Enhancing Bayesian model updating in structural health monitoring via learnable mappings
Matteo Torzoni, Andrea Manzoni, Stefano Mariani

TL;DR
This paper introduces a deep learning-enhanced Bayesian approach for structural health monitoring that improves damage detection accuracy and computational efficiency by using learnable feature extraction and surrogate modeling.
Contribution
It presents a novel method combining neural networks with stochastic SHM techniques to improve damage-sensitive feature extraction and surrogate modeling for Bayesian updating.
Findings
High accuracy in parameter estimation across case studies
Significant reduction in computational cost
Effective damage detection under varying conditions
Abstract
In the context of structural health monitoring (SHM), the selection and extraction of damage-sensitive features from raw sensor recordings represent a critical step towards solving the inverse problem underlying the identification of structural health conditions. This work introduces a novel approach that employs deep neural networks to enhance stochastic SHM methods. A learnable feature extractor and a feature-oriented surrogate model are synergistically exploited to evaluate a likelihood function within a Markov chain Monte Carlo sampling algorithm. The feature extractor undergoes pairwise supervised training to map sensor recordings onto a low-dimensional metric space, which encapsulates the sensitivity to structural health parameters. The surrogate model maps structural health parameters to their feature representation. The procedure enables the updating of beliefs about structural…
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Taxonomy
TopicsInfrastructure Maintenance and Monitoring · Anomaly Detection Techniques and Applications · Fault Detection and Control Systems
