Large-scale civil infrastructures play a vital role in society as they ensure smooth transportation and improve the quality of people’s daily life. However, they are exposed to several and continuous external dynamic actions such as wind loads, vehicular loads, and environmental changes. Interaction assessment between external actions and civil structures is become more challenging due to the rapid development of transportation. Data-driven models have lately emerged as a viable alternative to traditional model-based techniques. They provide different advantages: timely damage detection, structural behaviors prediction and suggestions for optimal maintenance strategies. The chapter aims to describe the advantages and the characteristics of data- driven techniques to predict the dynamic behavior of civil structures through Artificial Neural Network (ANN). The applicability and effectiveness of the proposed approach are supported by the results achieved processing the measurements coming from a monitoring system installed on a cable-stayed bridge (Tabarly, Nantes). Accelerations recorded by a network of sixteen mono-axial accelerometers and Nantes Airport weather data acquired with the observation platform of the METAR (MEteorological Terminal Aviation Routine Weather Report) Station Network have been used as training to predict the structural response and to statistically characterize the behavior through a Nonlinear AutoRegressive (NAR) prediction network. The performance has been evaluated through statistical analysis of the error between the measured and predicted values also related to both environmental conditions and number of the signals. The results show that the forecast network could be useful to detect the trigger of anomalies, hidden in the dynamic response of the bridge, at a low computational cost.

Ambient Vibration Prediction of a Cable-Stayed Bridge by an Artificial Neural Network / De Iuliis, M.; Rinaldi, C.; Potenza, F.; Gattulli, V.; Toullier, T.; Dumoulin, J.. - (2023), pp. 242-257. [10.1201/9781003306924-10].

Ambient Vibration Prediction of a Cable-Stayed Bridge by an Artificial Neural Network

De Iuliis M.
Primo
;
Rinaldi C.
Secondo
;
Potenza F.
Penultimo
;
Gattulli V.
Ultimo
;
2023

Abstract

Large-scale civil infrastructures play a vital role in society as they ensure smooth transportation and improve the quality of people’s daily life. However, they are exposed to several and continuous external dynamic actions such as wind loads, vehicular loads, and environmental changes. Interaction assessment between external actions and civil structures is become more challenging due to the rapid development of transportation. Data-driven models have lately emerged as a viable alternative to traditional model-based techniques. They provide different advantages: timely damage detection, structural behaviors prediction and suggestions for optimal maintenance strategies. The chapter aims to describe the advantages and the characteristics of data- driven techniques to predict the dynamic behavior of civil structures through Artificial Neural Network (ANN). The applicability and effectiveness of the proposed approach are supported by the results achieved processing the measurements coming from a monitoring system installed on a cable-stayed bridge (Tabarly, Nantes). Accelerations recorded by a network of sixteen mono-axial accelerometers and Nantes Airport weather data acquired with the observation platform of the METAR (MEteorological Terminal Aviation Routine Weather Report) Station Network have been used as training to predict the structural response and to statistically characterize the behavior through a Nonlinear AutoRegressive (NAR) prediction network. The performance has been evaluated through statistical analysis of the error between the measured and predicted values also related to both environmental conditions and number of the signals. The results show that the forecast network could be useful to detect the trigger of anomalies, hidden in the dynamic response of the bridge, at a low computational cost.
2023
Data Driven Methods for Civil Structural Health Monitoring and Resilience: Latest Developments and Applications
9781003306924
Data-driven approaches; Nonlinear AutoRegressive network; Structural Health Monitoring; Civil Infrastructures; Accelerometric Sensors
02 Pubblicazione su volume::02a Capitolo o Articolo
Ambient Vibration Prediction of a Cable-Stayed Bridge by an Artificial Neural Network / De Iuliis, M.; Rinaldi, C.; Potenza, F.; Gattulli, V.; Toullier, T.; Dumoulin, J.. - (2023), pp. 242-257. [10.1201/9781003306924-10].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1706058
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