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Residential Appliance Identification Based on Spectral Information of Low Frequency Smart Meter Measurements

机译:基于低频智能电表测量频谱信息的家用电器识别

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摘要

A nonintrusive load monitoring (NILM) method for residential appliances based on uncorrelated spectral components of an active power consumption signal is presented. This method utilizes the Karhunen Loéve expansion to breakdown the active power signal into subspace components (SCs) so as to construct a unique information rich appliance signature. Unlike existing NILM techniques that rely on multiple measurements at high sampling rates, this method works effectively with a single active power measurement taken at a low sampling rate. After constructing the signature data base, SC level power conditions were introduced to reduce the number of possible appliance combinations prior to applying the maximum a posteriori estimation. Then, an appliances matching algorithm was presented to identify the turned-on appliance combination in a given time window. After identifying the turned-on appliance combination, an energy estimation algorithm was introduced to disaggregate the energy contribution of each individual appliance in that combination. The proposed NILM method was validated by using two public databases: 1) tracebase; and 2) reference energy disaggregation data set. The presented results demonstrate the ability of the proposed method to accurately identify and disaggregate individual energy contributions of turned-on appliance combinations in real households.
机译:提出了一种基于有功功耗信号的不相关频谱分量的家用电器非侵入式负载监控(NILM)方法。该方法利用Karhunen Loe've扩展将有功功率信号分解为子空间组件(SC),从而构造一个独特的信息丰富的设备签名。与现有的NILM技术需要以高采样率进行多次测量不同,该方法可有效地以低采样率进行一次有功功率测量。在构建签名数据库之后,在应用最大后验估计之前,引入SC级功率条件以减少可能的电器组合数量。然后,提出了一种设备匹配算法,以在给定的时间窗口中识别已打开的设备组合。在确定打开的电器组合后,引入了一种能量估计算法,以分解该组合中每个单独电器的能量贡献。通过使用两个公共数据库对提出的NILM方法进行了验证:1)tracebase; 2)参考能量分解数据集。提出的结果证明了所提出的方法能够准确地识别和分解实际家庭中打开的电器组合的单个能量贡献的能力。

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