Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Bridges monitoring and assessment using an integrated bim methodology
Risk assessment of long-existing infrastructure has become one of the main challenges in civil engineering. Major efforts have been made in recent years to develop new techniques for rapid damage identification and ensure proper management of these structures. This paper presents a data management approach utilizing BIM methodology to create a digital database for bridge monitoring procedures. Initially, two BIM methodologies for creating a damage database are introduced, focusing on beams from a dismantled urban viaduct. Subsequently, the most suitable methodology is applied to an existing bridge in Turin, Italy. Through the chosen methodology a damage identification and classification process based on a triangular mesh is performed, assisted by a convolutional neural network (CNN) for automatic damage detection. Additionally, the paper outlines a digitalization process within a BIM environment, integrating official guidelines for bridge risk evaluation, classification, and monitoring in Italy. By employing programming tools, all data required by the guidelines is efficiently incorporated into the database. The outcomes demonstrate the effectiveness of remote sensing applications for bridge inspection and the possibility of merging BIM methodology into the inspection process to enhance the damage assessment of existing structures.
Bridges monitoring and assessment using an integrated bim methodology
Risk assessment of long-existing infrastructure has become one of the main challenges in civil engineering. Major efforts have been made in recent years to develop new techniques for rapid damage identification and ensure proper management of these structures. This paper presents a data management approach utilizing BIM methodology to create a digital database for bridge monitoring procedures. Initially, two BIM methodologies for creating a damage database are introduced, focusing on beams from a dismantled urban viaduct. Subsequently, the most suitable methodology is applied to an existing bridge in Turin, Italy. Through the chosen methodology a damage identification and classification process based on a triangular mesh is performed, assisted by a convolutional neural network (CNN) for automatic damage detection. Additionally, the paper outlines a digitalization process within a BIM environment, integrating official guidelines for bridge risk evaluation, classification, and monitoring in Italy. By employing programming tools, all data required by the guidelines is efficiently incorporated into the database. The outcomes demonstrate the effectiveness of remote sensing applications for bridge inspection and the possibility of merging BIM methodology into the inspection process to enhance the damage assessment of existing structures.
Bridges monitoring and assessment using an integrated bim methodology
RODRIGUEZ POLANIA, DANIEL (Autor:in) / OSELLO, ANNA (Autor:in) / TONDOLO, FRANCESCO (Autor:in) / PIRAS, MARCO (Autor:in) / GRASSO, NIVES (Autor:in) / DI PIETRA, VINCENZO (Autor:in) / RODRIGUEZ POLANIA, Daniel / Osello, Anna / Tondolo, Francesco / Piras, Marco
01.01.2025
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
DSpace@MIT | 2015
|Integrated Monitoring System for Durability Assessment of Concrete Bridges
DOAJ | 2005
|Assessment of bridges via monitoring
Taylor & Francis Verlag | 2005
|Integrated Health Monitoring of Highway Bridges
British Library Conference Proceedings | 2007
|Large Rivet Steel Bridges - Integrated Assessment
British Library Conference Proceedings | 2006
|