Abstract

Bridges have substantial significance within the transport system, considering that their functionality is essential for countries’ social and economic development. Accordingly, a superior level of safety and serviceability must be reached to ensure the operating status of the bridge network. On that account, the recent collapses of road bridges have led the technical–scientific community and society to reflect on the effectiveness of their management. Bridges in a network are likely to share coinciding environmental conditions but may be subjected to distinct structural deterioration processes over time depending on their age, location, structural type, and other aspects. This variation is usually not considered in the bridge management predictions. For instance, the Brazilian standards consider a constant inspection periodicity, regardless of the bridges’ singularities. Consequently, it is helpful to pinpoint and split the bridge network into classes sharing equivalent deterioration trends to obtain a more precise prediction and improve the frequency of inspections. This work presents a representative database of the Brazilian bridge network, including the most relevant data obtained from inspections. The database was used to calibrate two independent predictive models (Markov and artificial neural network). The calibrated model was employed to simulate different scenarios, resulting in significant insights to improve the inspection periodicity. As a result, the bridge’s location accounting for the differentiation of exposure was a critical point when analyzing the bridge deterioration process. Finally, the degradation models developed following the proposed procedure deliver a more reliable forecast when compared to a single degradation model without parameter analysis. These more reliable models may assist the decision process of the bridge management system (BMS).

Highlights

  • The present study aims at applying two probabilistic models, Markov and Artificial neural network (ANN), to forecast bridge deterioration and improve the inspection periodicity proposed by the standards [12,13,14]

  • The primary contribution of this study to bridge management system (BMS) is the application of stochastic models to probabilistically forecast bridge deterioration and the execution of a systematic method to show new features importance in the degradation process, resulting in exciting insights into the definition of inspection periodicity

  • The Brazilian standards have different values related to the interval between inspections, but they all consider the periodicity constant, not giving consideration to the bridges’

Read more

Summary

Introduction with regard to jurisdictional claims in

A successful Bridge management system (BMS) depends heavily on defining appropriate intervention actions to ensure structural safety, functionality, and durability while maintaining the lowest financial investment related to the available budget [1]. [9] presents the status of the bridges on Brazilian federal highways, based on data obtained from National Department of Transport Infrastructure (DNIT), Institute of Road Research (IPR), and National Land Transport Agency (ANTT), among others, which constitute a register with 5619 bridges, with levels of information that vary in dimensions, inspection results, sketches, photos, and geographic coordinates. The analysis of these data provided more significant knowledge about the reality of bridges on Brazilian federal highways, producing subsidies for the planning of a bridge management system that is more compatible with reality and led to an understanding of the main aspects that guide state assessments of the bridges.

Standards
Bridge Deterioration Models
Stochastic Models
Artificial Neural Networks Models
Statistical Tests
Database
Methodology and Results
Markov
Artificial Neural Network
Filling the Database by ANN
Additional Features
Proof of Concept
Conclusions

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.