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Edge Intelligence for Real-Time Data Analytics in an IoT-Based Smart Metering System

机译:基于物联网智能计量系统中的实时数据分析的边缘智能

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摘要

The recent widespread deployment of smart meters on a global scale has created an immense amount of fine-grained smart meter data, which requires effective and real-time analysis. Although the cloud center has powerful data processing capabilities, it is insufficient for real-time analysis, especially in the case of huge and distributed data volumes. Correspondingly, intelligent edge computing is merged with smart meters in this work to create an Internet-of-Things-based architecture for an edge-intelligence-enabled smart meter (EI-smart meter) system. To achieve its potential, we also propose two (one offline and one online) ultra-low-latency cloud-edge collaboration schemes regarding real-time data analytics. Unlike the existing work, we integrate a deep neural network (DNN) into the cloud-edge collaboration scheme in a bid to reduce execution time and improve the adaptability. Finally, numerical results are presented to validate the performance of our proposed system.
机译:最近在全球范围内广泛部署智能仪表已经创造了巨大的细粒度智能仪表数据,这需要有效和实时分析。虽然云中心具有强大的数据处理能力,但它不足以实时分析,特别是在巨大和分布式数据卷的情况下。相应地,智能边缘计算与此工作中的智能仪表合并,以创建基于Internet的基于互联网的架构,可用于启用边缘智能仪表(EI-SMART仪表)系统。为了实现其潜力,我们还提出了关于实时数据分析的两次(一个离线和一个在线)超低潜伏的云边缘协作方案。与现有的工作不同,我们将深度神经网络(DNN)集成到云边缘协作方案中,以减少执行时间并提高适应性。最后,提出了数值结果来验证我们提出的系统的性能。

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