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@INPROCEEDINGS{Vedurmudi:1027779,
      author       = {Vedurmudi and Miličević and Kok and Yong and Xu and Zheng
                      and Brintrup and Gruber and Tabandeh and Zaidan and
                      Xhonneux, André and Pearce},
      title        = {{A}utomation in {S}ensor {N}etwork {M}etrology: an
                      {O}verview of {M}ethods and their {I}mplementations},
      reportid     = {FZJ-2024-04085},
      pages        = {1-8},
      year         = {2024},
      comment      = {AUTOMATION IN SENSOR NETWORK METROLOGY: AN OVERVIEW OF
                      METHODS AND THEIR IMPLEMENTATIONS},
      booktitle     = {AUTOMATION IN SENSOR NETWORK
                       METROLOGY: AN OVERVIEW OF METHODS AND
                       THEIR IMPLEMENTATIONS},
      abstract     = {Sensor networks are an integral component of the ongoing
                      automation of industrial processes in a diverse range of
                      sectors. As sensors and, by extension, sensor networks
                      provide information about physical quantities in the form of
                      measurements, the development and adaptation of metrological
                      practices that ensure the reliability, accuracy, and
                      traceability of the data thus generated is essential. A
                      complementary development of tools for the implementation of
                      metrological methods is necessary. In this contribution we
                      present a review of the tools and methods relevant to the
                      automated application of metrological practices to
                      large-scale transient sensor networks with an emphasis on
                      uncertainty aware soft- and middleware, data fusion and
                      machine learning. In this review, we will discuss the
                      state-of-the-art with respect to general metrological
                      methods and specific soft- and middleware tools and motivate
                      future developments in sensor network metrology.},
      month         = {Jul},
      date          = {2024-07-26},
      organization  = {XXIV IMEKO World Congress "Think
                       Metrology", Hamburg (Germany), 26 Jul
                       2024 - 29 Aug 2024},
      cin          = {IEK-10},
      cid          = {I:(DE-Juel1)IEK-10-20170217},
      pnm          = {1122 - Design, Operation and Digitalization of the Future
                      Energy Grids (POF4-112) / 1121 - Digitalization and Systems
                      Technology for Flexibility Solutions (POF4-112)},
      pid          = {G:(DE-HGF)POF4-1122 / G:(DE-HGF)POF4-1121},
      typ          = {PUB:(DE-HGF)8 / PUB:(DE-HGF)7},
      doi          = {10.34734/FZJ-2024-04085},
      url          = {https://juser.fz-juelich.de/record/1027779},
}