Automatic segmentation of electricity consumption data series with Jensen-Shannon divergence

István Pintér, Lóránt Kovács, A. Oláh, Rajmund Drenyovszki, David Tisza, Kálmán Tornai
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引用次数: 2

Abstract

In Smart Grids the Information and Communication Technologies (ICT) could be used to better manage both consumption and production of electricity. The increasing presence of renewable energy sources in production and the permeation of novel consumption types (e.g. Plug-in Hybrid Electric Vehicles (PHEV)) will obviously cause the increase the fluctuation of electrical energy. One possible solution to these problems is development of novel methods for investigating electrical power consumption data series. As the existing learning algorithms of pattern classification are suitable for discovering internal structures of large datasets, it is important to generate a training/testing/validation learning database from existing measurements (e.g. from smart meters), actually via segmentation and labeling by hand. In this paper we propose a novel method for the automatic segmentation with a predefined confidence level. The algorithm is based on the generalized Jensen-Shannon divergence (JSD), and it estimates the change-points (CPTs) in electrical power consumption data. Both the method and some recent results in segmenting one household's power consumption data are presented in this paper.
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基于Jensen-Shannon散度的电力消费数据序列自动分割
在智能电网中,信息和通信技术(ICT)可用于更好地管理电力的消费和生产。可再生能源在生产中的不断增加以及新型消费类型(如插电式混合动力汽车(PHEV))的渗透将明显导致电能波动的增加。解决这些问题的一个可能的方法是开发新的方法来调查电力消耗数据系列。由于现有的模式分类学习算法适用于发现大型数据集的内部结构,因此从现有的测量(例如智能电表)中生成训练/测试/验证学习数据库非常重要,实际上是通过手工分割和标记。本文提出了一种基于预定义置信水平的图像自动分割方法。该算法基于广义Jensen-Shannon散度(JSD),对电力消耗数据中的变化点进行估计。本文介绍了该方法和最近在对单个家庭的电力消费数据进行分割方面取得的一些成果。
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