Peak load estimation based on consumer heating type classification powered by deep learning

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Názov: Peak load estimation based on consumer heating type classification powered by deep learning
Autori: Fürst, Kristoffer, 1990, Chen, Peiyuan, 1983
Zdroj: CIRED 2024 Vienna Workshop , Vienna, Austria IET Conference Proceedings. 2024(5):1010-1014
Predmety: Smart meter, Classification, Deep learning, Heating types, Peak load estimation
Popis: The heating system of a building could significantly impact the aggregated electricity peak load. It is in the interest of the distribution system operators (DSOs) to both know what type of heating system that is connected to the grid, and the impact of end-users changing their heating system. Focusing on the transition from non-electric heating systems to heat pumps, this paper investigates its impact on peak load consumption. A state-of-the-art heating type classification method using smart meter data and deep learning was used to to first classify the heating types of single-family dwellings. Building upon previous work, a multi-label approach was adopted with the classifier to accommodate buildings with multiple heating sources. To assess the impact of heating system changes, smart meter data were substituted with data from similar buildings equipped with heat pumps. This process was repeated for statistical confidence. A geographical analyses identify areas susceptible to a large peak load increase, demonstrating practical application.
Prístupová URL adresa: https://research.chalmers.se/publication/545114
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Items – Name: Title
  Label: Title
  Group: Ti
  Data: Peak load estimation based on consumer heating type classification powered by deep learning
– Name: Author
  Label: Authors
  Group: Au
  Data: <searchLink fieldCode="AR" term="%22Fürst%2C+Kristoffer%22">Fürst, Kristoffer</searchLink>, 1990<br /><searchLink fieldCode="AR" term="%22Chen%2C+Peiyuan%22">Chen, Peiyuan</searchLink>, 1983
– Name: TitleSource
  Label: Source
  Group: Src
  Data: <i>CIRED 2024 Vienna Workshop , Vienna, Austria IET Conference Proceedings</i>. 2024(5):1010-1014
– Name: Subject
  Label: Subject Terms
  Group: Su
  Data: <searchLink fieldCode="DE" term="%22Smart+meter%22">Smart meter</searchLink><br /><searchLink fieldCode="DE" term="%22Classification%22">Classification</searchLink><br /><searchLink fieldCode="DE" term="%22Deep+learning%22">Deep learning</searchLink><br /><searchLink fieldCode="DE" term="%22Heating+types%22">Heating types</searchLink><br /><searchLink fieldCode="DE" term="%22Peak+load+estimation%22">Peak load estimation</searchLink>
– Name: Abstract
  Label: Description
  Group: Ab
  Data: The heating system of a building could significantly impact the aggregated electricity peak load. It is in the interest of the distribution system operators (DSOs) to both know what type of heating system that is connected to the grid, and the impact of end-users changing their heating system. Focusing on the transition from non-electric heating systems to heat pumps, this paper investigates its impact on peak load consumption. A state-of-the-art heating type classification method using smart meter data and deep learning was used to to first classify the heating types of single-family dwellings. Building upon previous work, a multi-label approach was adopted with the classifier to accommodate buildings with multiple heating sources. To assess the impact of heating system changes, smart meter data were substituted with data from similar buildings equipped with heat pumps. This process was repeated for statistical confidence. A geographical analyses identify areas susceptible to a large peak load increase, demonstrating practical application.
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RecordInfo BibRecord:
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    Identifiers:
      – Type: doi
        Value: 10.1049/icp.2024.1965
    Languages:
      – Text: English
    PhysicalDescription:
      Pagination:
        PageCount: 5
        StartPage: 1010
    Subjects:
      – SubjectFull: Smart meter
        Type: general
      – SubjectFull: Classification
        Type: general
      – SubjectFull: Deep learning
        Type: general
      – SubjectFull: Heating types
        Type: general
      – SubjectFull: Peak load estimation
        Type: general
    Titles:
      – TitleFull: Peak load estimation based on consumer heating type classification powered by deep learning
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            NameFull: Fürst, Kristoffer
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            NameFull: Chen, Peiyuan
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            – D: 01
              M: 01
              Type: published
              Y: 2024
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              Value: 2024
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              Value: 5
          Titles:
            – TitleFull: CIRED 2024 Vienna Workshop , Vienna, Austria IET Conference Proceedings
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