4.4 Article

Non-intrusive load monitoring using multi-label classification methods

期刊

ELECTRICAL ENGINEERING
卷 103, 期 1, 页码 607-619

出版社

SPRINGER
DOI: 10.1007/s00202-020-01078-4

关键词

Non-intrusive load monitoring; Load disaggregation; Multi-label classification

资金

  1. Natural Sciences and Engineering Research Council of Canada [RGPIN 262151]
  2. China Scholarship Council

向作者/读者索取更多资源

Non-intrusive load monitoring is a technique used by power companies to monitor and analyze residential energy usage by disaggregating aggregated power load measurements for a household into individual appliance loads. In recent years, advances in the field have applied machine learning algorithms, but multi-label classification algorithms have received little attention in this area.
Non-intrusive load monitoring is a technique to help power companies monitor and analyze residential energy usage. Aggregated power load measurements for a household (i.e., the signal on the main powerline) are disaggregated into individual appliance loads by examining the appliance-specific power consumption characteristics. These data can then be used to modify consumer behaviors via detailed billing and/or demand-pricing tariffs. A number of advances in the field have been reported in the past two decades, many of which apply machine learning algorithms. However, these algorithms usually only assign one label to an example, which is a poor match to the monitoring problem, meaning elaborate encodings or classifier ensembles are needed. A more elegant solution would be to use algorithms that assign multiple labels to a single example. Thesemulti-label classificationalgorithms have received very little attention in this field to date. We conduct an experimental investigation of four multi-label classification algorithms for non-intrusive monitoring and find that the best one is superior to the existing reported results on multiple real-world household datasets.

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