Sensors (May 2023)

A Model-Assisted Probability of Detection Framework for Optical Fiber Sensors

  • Francesco Falcetelli,
  • Nan Yue,
  • Leonardo Rossi,
  • Gabriele Bolognini,
  • Filippo Bastianini,
  • Dimitrios Zarouchas,
  • Raffaella Di Sante

DOI
https://doi.org/10.3390/s23104813
Journal volume & issue
Vol. 23, no. 10
p. 4813

Abstract

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Optical fiber sensors (OFSs) represent an efficient sensing solution in various structural health monitoring (SHM) applications. However, a well-defined methodology is still missing to quantify their damage detection performance, preventing their certification and full deployment in SHM. In a recent study, the authors proposed an experimental methodology to qualify distributed OFSs using the concept of probability of detection (POD). Nevertheless, POD curves require considerable testing, which is often not feasible. This study takes a step forward, presenting a model-assisted POD (MAPOD) approach for the first time applied to distributed OFSs (DOFSs). The new MAPOD framework applied to DOFSs is validated through previous experimental results, considering the mode I delamination monitoring of a double-cantilever beam (DCB) specimen under quasi-static loading conditions. The results show how strain transfer, loading conditions, human factors, interrogator resolution, and noise can alter the damage detection capabilities of DOFSs. This MAPOD approach represents a tool to study the effects of varying environmental and operational conditions on SHM systems based on DOFSs and for the design optimization of the monitoring system.

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