
<oai_dc:dc xmlns:dc="http://purl.org/dc/elements/1.1/" xmlns:oai_dc="http://www.openarchives.org/OAI/2.0/oai_dc/">
  <dc:subject xml:lang="eng">domain adversarial neural networks; generalization; non-intrusive load monitoring; semi-supervised learning</dc:subject>
  <dc:type>info:eu-repo/semantics/article</dc:type>
  <dc:date>2023</dc:date>
  <dc:publisher>MDPI</dc:publisher>
  <dc:source>Sensors 23</dc:source>
  <dc:coverage xml:lang="eng">23 strana</dc:coverage>
  <dc:rights>http://creativecommons.org/licenses/by/4.0/legalcode</dc:rights>
  <dc:description xml:lang="eng">Abstract: Non-intrusive load monitoring (NILM) considers different approaches for disaggregating
energy consumption in residential, tertiary, and industrial buildings to enable smart grid services.
The main feature of NILM is that it can break down the bulk electricity demand, as recorded by
conventional smart meters, into the consumption of individual appliances without the need for
additional meters or sensors. Furthermore, NILM can identify when an appliance is in use and
estimate its real-time consumption based on its unique consumption patterns. However, NILM
is based on machine learning methods and its performance is dependent on the quality of the
training data for each appliance. Therefore, a common problem with NILM systems is that they may
not generalize well to new environments where the appliances are unknown, which hinders their
widespread adoption and more significant contributions to emerging smart grid services. The main
goal of the presented research is to apply a domain adversarial neural network (DANN) approach to
improve the generalization of NILM systems. The proposed semi-supervised algorithm utilizes both
labeled and unlabeled data and was tested on data from publicly available REDD and UK-DALE
datasets. The results show a 3% improvement in generalization performance on highly uncorrelated
data, indicating the potential for real-world applications.</dc:description>
  <dc:identifier>https://phaidrabg.bg.ac.rs/o:30446</dc:identifier>
  <dc:identifier>doi:10.3390/s23031444</dc:identifier>
  <dc:language>eng</dc:language>
  <dc:title xml:lang="eng">A Semi-supervised Approach for Improving Generalization in Non-Intrusive Load Monitoring</dc:title>
  <dc:format>application/pdf</dc:format>
  <dc:format>1168200 bytes</dc:format>
  <dc:creator id="https://orcid.org/0000-0002-3934-6346">Pujić, Dea</dc:creator>
  <dc:creator id="https://orcid.org/0000-0002-6620-479X">Tomašević, Nikola</dc:creator>
  <dc:creator id="https://orcid.org/0000-0002-8443-3932">Batić, Marko</dc:creator>
</oai_dc:dc>
