Damage Identification of Railway Bridges through Temporal Autoregressive Modeling
Metadatos
Mostrar el registro completo del ítemAutor
Anastasia, Stefano; García Macías, Enrique; Ubertini, Filippo; Gattulli, Vincenzo; Ivorra Chorro, SalvadorEditorial
MDPI
Materia
Autoregressive modeling Damage identification Moving loads
Fecha
2023-10-30Referencia bibliográfica
Anastasia, S.; García-Macías, E.; Ubertini, F.; Gattulli, V.; Salvador, I. Damage Identification of Railway Bridges through Temporal Autoregressive Modeling. Sensors 2023, 23, 8830. https://doi.org/10.3390/s23218830
Patrocinador
Research project “SMARTBRIDGES-Monitorización Inteligente del Estado Estructural de Puentes Ferroviarios” (Ref. PLEC2021-007798) funded by the Spanish Ministry of Science and Innovation, the Spanish State Research Agency, and NextGenerationEU; Italian Ministry of University and Research (MUR) through the project of National Interest (PRIN PNRR 2022) “TIMING–Time evolution laws for IMproving the structural reliability evaluation of existING post-tensioned concrete deck bridges” (Prot. P20223Y947); The regional administration of the Valencian Community in Spain for the financial support provided by the projects GRISOLIAAP/2019/122 and APOTIP/2021/003; European Union for the Project DESDEMONA Grant Agreement n. 800687Resumen
The damage identification of railway bridges poses a formidable challenge given the large
variability in the environmental and operational conditions that such structures are subjected to
along their lifespan. To address this challenge, this paper proposes a novel damage identification
approach exploiting continuously extracted time series of autoregressive (AR) coefficients from strain
data with moving train loads as highly sensitive damage features. Through a statistical pattern
recognition algorithm involving data clustering and quality control charts, the proposed approach
offers a set of sensor-level damage indicators with damage detection, quantification, and localization
capabilities. The effectiveness of the developed approach is appraised through two case studies,
involving a theoretical simply supported beam and a real-world in-operation railway bridge. The
latter corresponds to the Mascarat Viaduct, a 20th century historical steel truss railway bridge that
remains active in TRAM line 9 in the province of Alicante, Spain. A detailed 3D finite element
model (FEM) of the viaduct was defined and experimentally validated. On this basis, an extensive
synthetic dataset was constructed accounting for both environmental and operational conditions,
as well as a variety of damage scenarios of increasing severity. Overall, the presented results and
discussion evidence the superior performance of strain measurements over acceleration, offering great
potential for unsupervised damage detection with full damage identification capabilities (detection,
quantification, and localization).