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在测试虚拟围栏训练方案时评估山羊的学习、行为和应激水平。

Assessing learning, behaviour, and stress level in goats while testing a virtual fencing training protocol.

作者信息

Wilms L, Hamidi D, Lüntzel C H U, Hamidi M, Komainda M, Palme R, Isselstein J, Waiblinger S, Egerbacher M

机构信息

Department of Crop Sciences, Grassland Science, Georg-August-University of Göttingen, Von-Siebold-Str. 8, 37075 Göttingen, Germany.

Department of Crop Sciences, Grassland Science, Georg-August-University of Göttingen, Von-Siebold-Str. 8, 37075 Göttingen, Germany.

出版信息

Animal. 2025 Feb;19(2):101413. doi: 10.1016/j.animal.2024.101413. Epub 2024 Dec 28.

Abstract

Virtual fencing (VF) is a modern fencing technology using Global Positioning System-enabled collars which emit acoustic signals and, if the animal does not respond, electric pulses. Studies with cattle indicate successful learning and no distinct negative impact on the animals' behaviours and stress level. However, the number of studies testing VF with goats is relatively small. In this study, we used VF collars to test a VF training protocol recently applied to heifers to assess the development of goats' learning to avoid the electric pulse, their behaviour, and faecal cortisol metabolites (FCMs) as an indicator for physiological stress in a grazing experiment. Twenty adult 'Blobe' goats with offspring were divided into two groups and assigned to the VF or physical fencing treatment in a cross-over design with two periods of 12 days each. The VF treatment involved a virtual fence at one side of the paddock, to which the goats were gradually introduced over the first 2 days (additional physical fence or posts as visual support). On day eight, the grazing areas were enlarged by shifting the virtual fence and one side of the physical fencing treatment. The experiment lasted 4 h per day. During this time, the following behaviours were recorded via instantaneous scan sampling of all goats every 2 min: grazing, lying, standing, standing vigilant, walking, and running. Additionally, faecal samples were collected once, or twice daily and FCM concentrations were measured. The VF collars delivered the number of acoustic signals and electric pulses and the duration of the acoustic signals. The daily number of acoustic signals and electric pulses of each goat was used to calculate a 'success ratio'. A significant increase in the success ratio and a general decrease in the signal duration indicate the successful association of acoustic signals and electric pulses at the group level. Behavioural analyses revealed no clear influence of the VF treatment except for standing vigilant. Virtually fenced goats stood significantly more vigilant than physically fenced ones. However, free-moving kids could have had an influence. The VF treatment had no significant effect on the FCM concentrations, which decreased significantly over time. In summary, goats showed signs of learning when avoiding receiving electric pulses by responding appropriately to the acoustic signals. A higher occurrence of vigilance behaviour may suggest insecurity, but FCM concentrations did not indicate increased physiological stress. Future research needs to confirm these results and test VF with goats under practical conditions.

摘要

虚拟围栏(VF)是一种现代围栏技术,它使用配备全球定位系统的项圈,这些项圈会发出声音信号,如果动物没有反应,还会发出电脉冲。对牛的研究表明学习效果良好,且对动物的行为和应激水平没有明显负面影响。然而,用山羊测试虚拟围栏的研究数量相对较少。在本研究中,我们使用虚拟围栏项圈来测试最近应用于小母牛的虚拟围栏训练方案,以评估山羊在放牧实验中学习避免电脉冲的进展情况、它们的行为以及粪便皮质醇代谢物(FCM)作为生理应激指标的情况。二十只带着幼崽的成年“布洛贝”山羊被分成两组,并采用交叉设计,每组为期12天,分别接受虚拟围栏或实体围栏处理。虚拟围栏处理在围场一侧设置了虚拟围栏,在前两天逐渐让山羊适应(额外设置实体围栏或柱子作为视觉辅助)。在第八天,通过移动虚拟围栏和实体围栏处理的一侧来扩大放牧区域。实验每天持续4小时。在此期间,每隔2分钟对所有山羊进行即时扫描取样,记录以下行为:吃草、躺卧、站立、警惕站立、行走和奔跑。此外,每天收集一次或两次粪便样本,并测量FCM浓度。虚拟围栏项圈记录声音信号和电脉冲的数量以及声音信号的持续时间。每只山羊每天的声音信号和电脉冲数量用于计算“成功率”。成功率显著提高且信号持续时间总体下降表明在群体水平上声音信号和电脉冲成功关联。行为分析显示,除了警惕站立外,虚拟围栏处理没有明显影响。虚拟围栏中的山羊比实体围栏中的山羊显著更常警惕站立。然而,自由活动的幼崽可能产生了影响。虚拟围栏处理对FCM浓度没有显著影响,FCM浓度随时间显著下降。总之,山羊在通过对声音信号做出适当反应来避免接受电脉冲方面表现出学习迹象。更高频率的警惕行为可能表明不安全,但FCM浓度并未表明生理应激增加。未来的研究需要证实这些结果,并在实际条件下用山羊测试虚拟围栏。

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