In this paper, a novel method is proposed based on a windowed-one-dimensional convolutional neural network for multiclass damage detection using acceleration responses. The data is pre-processed and augmented by extracting samples of windows of the original acceleration time series. 1D CNN is developed to classify the signals in multiple classes. The damage is detected if the predicted classification is one of the indicated damage levels. The damage is quantified using the predicted class probabilities. Various signals from the accelerometers are provided as input to the 1D CNN model, and the resulting class probabilities are used to identify the location of the damage. The proposed method is validated using Z24 bridge benchmark data for mu...
This paper addresses a damage detection method based on changes in modal curvature combined with Con...
This paper presents a brief overview of vibration-based damage identification studies based on Deep ...
The deep learning technologies have transformed many research areas with accuracy levels that the t...
Structural damage detection has been an interdisciplinary area of interest for various engineering f...
In this paper, a novel one dimensional convolution neural network (1D-CNN) based structural damage a...
The shallow features extracted by the traditional artificial intelligence algorithm-based damage ide...
Bridges are a crucial part of the transport infrastructure network, and their safety and operational...
This paper proposes a structural damage detection method based on one-dimensional convolutional neur...
In order to ensure the integrity of the structure, timely and accurate detection and identification ...
Deep learning algorithms for Structural Health Monitoring (SHM) have been extracting the interest of...
Recurring expenses associated with preventative maintenance and inspectionproduce operational ineffi...
Most of the classical structural damage detection systems involve two processes, feature extraction ...
Previously, it was nearly impossible to use raw time series sensory signals for structural health mo...
In the past few years, structural health monitoring (SHM) has become an important technology to ensu...
Structural Health Monitoring is a process of continuous evaluation of infrastructure status. In orde...
This paper addresses a damage detection method based on changes in modal curvature combined with Con...
This paper presents a brief overview of vibration-based damage identification studies based on Deep ...
The deep learning technologies have transformed many research areas with accuracy levels that the t...
Structural damage detection has been an interdisciplinary area of interest for various engineering f...
In this paper, a novel one dimensional convolution neural network (1D-CNN) based structural damage a...
The shallow features extracted by the traditional artificial intelligence algorithm-based damage ide...
Bridges are a crucial part of the transport infrastructure network, and their safety and operational...
This paper proposes a structural damage detection method based on one-dimensional convolutional neur...
In order to ensure the integrity of the structure, timely and accurate detection and identification ...
Deep learning algorithms for Structural Health Monitoring (SHM) have been extracting the interest of...
Recurring expenses associated with preventative maintenance and inspectionproduce operational ineffi...
Most of the classical structural damage detection systems involve two processes, feature extraction ...
Previously, it was nearly impossible to use raw time series sensory signals for structural health mo...
In the past few years, structural health monitoring (SHM) has become an important technology to ensu...
Structural Health Monitoring is a process of continuous evaluation of infrastructure status. In orde...
This paper addresses a damage detection method based on changes in modal curvature combined with Con...
This paper presents a brief overview of vibration-based damage identification studies based on Deep ...
The deep learning technologies have transformed many research areas with accuracy levels that the t...