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Feature extraction and classification using power demand information

机译:使用电力需求信息进行特征提取和分类

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Electrical load monitoring, by means of a smart meter, is getting more and more popular these days. Power demand information from smart meters is drawing attention among researchers, since it could be applied for power demand control. Providing attractive services with smart meters encourage electricity retailers to utilize demand side management, which could be a solution for energy-related problems in our society. In this paper, a novel service is proposed by classifying private information from the household electricity usage. The private information is estimated using feature vectors extracted from time series analysis of power demand information. In order to extract feature vectors effectively, two extraction methods were proposed: simple statistical method, and Discrete Fourier Transform (DFT) based extraction method. Then, Support Vector Machines (SVMs) classifier is carried out after the optimization of hyper-parameters. As the estimated information, both family structure and floor space were selected. The classification result is evaluated using F-measure and accuracy. As a result, the accuracy of DFT-based classification was superior to the statistical method for detecting the floor space in a house.
机译:如今,借助智能电表进行的电力负载监控越来越受欢迎。来自智能电表的电力需求信息正在引起研究人员的注意,因为它可以用于电力需求控制。通过智能电表提供有吸引力的服务会鼓励电力零售商利用需求侧管理,这可能是解决我们社会中与能源相关的问题的解决方案。在本文中,通过对家庭用电的私人信息进行分类,提出了一种新颖的服务。使用从电力需求信息的时间序列分析中提取的特征向量来估计私有信息。为了有效地提取特征向量,提出了两种提取方法:简单统计方法和基于离散傅里叶变换(DFT)的提取方法。然后,在超参数优化之后执行支持向量机(SVM)分类器。作为估计信息,选择了家庭结构和占地面积。使用F量度和准确性评估分类结果。结果,基于DFT的分类的准确性优于用于检测房屋面积的统计方法。

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