TL;DR
This paper introduces a probabilistic graphical model framework for creating scalable, robust digital twins that can be calibrated and updated dynamically using sensor data, demonstrated on UAVs.
Contribution
It proposes a formal probabilistic graphical model foundation for digital twins, enabling scalable, flexible, and principled calibration and updating processes.
Findings
Successfully instantiated for UAV structural digital twin
Calibrated using experimental UAV data
Demonstrated dynamic updating during in-flight damage
Abstract
A unifying mathematical formulation is needed to move from one-off digital twins built through custom implementations to robust digital twin implementations at scale. This work proposes a probabilistic graphical model as a formal mathematical representation of a digital twin and its associated physical asset. We create an abstraction of the asset-twin system as a set of coupled dynamical systems, evolving over time through their respective state-spaces and interacting via observed data and control inputs. The formal definition of this coupled system as a probabilistic graphical model enables us to draw upon well-established theory and methods from Bayesian statistics, dynamical systems, and control theory. The declarative and general nature of the proposed digital twin model make it rigorous yet flexible, enabling its application at scale in a diverse range of application areas. We…
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