Non-Intrusive Electrical Appliances Monitoring and Classification using K-Nearest Neighbors

Mohammad Mahmudur Rahman Khan, M. Siddique, S. Sakib
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引用次数: 24

Abstract

Non-Intrusive Load Monitoring (NILM) is the method of detecting an individual device’s energy signal from an aggregated energy consumption signature [1]. As existing energy meters provide very little to no information regarding the energy consumptions of individual appliances apart from the aggregated power rating, the spotting of individual appliances’ energy usages by NILM will not only provide consumers the feedback of appliance-specific energy usage but also lead to the changes of their consumption behavior which facilitate energy conservation. B Neenan et al. [2] have demonstrated that direct individual appliance-specific energy usage signals lead to consumers’ behavioral changes which improves energy efficiency by as much as 15%. Upon disaggregation of an energy signal, the signal needs to be classified according to the appropriate appliance. Hence, the goal of this paper is to disaggregate total energy consumption data to individual appliance signature and then classify appliance-specific energy loads using a prominent supervised classification method known as K-Nearest Neighbors (KNN). To perform this operation, we have used a publicly accessible dataset of power signals from several houses known as the REDD dataset. Before applying KNN, data is preprocessed for each device. Then KNN is applied to check whether their energy consumption signature is separable or not. KNN is applied with K=5.
基于k近邻的非侵入式电器监测与分类
非侵入式负载监测(NILM)是一种从汇总的能耗特征中检测单个设备能量信号的方法[1]。由于现有的电能表除了提供综合的额定功率外,几乎没有提供个别电器的能源消耗资料,因此,NILM不仅可以为消费者提供个别电器的能源使用情况的反馈,还可以改变消费者的消费行为,从而促进节约能源。B Neenan等人[2]已经证明,直接的个人电器特定的能源使用信号会导致消费者的行为改变,从而将能源效率提高15%。对能量信号进行分解后,需要根据适当的器具对该信号进行分类。因此,本文的目标是将总能耗数据分解为单个设备签名,然后使用称为k -近邻(KNN)的著名监督分类方法对设备特定的能源负荷进行分类。为了执行此操作,我们使用了一个可公开访问的数据集,该数据集包含来自多个房屋的电力信号,称为REDD数据集。在应用KNN之前,对每个设备的数据进行预处理。然后用KNN来检验它们的能耗特征是否可分。当K=5时应用KNN。
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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