Bayesian forces identification in cable networks with small bending stiffness

Author:

Piciucco Davide1,Foti Francesco1,Geuzaine Margaux2ORCID,Denoël Vincent2

Affiliation:

1. Department of Civil and Environmental Engineering, Politecnico di Milano, Milano, Italy

2. Structural and Stochastic Dynamics, Structural Engineering Division, University of Liège, Liège, Belgium

Abstract

The regular monitoring of cable forces is essential for ensuring the safety of cable structures both during construction and throughout their lifetime. This paper aims at developing a vibration-based identification procedure of the axial forces, bending stiffness, and, secondarily, the crossing point position of cable networks. A model constituted by two crossing stays having small bending stiffness and negligible sag effects is considered. The in-plane direct dynamic problem is solved both numerically and through a perturbation approach. The obtained results are compared to the outcomes of a finite element model for verification purposes. The theoretical studies are also supported by experimental tests performed on a real cable-stayed bridge (Haccourt bridge), which provide insights into the dynamics of the system showing that models of cables with small bending stiffness are more appropriate than taut string models. The inverse analysis based on non-linear Bayesian regression is developed and the closed-form asymptotic formulations are used to prove that the bending stiffness, the cable forces, and the crossing point position can be separately identified from a set of observed frequencies. The implemented procedure is then applied to the tested bridge as a proof of concept, showing that the proposed in-plane identification strategy provides satisfactory results.

Publisher

SAGE Publications

Subject

Mechanical Engineering,Biophysics

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