基于非负矩阵分解的时间序列用电量分析

Akira Kusaba, T. Kuboyama, T. Hashimoto
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引用次数: 0

摘要

为了发展一个可持续发展的社会,能源管理系统在许多组织中得到应用。千叶商业大学(CUC)是日本首次完全转向可再生能源电力的机构之一。在校园内,对每个房间的空调、雷电等能耗进行监控。这些监控数据通过智能仪表存储在数据服务器上。为了提高减少用电量的意识,我们需要总结大量的数据,以便我们可以轻松地解释数据,并找出我们可以负担得起的地方节省用电量。本文采用非负矩阵分解法(NMF)对时间序列用电量模式进行归纳,分析了一段时间内的用电量数据。通过对数据的分析表明,因子矩阵的降维可视化使我们可以很容易地解释低水平的用电量数据,并对节能有一定的认识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time Series Electricity Consumption Analysis using Non-negative Matrix Factorization
For developing a sustainable society, energy management systems are utilized in many organizations. Chiba University of Commerce (CUC) is one of the organizations that has completely switched to renewable energy-sourced electricity for the first time in Japan. In the campus, energy consumption due to air conditioning, lightning and so on at each room is monitored. These monitoring data are stored on a data server via smart meters. In order to promote awareness to reduce electricity consumption, we need to summarize a vast amount of data so that we can interpret the data easily, and find out where we can afford to save electricity consumption. In this paper, we employ non-negative matrix factorization (NMF) for summarizing time-series electricity consumption patterns to analyze the electricity consumption data over time. Through the data analysis, we show that the visualization of factor matrices by dimensionality reduction enables us easily to interpret the low level electricity consumption data, and it gives us some awareness on energy saving.
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