The theory of cointegration, usually employed in econometric studies, has proved very powerful in the context of Structural Health Monitoring (SHM), where it can be used to distinguish operational and environmental changes of dynamic features from those related to the evolution of damage. The different nature of the effects imposed by operational and environmental variations on structural response required here an extension of the theory of cointegration from the linear to the nonlinear field. For this purpose, a nonlinear multivariate regression has been developed. This paper proposes a regression obtained through a particular class of machine learners, based on statistical learning theory and its Bayesian variants The algorithms considere...
Prestressed concrete bridges are susceptible to deterioration over time which might significantly af...
AbstractIn the data-based approach to structural health monitoring (SHM), the absence of data from d...
The paper presents a comparative analysis of Machine Learning (ML) research methods allowing to asse...
The theory of cointegration, usually employed in econometric studies, has proved very powerful in th...
Recent studies have demonstrated the effectiveness of machine learning techniques in the context of ...
In recent years, the development of structural health monitoring (SHM) solutions for the automatic e...
One major obstacle to the implementation of structural health monitoring (SHM) is the effect of oper...
This paper explores and compares the application of three different approaches to the data normaliza...
Heteroscedasticity, or time-dependent variance, is often observed in long-term monitoring data in th...
One of the main problems concerning the field of Structural Health Monitoring (SHM) is the unavailab...
Structural health monitoring (SHM) is emerging as a crucial technology for the assessment and manage...
Many features used in Structural Health Monitoring strategies are not just highly sensitive to failu...
Within the context of civil structures, a monitoring system supported by an intelligent diagnostic f...
This paper presents the results of comparative studies on the implementation of machine learning met...
Due to the need for controlling many ageing and complex structures, structural health monitoring (SH...
Prestressed concrete bridges are susceptible to deterioration over time which might significantly af...
AbstractIn the data-based approach to structural health monitoring (SHM), the absence of data from d...
The paper presents a comparative analysis of Machine Learning (ML) research methods allowing to asse...
The theory of cointegration, usually employed in econometric studies, has proved very powerful in th...
Recent studies have demonstrated the effectiveness of machine learning techniques in the context of ...
In recent years, the development of structural health monitoring (SHM) solutions for the automatic e...
One major obstacle to the implementation of structural health monitoring (SHM) is the effect of oper...
This paper explores and compares the application of three different approaches to the data normaliza...
Heteroscedasticity, or time-dependent variance, is often observed in long-term monitoring data in th...
One of the main problems concerning the field of Structural Health Monitoring (SHM) is the unavailab...
Structural health monitoring (SHM) is emerging as a crucial technology for the assessment and manage...
Many features used in Structural Health Monitoring strategies are not just highly sensitive to failu...
Within the context of civil structures, a monitoring system supported by an intelligent diagnostic f...
This paper presents the results of comparative studies on the implementation of machine learning met...
Due to the need for controlling many ageing and complex structures, structural health monitoring (SH...
Prestressed concrete bridges are susceptible to deterioration over time which might significantly af...
AbstractIn the data-based approach to structural health monitoring (SHM), the absence of data from d...
The paper presents a comparative analysis of Machine Learning (ML) research methods allowing to asse...