This work proposes a supervised Deep Learning approach for damage identification in bridge structures. We employ a hybrid methodology that incorporates Finite Element simulations to enrich the training phase of a Deep Neural Network with synthetic damage scenarios. The neural network is based on autoencoders and its particular architecture allows to activate or deactivate nonlinear connections under need. The methodology intends to contribute to the progress towards the applicability of Structural Health Monitoring practices in full-scale bridge structures. The ultimate goal is to estimate the location and severity of damage from measurements of the dynamic response of the structure. The damages we seek to detect correspond to material degr...
The idea of using measured dynamic characteristics for damage detection is attractive because it all...
This project is aimed at determining a method of investigation that can identify and evaluate damag...
Structural health monitoring is a challenging task that has recently received great attention from r...
This work proposes a supervised Deep Learning approach for damage identification in bridge structure...
This work proposes a novel supervised learning approach to identify damage in operating bridge struc...
In this work, we propose a combined approach of model-based and machine learning techniques for dama...
Improvement in the assessment of civil structures is an important issues, because the portfolio of b...
As civil engineering structures are growing in dimension and longevity, there is an associated incre...
Deep learning algorithms for Structural Health Monitoring (SHM) have been extracting the interest of...
This paper proposes the use of transmissibility functions combined with a machine learning algorithm...
More bridges today require maintenance with age, owing to increasing structural loads from traffic a...
Damage detection by measurement of vibration signatures is highly attractive for monitoring bridges ...
This is probably the most appropriate time for the development of robust and reliable structural dam...
© 2018 Elsevier Ltd Artificial neural networks are computational approaches based on machine learnin...
Damage in structures often leads to failure. Thus it is very important to monitor structures for the...
The idea of using measured dynamic characteristics for damage detection is attractive because it all...
This project is aimed at determining a method of investigation that can identify and evaluate damag...
Structural health monitoring is a challenging task that has recently received great attention from r...
This work proposes a supervised Deep Learning approach for damage identification in bridge structure...
This work proposes a novel supervised learning approach to identify damage in operating bridge struc...
In this work, we propose a combined approach of model-based and machine learning techniques for dama...
Improvement in the assessment of civil structures is an important issues, because the portfolio of b...
As civil engineering structures are growing in dimension and longevity, there is an associated incre...
Deep learning algorithms for Structural Health Monitoring (SHM) have been extracting the interest of...
This paper proposes the use of transmissibility functions combined with a machine learning algorithm...
More bridges today require maintenance with age, owing to increasing structural loads from traffic a...
Damage detection by measurement of vibration signatures is highly attractive for monitoring bridges ...
This is probably the most appropriate time for the development of robust and reliable structural dam...
© 2018 Elsevier Ltd Artificial neural networks are computational approaches based on machine learnin...
Damage in structures often leads to failure. Thus it is very important to monitor structures for the...
The idea of using measured dynamic characteristics for damage detection is attractive because it all...
This project is aimed at determining a method of investigation that can identify and evaluate damag...
Structural health monitoring is a challenging task that has recently received great attention from r...