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Bibliographic Details
Main Authors: Varetti, Eugenio, Torzoni, Matteo, Tezzele, Marco, Manzoni, Andrea
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.13919
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author Varetti, Eugenio
Torzoni, Matteo
Tezzele, Marco
Manzoni, Andrea
author_facet Varetti, Eugenio
Torzoni, Matteo
Tezzele, Marco
Manzoni, Andrea
contents This work shows how adaptivity can enhance value realization of digital twins in civil engineering. We focus on adapting the state transition models within digital twins represented through probabilistic graphical models. The bi-directional interaction between the physical and virtual domains is modeled using dynamic Bayesian networks. By treating state transition probabilities as random variables endowed with conjugate priors, we enable hierarchical online learning of transition dynamics from a state to another through effortless Bayesian updates. We provide the mathematical framework to account for a larger class of distributions with respect to the current literature on digital twins. To compute dynamic policies with precision updates we solve parametric Markov decision processes through reinforcement learning. The proposed adaptive digital twin framework enjoys enhanced personalization, increased robustness, and improved cost-effectiveness. We assess our approach on a case study involving structural health monitoring and maintenance planning of a railway bridge.
format Preprint
id arxiv_https___arxiv_org_abs_2512_13919
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Adaptive digital twins for predictive decision-making: Online Bayesian learning of transition dynamics
Varetti, Eugenio
Torzoni, Matteo
Tezzele, Marco
Manzoni, Andrea
Machine Learning
Numerical Analysis
This work shows how adaptivity can enhance value realization of digital twins in civil engineering. We focus on adapting the state transition models within digital twins represented through probabilistic graphical models. The bi-directional interaction between the physical and virtual domains is modeled using dynamic Bayesian networks. By treating state transition probabilities as random variables endowed with conjugate priors, we enable hierarchical online learning of transition dynamics from a state to another through effortless Bayesian updates. We provide the mathematical framework to account for a larger class of distributions with respect to the current literature on digital twins. To compute dynamic policies with precision updates we solve parametric Markov decision processes through reinforcement learning. The proposed adaptive digital twin framework enjoys enhanced personalization, increased robustness, and improved cost-effectiveness. We assess our approach on a case study involving structural health monitoring and maintenance planning of a railway bridge.
title Adaptive digital twins for predictive decision-making: Online Bayesian learning of transition dynamics
topic Machine Learning
Numerical Analysis
url https://arxiv.org/abs/2512.13919