Recent studies have demonstrated the effectiveness of machine learning techniques in the context of Structural Health Monitoring (SHM), where they can be applied to distinguish operational and environmental changes of dynamic features from those related to the evolution of damage. For instance, the combination of these techniques with the cointegration, a theory usually employed in econometric studies, has led to promising results, even in the detection of damage in complex monumental buildings. Several algorithms, including Support Vector Machine and Relevance Vector Machine, can be used for implementation of the multivariate regression required in the method. The choice of the algorithm to apply and the parameters to set can drastically i...
This paper presents a machine learning algorithm for processing of massive data collected from the m...
This paper reviews structural health monitoring (SHM) techniques of bridge structures based on machi...
One of the main problems concerning the field of Structural Health Monitoring (SHM) is the unavailab...
The theory of cointegration, usually employed in econometric studies, has proved very powerful in th...
Structural Health Monitoring has become a hot topic in recent decades as it provides engineers with ...
This paper presents the results of comparative studies on the implementation of machine learning met...
This thesis presents supervised machine learning techniques using acceleration responses recorded fr...
Abstract Structural Health Monitoring using raw dynamic measurements is the subject of several studi...
The paper presents a comparative analysis of Machine Learning (ML) research methods allowing to asse...
Structural health monitoring for bridges is a crucial concern in engineering due to the degradation ...
Automated modal identification procedures are attracting the interest of the Structural Health Monit...
During the last decades, the increased availability of continuously monitored structures has attract...
Structural health monitoring (SHM) is one of the main research topics in civil, mechanical and aeros...
Environmental variability is still a major challenge in structural health monitoring. Due to the sim...
This paper presents a machine learning algorithm for processing of massive data collected from the m...
This paper reviews structural health monitoring (SHM) techniques of bridge structures based on machi...
One of the main problems concerning the field of Structural Health Monitoring (SHM) is the unavailab...
The theory of cointegration, usually employed in econometric studies, has proved very powerful in th...
Structural Health Monitoring has become a hot topic in recent decades as it provides engineers with ...
This paper presents the results of comparative studies on the implementation of machine learning met...
This thesis presents supervised machine learning techniques using acceleration responses recorded fr...
Abstract Structural Health Monitoring using raw dynamic measurements is the subject of several studi...
The paper presents a comparative analysis of Machine Learning (ML) research methods allowing to asse...
Structural health monitoring for bridges is a crucial concern in engineering due to the degradation ...
Automated modal identification procedures are attracting the interest of the Structural Health Monit...
During the last decades, the increased availability of continuously monitored structures has attract...
Structural health monitoring (SHM) is one of the main research topics in civil, mechanical and aeros...
Environmental variability is still a major challenge in structural health monitoring. Due to the sim...
This paper presents a machine learning algorithm for processing of massive data collected from the m...
This paper reviews structural health monitoring (SHM) techniques of bridge structures based on machi...
One of the main problems concerning the field of Structural Health Monitoring (SHM) is the unavailab...