A neural-network-based post-earthquake damage identification methodology for smart structures with the direct use of vibration measurements is developed. Two neural networks are constructed to facilitate the process of post-earthquake damage identification. The rationality of the proposed methodology is explained and the theory basis for the construction of an emulator neural network (ENN) and a parametric evaluation neural network (PENN) are described according to the discrete time solution of the structural state space equation. An evaluation index called the root mean square of the prediction difference vector (RMSPDV) is presented to evaluate the condition of different associated structures. Based on the trained ENN, which is a non-para...
This paper presents an experimental investigation of seismic damage identification of a 38-storey ta...
The main problem in damage assessment is the determination of how to ascertain the presence, locatio...
Abstract. This paper investigates the effectiveness of artificial neural network (ANN) in identifyin...
A neural-network-based post-earthquake damage identification methodology for smart structures with t...
A novel neural networks based strategy is proposed and developed for the direct identification of st...
A seismic damage index monitoring system is presented in this paper. The method is based on artifici...
A large number of civil structures were designed according to old seismic code that do not meet curr...
Damage in structures often leads to failure and can be defined as a weakening of the structure which...
A neural network-based approach is presented for the detection of changes in the characteristics of ...
A novel neural network-based strategy is proposed and developed for the direct identification of str...
Two back-propagation neural networks were applied to identify the stiffness coefficients of a highwa...
Structural health monitoring (SHM) and damage assessment of infrastructures is a very challenging su...
Structural damage detection using measured dynamic data for pattern recognition is a promising appro...
Structural damage detection using measured dynamic data for pattern recognition is a promising appro...
If damage to a building caused by an earthquake is not detected immediately, the opportunity to deci...
This paper presents an experimental investigation of seismic damage identification of a 38-storey ta...
The main problem in damage assessment is the determination of how to ascertain the presence, locatio...
Abstract. This paper investigates the effectiveness of artificial neural network (ANN) in identifyin...
A neural-network-based post-earthquake damage identification methodology for smart structures with t...
A novel neural networks based strategy is proposed and developed for the direct identification of st...
A seismic damage index monitoring system is presented in this paper. The method is based on artifici...
A large number of civil structures were designed according to old seismic code that do not meet curr...
Damage in structures often leads to failure and can be defined as a weakening of the structure which...
A neural network-based approach is presented for the detection of changes in the characteristics of ...
A novel neural network-based strategy is proposed and developed for the direct identification of str...
Two back-propagation neural networks were applied to identify the stiffness coefficients of a highwa...
Structural health monitoring (SHM) and damage assessment of infrastructures is a very challenging su...
Structural damage detection using measured dynamic data for pattern recognition is a promising appro...
Structural damage detection using measured dynamic data for pattern recognition is a promising appro...
If damage to a building caused by an earthquake is not detected immediately, the opportunity to deci...
This paper presents an experimental investigation of seismic damage identification of a 38-storey ta...
The main problem in damage assessment is the determination of how to ascertain the presence, locatio...
Abstract. This paper investigates the effectiveness of artificial neural network (ANN) in identifyin...