Individual power profile estimation of residential appliances using low frequency smart meter data

H. G. C. P. Dinesh, P. Perera, G. Godaliyadda, M. Ekanayake, J. B. Ekanayake
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引用次数: 10

Abstract

We propose a new Non-Intrusive Load Monitoring (NILM) approach for appliances power profile/signal estimation at low sampling rate (1 s or greater). The proposed method relay on two main phases: identification of turned on appliance combination in a given time period and estimation of the active power consumption signal of each individual appliances in that combination. Unlike most existing NILM method that rely on multiple measurement at high sampling rates, appliances identification of this paper rely on a Karhunen Loéve (KL) expansion based spectral signature approach which only need active power measurements at a low sampling rate. Then the estimation of the power signal of the identified appliances is newly presented in this paper based on modified version of mean-shift clustering algorithm and Bayesian classification. The proposed method was validated by using two public databases: tracebase and REDD. The presented results demonstrate the ability of the proposed method to accurately estimate individual active power signal of turned on appliance combinations in real households.
使用低频智能电表数据估算家用电器的个别功率分布
我们提出了一种新的非侵入式负载监测(NILM)方法,用于低采样率(1秒或更大)下的电器功率分布/信号估计。所提出的方法以两个主要阶段为基础:在给定时间段内识别打开的电器组合和估计该组合中每个单独电器的有功功耗信号。与大多数依赖于高采样率下多次测量的NILM方法不同,本文的器具识别依赖于基于Karhunen losamuve (KL)展开的频谱签名方法,该方法只需要在低采样率下测量有功功率。在此基础上,提出了一种基于改进的均值偏移聚类算法和贝叶斯分类的被识别电器功率信号估计方法。利用tracebase和REDD两个公共数据库对该方法进行了验证。结果表明,该方法能够准确估计实际家庭中打开的电器组合的单个有功功率信号。
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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