Low-Rate Non-Intrusive Appliance Load Monitoring Based on Graph Signal Processing

Bing Zhang, Shengjie Zhao, Qingjiang Shi, Rongqing Zhang
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引用次数: 2

Abstract

Thanks to the large-scale smart meters deployments around the world, non-intrusive appliance load monitoring (NILM) is receiving popularity. It aims to disaggregate the total electricity load of a home into individual appliances without resorting to any specific appliance power monitors. NILM is worthy of broad attention owing to its facilitation in energy savings. This paper regards NILM as a classification task and proposes a two-step method based on graph signal processing (GSP). In the first step, a smoothest solution is obtained by minimizing the regularization term. In the second step, gradient projection method, which uses the obtained minimizer as a start point, is adopted to optimize the while objective function, where NILM is regarded as a constrained nonlinear programming problem. The experiment results based on the open-access data set REDD clearly demonstrate that the proposed GSP-based method achieves improved performance compared with other state-of-the-art low-rate NILM approaches.
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基于图信号处理的低速率非侵入式电器负荷监测
由于智能电表在世界范围内的大规模部署,非侵入式设备负载监控(NILM)越来越受欢迎。它的目的是将一个家庭的总电力负荷分解为单个电器,而不依赖于任何特定的电器电力监视器。NILM在节能方面具有促进作用,值得广泛关注。本文将NILM看作一个分类任务,提出了一种基于图信号处理(GSP)的两步法。第一步,通过最小化正则化项得到最平滑解。第二步,采用梯度投影法,以求出的最小值为起点,对目标函数进行优化,将NILM视为约束非线性规划问题。基于开放存取数据集REDD的实验结果清楚地表明,与其他最先进的低速率NILM方法相比,所提出的基于gsp的方法获得了更高的性能。
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