首页> 外文期刊>Computers and Electronics in Agriculture >Estimation of grass intake on pasture for dairy cows using tightly and loosely mounted di- and tri-axial accelerometers combined with bite count
【24h】

Estimation of grass intake on pasture for dairy cows using tightly and loosely mounted di- and tri-axial accelerometers combined with bite count

机译:使用紧密和松散安装的二轴和三轴加速度计以及咬合计数来估算奶牛牧场上的草摄入量

获取原文
获取原文并翻译 | 示例
           

摘要

The aim of the present study was to investigate the use of accelerometer sensors to estimate grazing time. The estimated grazing time was furthermore combined with bite frequency data in order to model grass intake. Differing levels of stocking densities and grass height were used. Two field experiments were conducted: one in 2009 (EX1) using 20 Holstein cows with 7 h daily grazing and ad libitum feeding inside, and another in 2010 (EX2) using 10 Holstein cows with 7.5 h daily grazing and restricted feeding inside. For both experiments, data collected were (i) activity data measured by accelerometers, (ii) manually registered bite counts and (iii) estimation of grass intake from energy requirements. In EX2 the necessity of tight sensor fixation was tested. Head mounted accelerometers were used for estimation of grazing time, which was computed using threshold values of raw downloaded data from one axis. Loosely mounted sensors attached to and hanging from the neck collar, compared to tightly mounted sensors on the head of cows did not result in significantly different estimations of grazing time. Bite count recordings showed cow individual differences in bite frequency (ranging from 48 to 62 bites min(-1)) for the same day on the same paddock. The best estimation of grass intake was for cows which were fed restricted indoors (approximate to 30% of diet). This was modelled by using grazing time and bite frequency and resulted in prediction intervals ranging from +/- 1.2 to +/- 1.4 kg DM cow(-1) day(-1) for continuous grazing with an initial grass height of 11 cm. Adding individual bite frequency per cow to the model together with the grazing time, reduced the intake prediction interval from an average of +/- 2.3 kg DM cow(-1) day(-1) to +/- 1.3 kg DM cow(-1) day(-1) in a continuous grazing system.
机译:本研究的目的是调查使用加速度传感器来估计放牧时间。此外,将估计的放牧时间与咬食频率数据结合起来,以模拟草的摄入量。使用不同水平的放养密度和草高。进行了两次野外实验:一项是在2009年(EX1),使用了20只荷斯坦奶牛,每天放牧7小时,内部随意采食;另一项是在2010年(EX2),使用了10只Holstein奶牛,每天吃草7.5小时,并在内部限制喂食。对于这两个实验,收集的数据是(i)用加速度计测量的活动数据,(ii)手动记录的咬数和(iii)根据能量需求估算草的摄入量。在EX2中,测试了紧密传感器固定的必要性。头戴式加速度计用于估算放牧时间,该时间是使用从一个轴下载的原始数据的阈值计算得出的。与紧紧安装在牛头上的传感器相比,松紧地安装在脖子上并悬挂在脖子上的传感器不会导致对放牧时间的明显不同。叮咬声记录显示同一天在同一围场上奶牛的叮咬频率(从48叮咬min(-1)到最小,分别为48到62)。最佳的草料摄入量估计是在室内限制饲喂的母牛(约占日粮的30%)。这是通过使用放牧时间和叮咬频率进行建模的,得出的预测间隔范围为+/- 1.2至+/- 1.4 kg DM牛(-1)天(-1),用于连续放牧,初始草高为11 cm。将每头母牛的个体叮咬频率与放牧时间一起添加到模型中,将采食量预测间隔从平均+/- 2.3 kg DM牛(-1)天(-1)减少到+/- 1.3 kg DM牛(- 1)在连续放牧系统中的第(-1)天。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号