Fog- iopm:用于工厂互联网数据管理的雾计算

IF 2.7 Q2 MULTIDISCIPLINARY SCIENCES
Yassine Boukhali, Mohammed Nabil Kabbaj, Mohammed Benbrahim
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引用次数: 0

摘要

传统的灌溉方法通常依赖于静态时间表,这限制了对动态生长条件的适应性。当前的物联网(IoT)和基于雾的灌溉系统面临着挑战,例如网络中断、高延迟、数据丢失以及由于计算灌溉需求的精度有限而导致的不准确的水分配。在精确灌溉中解决这些问题需要一个灵活和有弹性的架构,结合先进的技术来提高精度。本研究介绍了Fog- iopm,一个基于雾的系统,利用雾计算、LoRaWAN和微服务架构(MSA)来提高精准灌溉的可扩展性、可用性和资源效率。Fog-IoPM架构通过在本地存储数据,并在重新连接时将数据传输到云端,从而减少网络中断时的数据丢失,从而确保完整的数据集用于决策,并减少用水量。在两个室外区域和一个室内辣木种植原型区进行实验,比较系统实施前后收集的数据。结果表明,数据可用性有了显著提高,从65.10%提高到93.86%,丢包率降低到7%。此外,由于更精确、数据驱动的灌溉调度,用水量减少了72.72%。这些发现证明了Fog-IoPM在提高灌溉精度、优化资源利用以及为农业植物互联网(IoP)提供可扩展解决方案方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fog-IoPM: Fog computing for Internet of Plants data management
Traditional irrigation methods often rely on static schedules, which limits adaptability to dynamic growing conditions. Current Internet of Things (IoT) and fog based irrigation systems encounter challenges, such as network interruptions, high latency, data loss, and inaccurate water allocation due to limited precision in calculating irrigation requirements. Addressing these issues in precision irrigation requires a flexible and resilient architecture that combines advanced technologies for improved accuracy. This study introduces Fog-IoPM, a fog-based system, employing Fog computing, LoRaWAN, and a Microservices Architecture (MSA) to enhance scalability, availability, and resource efficiency in precision irrigation. The Fog-IoPM architecture mitigates data loss during network outages by locally storing data, which it transmits to the cloud upon reconnection, thus ensuring a complete dataset for decision-making and reducing water consumption. Experiments were conducted across two outdoor areas and an indoor prototype cultivated with Moringa oleifera Lam, comparing data collected before and after implementing the system. Results show a significant improvement in data availability, increasing from 65.10% to 93.86%, and a reduction in packet loss to 7%. Additionally, water usage decreased by 72.72% due to more precise, data-driven irrigation scheduling. These findings demonstrate the potential of Fog-IoPM to enhance irrigation accuracy, optimize resource use, and provide scalable solutions for the Internet of Plants (IoP) in agriculture.
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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
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