This work states a structural health monitoring strategy for detection and classification of structural changes. The proposed approach is based on the so-called t-distributed stochastic neighbor embedding (t-SNE), a non-linear technique that is able to represent the local structure of high-dimensional data that are collected from multi-sensor signals in a simple scatter plot. All data sets were pre-processed using principal component analysis (PCA) to reduce their dimensionality before t-SNE was performed. More precisely, when a structure has to be diagnosed, the collected data from the current structure is projected into the t-SNE scatter plot. Subsequently, a sample of the projected data is compared with the center of the clusters of the ...
The dataset presented here is part of contribution to the 14th IWSHM conference. The abstract of th...
Improvements in computing capacity have allowed computers today to execute increasingly complex task...
With the advancement of neural networks, more and more neural networks are being applied to structur...
This work states a structural health monitoring strategy for detection and classification of structu...
This paper describes a structural health monitoring strategy to detect and classify structural chang...
This work presents a structural health monitoring (SHM) approach for the detection and classificatio...
In this paper, we evaluate the performance of the so-called parametric t-distributed stochastic neig...
Tesi per compendi de publicacionsThis thesis describes a structural health monitoring (SHM) strategy...
Structural Health Monitoring is of major interest in many areas of structural mechanics. This paper ...
We propose a simulation-based decision strategy for the proactive maintenance of complex structures ...
The increasing expansion of standards and regulations aimed to guarantee the safe operation of diffe...
The objective of this thesis is to provide a mathematical and computational framework for the proact...
Recently, advances in sensing and sensing methodologies have led to the deployment of multiple senso...
Civil and military structures are susceptible and vulnerable to damage due to the environmental and ...
Structural health monitoring (SHM) is an important research area, which interest is the damage ident...
The dataset presented here is part of contribution to the 14th IWSHM conference. The abstract of th...
Improvements in computing capacity have allowed computers today to execute increasingly complex task...
With the advancement of neural networks, more and more neural networks are being applied to structur...
This work states a structural health monitoring strategy for detection and classification of structu...
This paper describes a structural health monitoring strategy to detect and classify structural chang...
This work presents a structural health monitoring (SHM) approach for the detection and classificatio...
In this paper, we evaluate the performance of the so-called parametric t-distributed stochastic neig...
Tesi per compendi de publicacionsThis thesis describes a structural health monitoring (SHM) strategy...
Structural Health Monitoring is of major interest in many areas of structural mechanics. This paper ...
We propose a simulation-based decision strategy for the proactive maintenance of complex structures ...
The increasing expansion of standards and regulations aimed to guarantee the safe operation of diffe...
The objective of this thesis is to provide a mathematical and computational framework for the proact...
Recently, advances in sensing and sensing methodologies have led to the deployment of multiple senso...
Civil and military structures are susceptible and vulnerable to damage due to the environmental and ...
Structural health monitoring (SHM) is an important research area, which interest is the damage ident...
The dataset presented here is part of contribution to the 14th IWSHM conference. The abstract of th...
Improvements in computing capacity have allowed computers today to execute increasingly complex task...
With the advancement of neural networks, more and more neural networks are being applied to structur...