基于雾计算的工业4.0高效物联网方案

Goiuri Peralta, Markel Iglesias-Urkia, Marc Barcelo, R. Gomez, Adrian Moran, J. Bilbao
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引用次数: 130

摘要

工业4.0旨在通过收集和分析实时数据来大幅提高制造技术的生产力。这将物联网的无处不在与云计算的处理能力相结合,从而产生有助于优化决策过程的见解。不断增长的数据需求和传感设备数量的爆炸式增长,可能在通信、电池和计算能力方面受到高度限制,这带来了新的挑战,需要高效的物联网云架构。考虑到这一点,我们使用雾计算方法扩展了MQTT(事实上的物联网通信协议),该方法在云和物联网节点之间引入了低复杂性的计算层。在这种方法中,负责将数据从发布者传递给订阅者的MQTT代理被置于雾层。在这种特殊情况下引入中间层的目的是:i)通过预测技术预测未来的数据测量;Ii)作为通往上层的门户;iii)提供将计算成本高昂的数据处理工作从云端卸载到Fog的功能,从而最大限度地减少额外的延迟和运营费用。有了这种架构,物联网设备所需的传输可能会减少,因为发布者只需要在不匹配的情况下更新预测数据。我们通过对真实数据集上不同机器学习算法的能耗分析和模拟来验证我们的方法,并将其与传统的MQTT方案进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fog computing based efficient IoT scheme for the Industry 4.0
Industry 4.0 aims to dramatically enhance the productivity of manufacturing technologies through the collection and analysis of real-time data. This combines the ubiquity of the IoT with the processing capabilities of cloud computing to generate insights that help to optimize the decision making process. The increasing demand of data and the explosion in the number of sensing devices, which might be highly constrained in terms of communication, battery and computational power, introduce new challenges that need efficient IoT-Cloud architectures. With this in mind, we extend MQTT, the de facto IoT communication protocol, using a fog computing approach that introduces a low complexity computational layer between the Cloud and IoT nodes. In this approach, the MQTT broker, which is in charge of relaying data from publishers to subscribers, is placed at the fog layer. The purpose of introducing an intermediate layer to this particular scenario is to: i) predict future data measurements through prediction techniques; ii) operate as a gateway to upper layers; and iii) provide the capability to offload computationally expensive data processing jobs from the Cloud to the Fog, minimizing additional latency and operational expenses. With this architecture, the transmissions required from IoT devices may be reduced, since the publishers would only need to update the predicted data in case of mismatching. We validate our approach with an energy consumption analysis and simulations of different Machine Learning algorithms on a real dataset, and compare it with the traditional MQTT scheme.
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