时,无法对个体采食量进行测量。现有的根据日粮和生产性能变量计算干物质采食量(DMI)的公式不适用于个体奶牛的在线决策,例如通过挤奶机器人中的计算机化喂料器进行日粮密度的每日调整。这导致了一种新的DMI建模方法,即仅使用可在个体基础上进行在线测量的动物因素。1997年,我们发表了一项关于此方法的小规模尝试,使用产奶量(MY)和体重(BW)。2001年,美国国家研究委员会(NRC)采用了这种方法,使用4%乳脂校正乳而不是MY,并结合BW和产犊后的时间。在本研究中,我们增加了奶牛数量。该模型是一个多元回归模型,描述变量是MY/BW的相互关系、每日BW变化以及包括前2天影响在内的乳脂。系数是每天计算的,即每天都有其自己的系数。我们的模型与NRC的模型不同之处在于:1)描述变量;2)使用每日系数来处理泌乳不断变化的生理状态;3)考虑先前的生产性能。使用从Volcani中心牛群的2个时间段获取的两个数据集(共60头奶牛)来校准(18头奶牛)和测试(42头奶牛)该模型。与NRC的模型相比,对模型有效性进行了统计学检验,并且在99.5%的置信度下未被拒绝。

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Lameness Affects Cow Feeding But Not Rumination Behavior as Characterized from Sensor Data.跛行影响奶牛采食量,但不会影响反刍行为,这可从传感器数据中得到证实。
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