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Processing smart plug signals using machine learning

机译:使用机器学习处理智能插头信号

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The automatic identification of appliances through the analysis of their electricity consumption has several purposes in Smart Buildings including better understanding of the energy consumption, appliance maintenance and indirect observation of human activities. Electric signatures are typically acquired with IoT smart plugs integrated or added to wall sockets. We observe an increasing number of research teams working on this topic under the umbrella Intrusive Load Monitoring. This term is used as opposition to Non-Intrusive Load Monitoring that refers to the use of global smart meters. We first present the latest evolutions of the ACS-F database, a collections of signatures that we made available for the scientific community. The database contains different brands and/or models of appliances with up to 450 signatures. Two evaluation protocols are provided with the database to benchmark systems able to recognise appliances from their electric signature. We present in this paper two additional evaluation protocols intended to measure the impact of the analysis window length. Finally, we present our current best results using machine learning approaches on the 4 evaluation protocols.
机译:通过分析它们的电力消耗自动识别电器在智能建筑中有几种目的,包括更好地了解能源消耗,家电维护和人类活动的间接观察。通常使用集成或添加到墙壁套接字的物联网智能插头来获取电签发。我们在伞形侵入式负荷监测下遵守越来越多的研究团队,在伞形侵入性负荷监测下工作。该术语被用作非侵入式负载监测的反对,从而指的是使用全球智能仪表。我们首先介绍了ACS-F数据库的最新演变,我们为科学界提供了一系列签名。该数据库包含不同的品牌和/或型号,可提供多达450个签名。将数据库提供两个评估协议,以便能够从其电力签名识别设备的基准系统。我们在本文中展示了两个额外的评估协议,旨在衡量分析窗口长度的影响。最后,我们在4个评估协议上使用机器学习方法介绍我们当前的最佳结果。

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