Development of a cloud-based IoT system for livestock health monitoring using AWS and python

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-08-08 DOI:10.1016/j.atech.2024.100524
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Abstract

The agriculture industry is currently facing significant challenges in effectively monitoring the health of livestock. Traditional methods of health monitoring are often labor-intensive, inefficient, and insufficiently responsive to the needs of modern farming. As the number of IoT devices in agriculture proliferates, issues of scalability and computational load have become prominent, necessitating efficient and scalable solutions. This research introduces a cloud-based architecture aimed at enhancing livestock health monitoring. This system is designed to track critical health indicators such as movement patterns, body temperature, and heart rate, utilizing AWS for robust data handling and Python for data processing and real-time analytics. The proposed system incorporates Narrow Band IoT (Nb IoT) technology, which is optimized for low-bandwidth, long-range communication, making it suitable for rural and remote farming locations. The architecture's scalability allows for the effective management of varying numbers of IoT devices, which is essential for adapting to changing herd sizes and farm scales. Preliminary experiments conducted to assess the system's performance have demonstrated its durability and effectiveness, indicating a successful integration of AWS IoT Cloud services with the deployed IoT devices. Furthermore, the study explores the implementation of predictive analytics to facilitate proactive health management in livestock. By predicting potential health issues before they become apparent, the system can offer significant improvements in animal welfare and farm efficiency. The integration of cloud computing and IoT not only meets the growing technological needs of modern agriculture but also sets a new benchmark in the development of sustainable farming practices. The findings from this research could have broad implications for the future of livestock management, potentially leading to widespread adoption of technology-driven health monitoring systems in agriculture. This would help in optimizing the health management of livestock globally, thereby enhancing productivity and sustainability in the agricultural sector.

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利用 AWS 和 python 开发基于云的牲畜健康监测物联网系统
目前,农业在有效监控牲畜健康方面面临着巨大挑战。传统的健康监测方法往往耗费大量人力,效率低下,无法充分满足现代农业的需求。随着农业领域物联网设备数量的激增,可扩展性和计算负荷问题变得十分突出,因此需要高效、可扩展的解决方案。本研究介绍了一种基于云的架构,旨在加强牲畜健康监测。该系统旨在跟踪运动模式、体温和心率等关键健康指标,利用 AWS 进行稳健的数据处理,利用 Python 进行数据处理和实时分析。拟议的系统采用了窄带物联网(Nb IoT)技术,该技术针对低带宽、长距离通信进行了优化,使其适用于农村和偏远地区的农业生产。该架构的可扩展性允许有效管理不同数量的物联网设备,这对于适应不断变化的畜群规模和农场规模至关重要。为评估系统性能而进行的初步实验证明了该系统的耐用性和有效性,表明 AWS 物联网云服务与部署的物联网设备已成功集成。此外,该研究还探讨了如何实施预测分析,以促进牲畜的主动健康管理。通过在潜在健康问题显现之前对其进行预测,该系统可显著改善动物福利和农场效率。云计算和物联网的整合不仅满足了现代农业日益增长的技术需求,还为可持续农业实践的发展树立了新的标杆。这项研究的结果可能会对未来的牲畜管理产生广泛影响,并有可能促使技术驱动的健康监测系统在农业中得到广泛应用。这将有助于优化全球牲畜的健康管理,从而提高农业部门的生产力和可持续性。
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