English

A digital twin framework for civil engineering structures

Numerical Analysis 2023-11-10 v2 Machine Learning Numerical Analysis

Abstract

The digital twin concept represents an appealing opportunity to advance condition-based and predictive maintenance paradigms for civil engineering systems, thus allowing reduced lifecycle costs, increased system safety, and increased system availability. This work proposes a predictive digital twin approach to the health monitoring, maintenance, and management planning of civil engineering structures. The asset-twin coupled dynamical system is encoded employing a probabilistic graphical model, which allows all relevant sources of uncertainty to be taken into account. In particular, the time-repeating observations-to-decisions flow is modeled using a dynamic Bayesian network. Real-time structural health diagnostics are provided by assimilating sensed data with deep learning models. The digital twin state is continually updated in a sequential Bayesian inference fashion. This is then exploited to inform the optimal planning of maintenance and management actions within a dynamic decision-making framework. A preliminary offline phase involves the population of training datasets through a reduced-order numerical model and the computation of a health-dependent control policy. The strategy is assessed on two synthetic case studies, involving a cantilever beam and a railway bridge, demonstrating the dynamic decision-making capabilities of health-aware digital twins.

Keywords

Cite

@article{arxiv.2308.01445,
  title  = {A digital twin framework for civil engineering structures},
  author = {Matteo Torzoni and Marco Tezzele and Stefano Mariani and Andrea Manzoni and Karen E. Willcox},
  journal= {arXiv preprint arXiv:2308.01445},
  year   = {2023}
}
R2 v1 2026-06-28T11:46:52.092Z