基于物联网的动物监测技术

J. Boga, T.Sunitha, K.Manjula
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引用次数: 0

摘要

在将放牧动物引入葡萄园之前,改进现有的畜牧业实践是必不可少的。为了提供这种帮助,有必要监测和调整动物的行踪和行动,特别是它们的进食姿势。使用这种策略,羊可以在农业地区(如葡萄园和果园)吃草,而不用担心伤害它们。基于这些发现,我们创建了一个基于物联网的平台来追踪动物的习性。为了方便葡萄园内无人看管的牧羊,该系统将本地物联网网络与具有数据分配和存储能力的云平台集成在一起,用于从动物那里收集数据。因此,该系统可以倾向于羊群。通过云平台内置的机器学习功能,可以轻松分析和解释物联网(IoT)数据。因此,我们不仅要概述平台,还要提供一些特定于机器学习平台的结果。更具体地说,测试着眼于这个平台如何识别和表征与动物姿势相关的疾病。本页提供了测试方法的比较,因为使用了多种算法。
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Technology based on the Internet of Things to Monitor Animals
Improving existing animal husbandry practices is essential before introducing grazing animals to vineyards. In order to provide this type of assistance, it is necessary to monitor and condition the animals’ whereabouts and actions, especially their feeding posture. Using this strategy, sheep could graze in agricultural areas (such vineyards and orchards) without fear of harming them. Based on these findings, we have created an IoT-based platform for tracking animal habits. To facilitate unattended shepherding of ovine within vineyard areas, the system integrates a local Internet of Things network for data collection from the animals with a cloud platform with data dispensationalso storage competences. As a result, the system can tend to ovine flocks. Easy analysis and interpretation of Internet of Things (IoT) data is made possible by the machine learning capabilities built into the cloud platform. Therefore, we shall not only outline the platform but also supply some machine learning platform-specific results. To be more specific, testing looked at how well this platform could identify and characterize disorders related to animal posture. This page offers a comparison of the tested approaches because multiple algorithms were used.
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