使用智能插头自动识别电器

A. Ridi, Christophe Gisler, J. Hennebert
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引用次数: 47

摘要

我们报告了对自动识别电器的信号处理和分类算法的评估。该系统基于低成本的智能插头,定期测量电值,并产生特定于电器消耗的时间序列测量值。与生物识别应用类似,这种电子签名可以用来识别使用中的器具的类型。在本文中,我们提出使用基于时间导数和时间二阶导数特征的动态特征,并比较了不同的分类算法,包括k -最近邻和高斯混合模型。我们使用最近记录的电子签名数据库ACS-Fl及其会话间协议来评估我们的算法命题。特征与分类器的最佳组合准确率为93.6%。
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Automatic identification of electrical appliances using smart plugs
We report on the evaluation of signal processing and classification algorithms to automatically recognize electric appliances. The system is based on low-cost smart-plugs measuring periodically the electricity values and producing time series of measurements that are specific to the appliance consumptions. In a similar way as for biometric applications, such electric signatures can be used to identify the type of appliance in use. In this paper, we propose to use dynamic features based on time derivative and time second derivative features and we compare different classification algorithms including K-Nearest Neighbor and Gaussian Mixture Models. We use the recently recorded electric signature database ACS-Fl and its intersession protocol to evaluate our algorithm propositions. The best combination of features and classifiers shows 93.6% accuracy.
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