基于运动传感器数据的奶牛采食行为阈值预测及其在牧场自动挤奶系统中的应用

Q2 Agricultural and Biological Sciences Dairy Science & Technology Pub Date : 2023-01-29 DOI:10.3390/dairy4010009
B. Cullen, Zelin Li, Saranika Talukder, Long Cheng, E. Jongman
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引用次数: 1

摘要

动物行为的监测和测量可能对提高动物生产和福利有价值。本研究旨在通过运动传感器(IceTag)的输出来制定阈值,以预测奶牛的放牧、站立、行走和躺卧行为。在澳大利亚维多利亚州北部,29头泌乳奶牛在牧场为基础的奶牛自愿运动生产系统中吃草。传感器每隔1分钟记录运动数据。总共使用了5818 min的奶牛观测时间。我们开发了两种方法:(1)仅使用IceTag躺着指数和步数,(2)每种行为的IceTag躺着指数、步数和运动指数。第二种方法对放牧行为的预测效果最好,灵敏度为92%,特异性为60%。然后使用阈值来预测奶牛在两个时期的行为。平均而言,在这两个时间段,奶牛一天中有38%的时间在吃草,38%的时间躺着,19%的时间站着,5%的时间走路。预测单头奶牛放牧时间与产奶量和挤奶频率均呈正相关。所开发的阈值在预测奶牛行为方面是有效的,并且可以应用于测量牧场乳制品生产中的行为。
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Development of Thresholds to Predict Grazing Behaviour of Dairy Cows from Motion Sensor Data and Application in a Pasture-Based Automatic Milking System
The monitoring and measurement of animal behaviour may be valuable for improving animal production and welfare. This study was designed to develop thresholds to predict the grazing, standing, walking, and lying behaviour of dairy cows from motion sensor (IceTag) output. The experiment included 29 lactating cows grazed in a pasture-based dairy production system with voluntary cow movement in northern Victoria, Australia. Sensors recorded motion data at 1 min intervals. A total of 5818 min of cow observations were used. Two approaches were developed using (1) the IceTag lying index and steps only and (2) the IceTag lying index, steps, and motion index for each behaviour. Grazing behaviour was best predicted by the second approach, which had a sensitivity of 92% and specificity of 60%. The thresholds were then used to predict cow behaviour during two periods. On average, across both time periods, cows spent 38% of the day grazing, 38% lying, 19% standing, and 5% walking. Predicted individual cow grazing time was positively correlated with both milk production and milking frequency. The thresholds developed were effective at predicting cow behaviours and can be applied to measure behaviour in pasture-based dairy production.
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来源期刊
Dairy Science & Technology
Dairy Science & Technology 农林科学-食品科技
CiteScore
2.30
自引率
0.00%
发文量
0
审稿时长
2 months
期刊介绍: Information not localized
期刊最新文献
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