The timely identification of damages in prestressed concrete bridges is a significant challenge for the structural health monitoring community, primarily when the malfunctions are related to the prestressing system. Despite extensive research, a shared solution for detecting tension loss in prestressed tendons is still lacking. This paper investigates the capability of Spectral Jump-Anomaly Detection (SJ-AD), a data-driven technique that directly analyzes accelerometric data in the frequency domain and emits alerts within a multi-window implicit thresholding scheme. Additionally, this work introduces the PSC-A16 Benchmark, a case study involving vibration monitoring of an Italian viaduct during strengthening interventions with external tendons, thus providing data at different prestressing levels. Evaluating SJ-AD on the PSC-A16 benchmark, this paper shows that the proposed method can successfully provide alerts related to tension losses that affect the bridge deck.

Spectral anomaly detection for identifying prestress loss in prestressed concrete bridges: The PSC-A16 case study / Mariniello, Giulio; Pastore, Tommaso; Asprone, Domenico; Cosenza, Edoardo. - In: MECHANICAL SYSTEMS AND SIGNAL PROCESSING. - ISSN 0888-3270. - 229:(2025). [10.1016/j.ymssp.2025.112506]

Spectral anomaly detection for identifying prestress loss in prestressed concrete bridges: The PSC-A16 case study

Mariniello Giulio;Pastore Tommaso;Asprone Domenico;Cosenza Edoardo
2025

Abstract

The timely identification of damages in prestressed concrete bridges is a significant challenge for the structural health monitoring community, primarily when the malfunctions are related to the prestressing system. Despite extensive research, a shared solution for detecting tension loss in prestressed tendons is still lacking. This paper investigates the capability of Spectral Jump-Anomaly Detection (SJ-AD), a data-driven technique that directly analyzes accelerometric data in the frequency domain and emits alerts within a multi-window implicit thresholding scheme. Additionally, this work introduces the PSC-A16 Benchmark, a case study involving vibration monitoring of an Italian viaduct during strengthening interventions with external tendons, thus providing data at different prestressing levels. Evaluating SJ-AD on the PSC-A16 benchmark, this paper shows that the proposed method can successfully provide alerts related to tension losses that affect the bridge deck.
2025
Spectral anomaly detection for identifying prestress loss in prestressed concrete bridges: The PSC-A16 case study / Mariniello, Giulio; Pastore, Tommaso; Asprone, Domenico; Cosenza, Edoardo. - In: MECHANICAL SYSTEMS AND SIGNAL PROCESSING. - ISSN 0888-3270. - 229:(2025). [10.1016/j.ymssp.2025.112506]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/1018488
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