Data collected from operating plants can be mined to extract information related to both normal and fault modes of operation. Correspondence analysis (CA), that decomposes a measure of row–column association, to generate the lower dimensional space has been recently proposed [1] for this task. CA represents the association between samples and variables in terms of angle based measures on a biplot. Thus, toward clearer resolution of the faults, polar clustering and classification procedures are necessary. In this paper, we develop a methodology to mine the operating data and build such clusters. We demonstrate the application of this methodology on data generated from simulations and experiments involving representative systems,for detecting...
Performing root cause analysis in technical systems is usually challenging owing to the complex fail...
The system condition of valuable assets such as power plants is often monitored with thousands of se...
A new approach to fault detection and isolation that combines Principal Component Analysis (PCA), Cl...
In this paper, a new approach to fault detection and diagnosis that is based on correspondence analy...
This paper presents an approach based on the correspondence analysis (CA) for the task of fault dete...
This paper presents an approach based on the use of the correspondence analysis (CA) algorithm for t...
Historical databases are usually filled with information about plant operation during normal as well...
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...
\ud \ud Dimensionality reduction is one of the prime concerns when analyzing process historical data...
Industrial systems often encounter abnormal conditions due to various faults or external disturbance...
Carey et a/. utilized principal components analysis (PCA) to analyze frequency shift data obtained f...
Widespread application of distributed control systems and measurement technologies in chemical plant...
This thesis report is submitted in partial fulfilment of the requirements for the degree of Masters ...
The number of extracted features for fault diagnosis in rotating machinery can grow considerably due...
Performing root cause analysis in technical systems is usually challenging owing to the complex fail...
The system condition of valuable assets such as power plants is often monitored with thousands of se...
A new approach to fault detection and isolation that combines Principal Component Analysis (PCA), Cl...
In this paper, a new approach to fault detection and diagnosis that is based on correspondence analy...
This paper presents an approach based on the correspondence analysis (CA) for the task of fault dete...
This paper presents an approach based on the use of the correspondence analysis (CA) algorithm for t...
Historical databases are usually filled with information about plant operation during normal as well...
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...
\ud \ud Dimensionality reduction is one of the prime concerns when analyzing process historical data...
Industrial systems often encounter abnormal conditions due to various faults or external disturbance...
Carey et a/. utilized principal components analysis (PCA) to analyze frequency shift data obtained f...
Widespread application of distributed control systems and measurement technologies in chemical plant...
This thesis report is submitted in partial fulfilment of the requirements for the degree of Masters ...
The number of extracted features for fault diagnosis in rotating machinery can grow considerably due...
Performing root cause analysis in technical systems is usually challenging owing to the complex fail...
The system condition of valuable assets such as power plants is often monitored with thousands of se...
A new approach to fault detection and isolation that combines Principal Component Analysis (PCA), Cl...