Real-time Bayesian damage identification enabled by sparse PCE-Kriging meta-modelling for continuous SHM of large-scale civil engineering structures
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2022Referencia bibliográfica
Published version: García-Macías, E., & Ubertini, F. (2022). Real-time Bayesian damage identification enabled by sparse PCE-Kriging meta-modelling for continuous SHM of large-scale civil engineering structures. Journal of Building Engineering, 59, 105004.
Resumen
This work presents a surrogate model-based Bayesian model updating (BMU) approach for automated damage
identification of large-scale structures, which outperforms methods currently available in the literature by effectively solving the real-time damage identification challenge. The computational difficulties involved in Bayesian
inference using intensive numerical models are circumvented by implementing a high-fidelity surrogate model and
an adaptive Markov Chain Monte Carlo (MCMC) algorithm. The developed surrogate model combines adaptive
sparse polynomial chaos expansion (PCE) and Kriging meta-modelling. The optimal order of the polynomials
in the PCE is automatically identified by a model selection technique for sparse linear models, the least-angle
regression (LAR) algorithm. Then, the optimal PCE is inserted into a Kriging predictor as the trend term, while
the stochastic term is fitted through a global optimization algorithm. Afterwards, the surrogate model bypassing
the original numerical model is used for BMU exploiting monitoring data extracted from continuous ambient vibration measurements. The computational demands of the MCMC algorithm are kept minimal by implementing
an adaptive Metropolis sampling with delayed rejection (DRAM). The effectiveness of the proposed methodology
is demonstrated through three case studies: an analytical benchmark; a planar truss structure; and a real case study
of an instrumented historical tower, the Sciri Tower in Italy. The presented results demonstrate that the proposed
BMU approach is compatible with real-time Structural Health Monitoring (SHM), providing promising evidence
for the development of digital twins with superior probabilistic damage identification capabilities.