Feature extraction and background information detection method using power demand

Masahiro Yoshida, Tomoya Imanishi, H. Nishi
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引用次数: 2

Abstract

Recently, many electricity retailers have been aggregating consumer power demand information from smart meter infrastructure, and applications that utilize these data are widely studied. For example, the estimation of customers' background information using their power demand information has attracted much interest; this information can be utilized in the marketing field for background-targeted advertising. In order to utilize power demand information effectively, an appropriate feature extraction method must be applied. In this paper, appropriate data extraction methods specific to power demand information are proposed. In the experiment, power demand data for Kawasaki city were used, and 19 feature data were extracted using the proposed method. The utility of the extracted features was assessed through the performance of classification estimation for two background information types, family structure and floor space. The classification problems are solved by applying two typical machine-learning algorithms, the support vector machine and k-nearest neighbor. In particular, analysis of variance (ANOVA) was applied to the 19 feature data, which were ranked according to the F value. Then, the n (n = [1, 2, 19]) best feature data were used as the input step by step, and the score for each condition was computed to derive the best feature set. According to the results, some of the feature data were considered to be irrelevant, and the best feature data set was successfully selected. Furthermore, thee scores when raw data were input were also computed and compared with the scores when the best feature data set was used. As a result, the performance was better when using processed data instead of raw data.
利用电力需求特征提取和背景信息检测的方法
最近,许多电力零售商一直在从智能电表基础设施中收集消费者电力需求信息,并广泛研究利用这些数据的应用。例如,利用客户的电力需求信息估计客户的背景信息引起了人们的广泛关注;这些信息可以用于营销领域的背景定向广告。为了有效地利用电力需求信息,必须采用合适的特征提取方法。本文针对电力需求信息提出了合适的数据提取方法。实验以川崎市电力需求数据为例,利用本文提出的方法提取了19个特征数据。通过对家庭结构和建筑面积两种背景信息类型进行分类估计,评估提取特征的效用。采用支持向量机和k近邻两种典型的机器学习算法来解决分类问题。其中,对19个特征数据进行方差分析(ANOVA),根据F值进行排序。然后,逐步将n (n =[1,2,19])个最优特征数据作为输入,计算每个条件的得分,得出最优特征集。根据结果,考虑了部分不相关的特征数据,成功选择出最佳特征数据集。此外,还计算了输入原始数据时的三个分数,并与使用最佳特征数据集时的分数进行了比较。因此,当使用处理过的数据而不是原始数据时,性能会更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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