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AutoPlug: An automated metadata service for smart outlets

机译:AutoPlug:用于智能商店的自动化元数据服务

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Low-cost network-connected smart outlets are now available for monitoring, controlling, and scheduling the energy usage of electrical devices. As a result, such smart outlets are being integrated into automated home management systems, which remotely control them by analyzing and interpreting their data. However, to effectively interpret data and control devices, the system must know the type of device that is plugged into each smart outlet. Existing systems require users to manually input and maintain the outlet metadata that associates a device type with a smart outlet. Such manual operation is time-consuming and error-prone: users must initially inventory all outlet-to-device mappings, enter them into the management system, and then update this metadata every time a new device is plugged in or moves to a new outlet. Inaccurate metadata may cause systems to misinterpret data or issue incorrect control actions. To address the problem, we propose AutoPlug, a system that automatically identifies and tracks the devices plugged into smart outlets in real time without user intervention. AutoPlug combines machine learning techniques with time-series analysis of device energy data in real time to accurately identify and track devices on startup, and as they move from outlet-to-outlet. We show that AutoPlug achieves ~90% identification accuracy on real data collected from 13 distinct device types, while also detecting when a device changes outlets with an accuracy >90%. We implement an AutoPlug prototype on a Raspberry Pi and deploy it live in a real home for a period of 20 days. We show that its performance enables it to monitor up to 25 outlets, while detecting new devices or changes in devices with <;50s latency.
机译:低成本的联网智能插座现已可用于监视,控制和调度电气设备的能源使用。结果,这种智能插座被集成到自动家庭管理系统中,该系统通过分析和解释其数据来远程控制它们。但是,为了有效地解释数据和控制设备,系统必须知道插入每个智能插座的设备的类型。现有系统要求用户手动输入和维护将设备类型与智能插座关联的插座元数据。这种手动操作既耗时又容易出错:用户必须首先清点所有插座到设备的映射,将它们输入管理系统,然后每次插入新设备或移至新插座时更新此元数据。 。元数据不正确可能会导致系统误解数据或发出错误的控制操作。为了解决该问题,我们建议使用AutoPlug,该系统可自动识别并实时跟踪插入智能插座的设备,而无需用户干预。 AutoPlug将机器学习技术与设备能量数据的时间序列分析实时结合起来,以在启动时以及从一个插座到另一个插座的移动过程中准确地识别和跟踪设备。我们显示,AutoPlug对从13种不同的设备类型收集的真实数据实现约90%的识别精度,同时还可以检测设备何时以> 90%的精度更改插座。我们在Raspberry Pi上实现了AutoPlug原型,并将其在实际家庭中部署了20天。我们证明了它的性能使其能够监视多达25个插座,同时以小于50秒的延迟检测新设备或设备中的变化。

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