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Predicting Energy Consumption Through Machine Learning Using a Smart-Metering Architecture

机译:使用智能仪表架构通过机器学习预测能耗

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摘要

Extensive Internet of Things (IoT) networks consisting of billions of smart interconnected devices can serve a plethora of functions. The scale of these networks poses several architectural challenges, especially when combined with the essential requirements of reliable device telemetry, automated remote management, and multilayer security. In this article, we outline a flexible smart-metering architecture that can provide device monitoring and management in a unified manner over disparate underlying network technologies, such as nar row-band IoT (NB-IoT), LTECat- M1, Zigbee, Wi-Fi, Wireless Smart Ubiquitous Network (Wi-SUN), longrange wide area network (LoRaWAN), and Sigfox.
机译:由数十亿个智能互连设备组成的广泛的物联网(IoT)网络可以提供多种功能。这些网络的规模带来了一些架构挑战,尤其是与可靠的设备遥测,自动远程管理和多层安全性的基本要求结合使用时。在本文中,我们概述了一种灵活的智能计量架构,该架构可以通过不同的基础网络技术(如nar行带IoT(NB-IoT),LTECat-M1,Zigbee,Wi- Fi,无线智能无处不在网络(Wi-SUN),远程广域网(LoRaWAN)和Sigfox。

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