In this paper, a new approach to fault detection and diagnosis that is based on correspondence analysis (CA) is proposed. CA is a powerful multivariate technique based on the generalized singular value decomposition. The merits of using CA lie in its ability to depict rows as well as columns as points in the dual lower dimensional vector space. CA has been shown to capture association between various features and events quite effectively. The key strengths of CA, for fault detection and diagnosis, are validated on data involving simulations as well as experimental data obtained from a laboratory-scale setup
\ud \ud Dimensionality reduction is one of the prime concerns when analyzing process historical data...
This paper presents the R package CAvariants (Lombardo and Beh, 2017). The package performs six vari...
When designing model-based fault-diagnosis systems, the use of consistency relations (also called e....
This paper presents an approach based on the use of the correspondence analysis (CA) algorithm for t...
This paper presents an approach based on the correspondence analysis (CA) for the task of fault dete...
Historical data based fault diagnosis methods exploit two key strengths of multivariate statistical ...
Historical data based fault diagnosis methods exploit two key strengths of the multivariate statisti...
Historical databases are usually filled with information about plant operation during normal as well...
Correspondence analysis (CA) is popular method for providing a graphical summary of the association ...
Correspondence Analysis (CA) is a multivariate method that has been developed from different perspec...
Correspondence analysis (CA) is popular method for providing a graphical summary of the association ...
Multiple correspondence analysis (MCA) is an extension of correspondence analysis (CA) which allows ...
Data collected from operating plants can be mined to extract information related to both normal and ...
In qualitative research of multiple case studies, Miles and Huberman proposed to summarize the separ...
In qualitative research of multiple case studies, Miles and Huberman proposed to summarize the separ...
\ud \ud Dimensionality reduction is one of the prime concerns when analyzing process historical data...
This paper presents the R package CAvariants (Lombardo and Beh, 2017). The package performs six vari...
When designing model-based fault-diagnosis systems, the use of consistency relations (also called e....
This paper presents an approach based on the use of the correspondence analysis (CA) algorithm for t...
This paper presents an approach based on the correspondence analysis (CA) for the task of fault dete...
Historical data based fault diagnosis methods exploit two key strengths of multivariate statistical ...
Historical data based fault diagnosis methods exploit two key strengths of the multivariate statisti...
Historical databases are usually filled with information about plant operation during normal as well...
Correspondence analysis (CA) is popular method for providing a graphical summary of the association ...
Correspondence Analysis (CA) is a multivariate method that has been developed from different perspec...
Correspondence analysis (CA) is popular method for providing a graphical summary of the association ...
Multiple correspondence analysis (MCA) is an extension of correspondence analysis (CA) which allows ...
Data collected from operating plants can be mined to extract information related to both normal and ...
In qualitative research of multiple case studies, Miles and Huberman proposed to summarize the separ...
In qualitative research of multiple case studies, Miles and Huberman proposed to summarize the separ...
\ud \ud Dimensionality reduction is one of the prime concerns when analyzing process historical data...
This paper presents the R package CAvariants (Lombardo and Beh, 2017). The package performs six vari...
When designing model-based fault-diagnosis systems, the use of consistency relations (also called e....