Robust Non-Intrusive Load Monitoring (NILM) with unknown loads

Shirantha Welikala, Chinthaka Dinesh, R. Godaliyadda, M. Ekanayake, J. Ekanayake
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引用次数: 12

Abstract

A Non-Intrusive Load Monitoring (NILM) method, robust even in the presence of unlearned or unknown appliances (UUAs) is presented in this paper. In the absence of such UUAs, this NILM algorithm is capable of accurately identifying each of the turned-ON appliances as well as their energy levels. However, when there is an UUA or set of UUAs are turned-ON during a particular time window, proposed NILM method detects their presence. This enables the operator to detect presence of anomalies or unlearned appliances in a household. This quality increases the reliability of the NILM strategy and makes it more robust compared to existing NILM methods. The proposed Robust NILM strategy (RNILM) works accurately with a single active power measurement taken at a low sampling rate as low as one sample per second. Here first, a unique set of features for each appliance was extracted through decomposing their active power signal traces into uncorrelated subspace components (SCs) via a high-resolution implementation of the Karhunen-Loeve (KLE). Next, in the appliance identification stage, through considering power levels of the SCs, the number of possible appliance combinations were rapidly reduced. Finally, through a Maximum a Posteriori (MAP) estimation, the turned-ON appliance combination and/or the presence of UUA was determined. The proposed RNILM method was validated using real data from two public databases: Reference Energy Disaggregation Dataset (REDD) and Tracebase. The presented results demonstrate the capability of the proposed RNILM method to identify, the turned-ON appliance combinations, their energy level disaggregation as well as the presence of UUAs accurately in real households.
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具有未知负载的鲁棒非侵入式负载监测(NILM)
本文提出了一种非侵入式负载监测(NILM)方法,即使在存在未学习或未知设备(uua)的情况下也具有鲁棒性。在没有此类uas的情况下,该NILM算法能够准确识别每个打开的设备及其能量水平。然而,当存在一个UUA或一组UUA在特定的时间窗口内打开时,所提出的NILM方法可以检测它们的存在。这使得操作员能够检测到家庭中存在的异常或未学习的电器。这种质量提高了NILM策略的可靠性,使其比现有的NILM方法更健壮。所提出的鲁棒NILM策略(RNILM)在低采样率(低至每秒一个采样)下进行单次有功功率测量时精确工作。首先,通过高分辨率的Karhunen-Loeve (KLE)实现将每个设备的有源功率信号迹线分解为不相关的子空间分量(sc),提取出每个设备的一组独特特征。接下来,在器具识别阶段,通过考虑sc的功率水平,可能的器具组合的数量迅速减少。最后,通过最大后验(MAP)估计,确定打开设备组合和/或UUA的存在。利用参考能量分解数据集(REDD)和Tracebase两个公共数据库的真实数据对RNILM方法进行了验证。所提出的结果表明,RNILM方法能够准确识别实际家庭中打开的电器组合,其能量水平分解以及uas的存在。
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