Design of real-time cow behavior monitoring system based on wireless sensor networks and K-Mmeans clustering algorithm

IF 0.4 Q4 ENGINEERING, MULTIDISCIPLINARY
Duc-Tan Tran
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引用次数: 2

Abstract

Introduction: The present article is the product of the research whose code CS20.04, carried out during 2020. This work was supported by the Institute of Information Technology (IOIT), Vietnam Academy of Science and Technology (VAST). Problem: Animal monitoring is a significant problem in the agricultural sector. The primary purpose is to monitor the health of animals regularly. Consequently, animal welfare and product quality could be improved, leading to an improvement in profit. Cow behavior recognition system was considered as the right solution for cow monitoring. The requirements for this kind of system are economical, high performance, and real-time. Objective: The research objective is to design a real-time cow monitoring system based on wireless sensor networks and the K-means clustering algorithm. Methodology: A wireless sensor node was designed to measure the collar-mounted acceleration data using an accelerometer. Firstly, the collected data were classified into three classes based on the VeDBA (Vector of Dynamic Body Acceleration) feature using the K-means algorithm. Then, the thresholds for VeDBA in the previous step were used to classify new data. Results: Three behaviors (including feeding, lying, and standing) were classified in real-time with the accuracy of classification about 89%.   Conclusion: The proposed system could be adapted in monitoring cow in real-time, the behavior classification could be implemented on the microcontroller. The results confirmed the reliability of the proposed system. Originality: The behavior classification could be implemented on the microcontroller for the first time in monitoring cow. Limitations: Only three behaviors were classified in the experiment.
基于无线传感器网络和K-Mmeans聚类算法的奶牛行为实时监测系统设计
简介:本文是2020年进行的代码为CS20.04的研究的产物。这项工作得到了越南科学技术院信息技术研究所(IOIT)的支持。问题:动物监测是农业部门的一个重大问题。主要目的是定期监测动物的健康状况。因此,动物福利和产品质量可以得到改善,从而提高利润。奶牛行为识别系统被认为是奶牛监测的正确解决方案。对这种系统的要求是经济、高性能和实时性。目的:设计一种基于无线传感器网络和K-means聚类算法的奶牛实时监测系统。方法:设计了一个无线传感器节点,使用加速度计测量安装在项圈上的加速度数据。首先,使用K-means算法,基于VeDBA(动态身体加速度矢量)特征将收集的数据分为三类。然后,使用前一步中VeDBA的阈值对新数据进行分类。结果:对三种行为(包括进食、躺着和站着)进行了实时分类,分类准确率约为89%。结论:该系统可用于奶牛的实时监测,行为分类可在单片机上实现。结果证实了所提出的系统的可靠性。独创性:在奶牛监测中,首次在微控制器上实现了行为分类。局限性:实验中只对三种行为进行了分类。
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来源期刊
Ingenieria Solidaria
Ingenieria Solidaria ENGINEERING, MULTIDISCIPLINARY-
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