Proceedings (Apr 2020)

A Hybrid Structural Health Monitoring Approach Based on Reduced-Order Modelling and Deep Learning

  • Luca Rosafalco,
  • Alberto Corigliano,
  • Andrea Manzoni,
  • Stefano Mariani

DOI
https://doi.org/10.3390/ecsa-6-06585
Journal volume & issue
Vol. 42, no. 1
p. 67

Abstract

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Recent advances in sensor technologies coupled with the development of machine/deep learning strategies are opening new frontiers in Structural Health Monitoring (SHM). Dealing with structural vibrations recorded with pervasive sensor networks, SHM aims at extracting meaningful damage-sensitive features from the data, shaped as multivariate time series, and taking real-time decisions concerning the safety level. Within this context, we discuss an approach able to detect and localize a structural damage avoiding any pre-processing of the acquired data. The method takes advantage of the capability of Deep Learning of Fully Convolutional Networks, trained during an offline SHM phase. As a hybrid model- and data-based solution is looked for, Reduced Order Models are also built in the offline phase to reduce the computational burden of the whole monitoring approach. Through a numerical benchmark test, we show how the proposed method can recognize and localize different damage states.

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