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Measurement Uncertainty Evaluation for Sensor Network Metrology

  • Peter Harris*
  • , Peter Friis Østergaard
  • , Shahin Tabandeh
  • , Henrik Söderblom
  • , Gertjan Kok
  • , Marcel van Dijk
  • , Yuhui Luo
  • , Jonathan Pearce
  • , Declan Tucker
  • , Anupam Prasad Vedurmudi
  • , Maitane Iturrate-Garcia
  • *Corresponding author for this work
  • National Physics Laboratory (NPL)
  • Danish Technological Institute (DTI)
  • Dutch Metrology Institute (VSL)
  • German National Metrology Institute (PTB)
  • Federal Institute of Metrology (METAS)

Research output: Contribution to journalArticleScientificpeer-review

Abstract

Sensor networks, which are increasingly being used in a broad range of applications, constitute a measurement paradigm involving ensembles of sensors measuring possibly different quantities at a discrete sample of spatial locations and temporal points outside the laboratory. If sensor networks are to be considered as true metrology systems and the measurement results derived from them used for decision-making, such as in a regulatory context, it is important that the results are accompanied by reliable statements of measurement uncertainty. This paper gives a preview of some of the work undertaken within the European-funded ‘Fundamental principles of sensor network metrology (FunSNM)’ project to address the challenges of measurement uncertainty evaluation in some real-world sensor network applications. The applications demonstrate that sensor networks possess features related to the nature of the measured quantities, to the nature of the measurement model, and to the nature of the measured data. These features make conventional methods of measurement uncertainty evaluation, and established guidelines for measurement uncertainty evaluation difficult to apply. An overview of some of the modelling tools used to address the challenges of measurement uncertainty evaluation in those applications is given.

Original languageEnglish
Article number3
JournalMetrology
Volume5
Issue number1
DOIs
Publication statusPublished - Mar 2025
MoE publication typeA1 Journal article-refereed

Funding

The project (22DIT02 FunSNM) has received funding from the European Partnership on Metrology, co-financed from the European Union's Horizon Europe Research and Innovation Programme and by the Participating States.

Keywords

  • Gaussian process model
  • inverse problem
  • Kalman filter
  • Laplace transform
  • measurement uncertainty
  • sensor network

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