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Effective non-intrusive load monitoring of buildings based on a novel multi-descriptor fusion with dimensionality reduction

机译:基于新型多描述符融合的基础具有维度减少的新型多侵入性的非侵入性负荷监测

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摘要

Recently, a growing interest has been dedicated towards developing and implementing low-cost energy efficiency solutions in buildings. Accordingly, non-intrusive load monitoring has been investigated in various academic and industrial projects for capturing device-specific consumption footprints without any additional hardware installation. However, its performance should be improved further to enable an accurate appliance identification from the aggregated load. This paper presents an efficient non-intrusive load monitoring framework that consists of the following main components: (i) a novel fusion of multiple time-domain features is proposed to extract appliance fingerprints; (ii) a dimensionality reduction scheme is introduced to be applied to the fused time-domain features, which relies on fuzzy-neighbors preserving analysis based QRdecomposition. The latter can not only reduce feature dimensionality, but it can also effectively decrease the intra-class distances and increase the extra-class distances of appliance features; and (iii) a powerful decision bagging tree classifier is implemented to accurately classify electrical devices using the reduced features. Empirical evaluations performed on three real datasets, namely ACS-F2, REDD and WHITED collected at different sampling rates have shown a promising performance, according to the accuracy and F1 score achieved using the proposed non-intrusive load monitoring system. Reported accuracy and F1 score have reached both 100% for the WHITED dataset, 99.79% and 99.76% for the REDD dataset, and up to 99.41% and 98.93% for the ACS-f2 dataset, respectively. The outstanding performance achieved using the proposed solution determines its effectiveness in collecting individual-appliance consumption data and in promoting energy saving behaviors.
机译:最近,越来越兴趣致力于在建筑物中开发和实施低成本的能效解决方案。因此,在没有任何额外的硬件安装的情况下,在各种学术和工业项目中研究了非侵入式负荷监测,用于捕获特定于设备的消费足迹。但是,应进一步改进其性能以使得能够从聚合负载中进行准确的设备识别。本文提出了一种有效的非侵入式负载监测框架,包括以下主要组件:(i)提出了多个时域特征的新融合,以提取设备指纹; (ii)引入维度减少方案以应用于熔融的时域特征,依赖于基于模糊邻居的基于QRDecomposith的分析。后者不仅可以减少特征维度,而且还可以有效地降低课堂上的距离并增加设备特征的额外级别; (iii)实现了强大的决策树木分类器,以便使用缩小功能来准确地分类电气设备。根据使用所提出的非侵入式负载监测系统实现的精度和F1分数,在三个真实数据集中执行的经验评估,即ACS-F2,REDD和WHITED收集的redd和Chited。报告的准确性和F1分别为REDD数据集达到了99.79%和99.76%,分别为ACS-F2数据集的99.79%和99.76%,高达99.41%和98.93%。使用所提出的解决方案实现的出色性能决定了其在收集个人电器消费数据以及促进节能行为方面的有效性。

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