基于图的低速率能量分解信号处理方法

V. Stanković, J. Liao, L. Stanković
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引用次数: 51

摘要

基于图的信号处理(GSP)是一个新兴的领域,它基于使用由图索引的离散信号来表示数据集。受最近GSP在图像处理和信号滤波方面的成功启发,在本文中,我们展示了由于设备负载特征的平滑性,GSP如何应用于非侵入式设备负载监控(NALM)。NALM指的是将房屋的总能耗分解为使用的单个电器。在低采样率(以分钟为单位)下,NALM是一个难题,因为存在显著的随机噪声、未知的基本负载、许多具有相似功率特征的家用电器,以及大多数家用电器(例如,微波炉、烤面包机)通常仅运行一分钟多一点的事实。在本文中,我们提出了一种不同于传统方法的NALM方法,通过使用图信号表示有功功率签名数据集。我们开发了一种正则化图方法,其中通过最大化底层图信号的平滑性,我们能够执行分解。使用公开可用的REDD数据集的仿真结果表明,相对于更复杂的基于隐马尔可夫模型的方法,GSP在能量分解和竞争性能方面具有潜力。
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A graph-based signal processing approach for low-rate energy disaggregation
Graph-based signal processing (GSP) is an emerging field that is based on representing a dataset using a discrete signal indexed by a graph. Inspired by the recent success of GSP in image processing and signal filtering, in this paper, we demonstrate how GSP can be applied to non-intrusive appliance load monitoring (NALM) due to smoothness of appliance load signatures. NALM refers to disaggregating total energy consumption in the house down to individual appliances used. At low sampling rates, in the order of minutes, NALM is a difficult problem, due to significant random noise, unknown base load, many household appliances that have similar power signatures, and the fact that most domestic appliances (for example, microwave, toaster), have usual operation of just over a minute. In this paper, we proposed a different NALM approach to more traditional approaches, by representing the dataset of active power signatures using a graph signal. We develop a regularization on graph approach where by maximizing smoothness of the underlying graph signal, we are able to perform disaggregation. Simulation results using publicly available REDD dataset demonstrate potential of the GSP for energy disaggregation and competitive performance with respect to more complex Hidden Markov Model-based approaches.
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