It is necessary to detect the structural damage condition of essential buildings immediately after an earthquake to identify safe structures, evacuate, or resume crucial activities. For this reason, a CNN methodology proposed to detect the structural damage condition of a building is here improved and validated for two currently instrumented essential buildings (Tahara City Hall and Toyohashi Fire Station). Three-dimensional frames instead of lumped mass models are used for the buildings. Besides this, a methodology to select records is introduced to reduce the variability of the structural responses. The maximum inter-storey drift and absolute acceleration of each storey are used as damage indicators. The accuracy is evaluated by the usabi...
Inter-story drift ratio is a general damage index which is being used to detect damaged stories afte...
A seismic damage index monitoring system is presented in this paper. The method is based on artifici...
This paper proposes a structural damage detection method based on one-dimensional convolutional neur...
If damage to a building caused by an earthquake is not detected immediately, the opportunity to deci...
After a major seismic event, building safety should be assessed by qualified experts prior to reoccu...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
The seismic damage information of buildings extracted from remote sensing (RS) imagery is meaningful...
The adoption of artificial intelligence in post-earthquake inspections and reconnaissance has receiv...
The accurate and timely identification of the degree of building damage is critical for disaster eme...
Contemporary deep learning approaches for post-earthquake damage assessments based on 2D convolution...
This study introduces a multiple-input convolutional neural network (MI-CNN) model for the seismic d...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
The accurate and quick derivation of the distribution of damaged building must be considered essenti...
A neural-network-based post-earthquake damage identification methodology for smart structures with t...
Earthquake is one of the most devastating natural disasters that threaten human life. It is vital to...
Inter-story drift ratio is a general damage index which is being used to detect damaged stories afte...
A seismic damage index monitoring system is presented in this paper. The method is based on artifici...
This paper proposes a structural damage detection method based on one-dimensional convolutional neur...
If damage to a building caused by an earthquake is not detected immediately, the opportunity to deci...
After a major seismic event, building safety should be assessed by qualified experts prior to reoccu...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
The seismic damage information of buildings extracted from remote sensing (RS) imagery is meaningful...
The adoption of artificial intelligence in post-earthquake inspections and reconnaissance has receiv...
The accurate and timely identification of the degree of building damage is critical for disaster eme...
Contemporary deep learning approaches for post-earthquake damage assessments based on 2D convolution...
This study introduces a multiple-input convolutional neural network (MI-CNN) model for the seismic d...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
The accurate and quick derivation of the distribution of damaged building must be considered essenti...
A neural-network-based post-earthquake damage identification methodology for smart structures with t...
Earthquake is one of the most devastating natural disasters that threaten human life. It is vital to...
Inter-story drift ratio is a general damage index which is being used to detect damaged stories afte...
A seismic damage index monitoring system is presented in this paper. The method is based on artifici...
This paper proposes a structural damage detection method based on one-dimensional convolutional neur...