A general approach to assessing SHM reliability considering sensor failures based on information theory
Metadata
Show full item recordAuthor
Wen Wu, Wen; Cantero Chinchilla, Sergio; Prescott, Darren; Remenyte Prescott, Rasa; Chiachío Ruano, ManuelEditorial
Elsevier
Materia
Monitoring system reliability Structural health monitoring Bayesian inverse problem
Date
2024-06-19Referencia bibliográfica
Wu, W. et. al. Reliability Engineering and System Safety 250 (2024) 110267. [https://doi.org/10.1016/j.ress.2024.110267]
Sponsorship
European Union’s Horizon 2020 research and innovation program under the Marie Skłodowska- Curie grant agreement No. 859957Abstract
Structural health monitoring systems (SHM) involve implementing damage identification strategies to determine
the health state of structures. However, it is important to pay close attention to the system degradation,
especially the effect of sensor degradation on the SHM system reliability. This paper aims to formulate a
general framework for evaluating SHM reliability that takes sensor failures into account. The framework
involves modelling sensor network degradation processes using Petri nets (PNs) and calculating the expected
information gain of the sensor network. The PNs allow for identifying the location and number of sensor
failures. Kullback–Leibler (KL) divergence with Bayesian inversion is used to calculate the expected information
loss due to sensor failure. Two case studies are used to illustrate the methodology: (i) a damage localization
scheme using an ellipse-based time-of-flight (ToF) model and (ii) a damage identification scheme using a guided
waves damage interaction model. The proposed framework is demonstrated by both numerical and physical
experimental case studies. Whereas the case studies are specific to an ultrasonic guided wave monitoring
system, the proposed approach is generic. The proposed model is able to predict the health condition state
and utility of SHM, which can potentially help in constructing asset management models in various industries.