[HTML][HTML] Deep learning-based structural health monitoring

YJ Cha, R Ali, J Lewis, O Büyükӧztürk - Automation in Construction, 2024 - Elsevier
This article provides a comprehensive review of deep learning-based structural health
monitoring (DL-based SHM). It encompasses a broad spectrum of DL theories and …

Deep learning in computational mechanics: a review

L Herrmann, S Kollmannsberger - Computational Mechanics, 2024 - Springer
The rapid growth of deep learning research, including within the field of computational
mechanics, has resulted in an extensive and diverse body of literature. To help researchers …

[HTML][HTML] Understanding physics-informed neural networks: techniques, applications, trends, and challenges

A Farea, O Yli-Harja, F Emmert-Streib - AI, 2024 - mdpi.com
Physics-informed neural networks (PINNs) represent a significant advancement at the
intersection of machine learning and physical sciences, offering a powerful framework for …

Knowledge-informed FIR-based cross-category filtering framework for interpretable machinery fault diagnosis under small samples

R Liu, X Ding, S Liu, H Zheng, Y Xu, Y Shao - Reliability Engineering & …, 2025 - Elsevier
Relying on sufficient training data, the existing fault diagnosis methods rarely focus on the
methodological interpretability and the data scarcity in real industrial scenarios …

[PDF][PDF] High-efficiency finite element model updating of bridge structure using a novel physics-guided neural network

N Wan, M Huang, Y Lei - Int. J. Struct. Stab. Dyn, 2024 - researchgate.net
N. Wan, M. Huang & Y. Lei under high uncertainties, which means the introduction of the
physics-based loss function significantly enhances the parameters updating ability of the …

[HTML][HTML] On the data-driven description of lattice materials mechanics

I Ben-Yelun, L Irastorza-Valera, L Saucedo-Mora… - Results in …, 2024 - Elsevier
In the emerging field of mechanical metamaterials, using periodic lattice structures as a
primary ingredient is relatively frequent. However, the choice of aperiodic lattices in these …

Physics-informed and graph neural networks for enhanced inverse analysis

D Di Lorenzo, V Champaney, C Ghnatios… - Engineering …, 2024 - emerald.com
Purpose This paper presents an original approach for learning models, partially known, of
particular interest when performing source identification or structural health monitoring. The …

A Reduced Order Model conditioned on monitoring features for estimation and uncertainty quantification in engineered systems

K Vlachas, T Simpson, A Garland, DD Quinn… - arxiv preprint arxiv …, 2024 - arxiv.org
Reduced Order Models (ROMs) form essential tools across engineering domains by virtue of
their function as surrogates for computationally intensive digital twinning simulators …

Parametric extended physics-informed neural networks for solid mechanics with complex mixed boundary conditions

G Cao, X Wang - Journal of the Mechanics and Physics of Solids, 2025 - Elsevier
Continuum solid mechanics form the foundation of numerous theoretical studies and
engineering applications. Distinguished from traditional mesh-based numerical solutions …

[HTML][HTML] Reduced Order Modeling conditioned on monitored features for response and error bounds estimation in engineered systems

K Vlachas, T Simpson, A Garland, DD Quinn… - … Systems and Signal …, 2025 - Elsevier
Abstract Reduced Order Models (ROMs) form essential tools across engineering domains
by virtue of their function as surrogates for computationally intensive digital twinning …