智能插座非侵入式负载识别

S. Barker, Mohamed Musthag, David E. Irwin, P. Shenoy
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引用次数: 23

摘要

对能源效率的兴趣日益增加,加上嵌入式网络传感器成本的下降,降低了出口级计量的成本。如果这些趋势继续下去,在不久的将来,新建筑将能够安装“智能”插座,它可以实时监控和传输插座的用电量,成本几乎与传统插座相同。普遍部署智能插座的一个问题是,用户目前必须识别插入每个电表的特定设备,然后在新设备插入插座时手动更新软件中的插座元数据。正确的元数据对于解释历史出口能源数据和使用数据进行建筑管理都很重要。为了解决这个问题,我们提出了非侵入式负载识别(NILI),它可以自动识别连接到智能插座的设备,而无需任何人工干预。特别是,在我们的NILI方法中,我们从时间序列能量数据中识别出直观且易于计算的特征集,然后使用众所周知的分类器。我们的结果在从多个真实家庭收集的插座级能量轨迹上,在15种设备类型中实现了超过90%的准确性。
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Non-intrusive load identification for smart outlets
An increasing interest in energy-efficiency combined with the decreasing cost of embedded networked sensors is lowering the cost of outlet-level metering. If these trends continue, new buildings in the near future will be able to install “smart” outlets, which monitor and transmit an outlets power usage in real time, for nearly the same cost as conventional outlets. One problem with the pervasive deployment of smart outlets is that users must currently identify the specific device plugged into each meter, and then manually update the outlets meta-data in software whenever a new device is plugged into the outlet. Correct meta-data is important in both interpreting historical outlet energy data and using the data for building management. To address this problem, we propose Non-Intrusive Load Identification (NILI), which automatically identifies the device attached to a smart outlet without any human intervention. In particular, in our approach to NILI, we identify an intuitive and simple-to-compute set of features from time-series energy data and then employ well-known classifiers. Our results achieve accuracy of over 90% across 15 device types on outlet-level energy traces collected from multiple real homes.
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