\ud \ud Dimensionality reduction is one of the prime concerns when analyzing process historical data for plant-wide monitoring, because this can significantly reduce computational load during statistical model building. Most research has been concerned with reducing the dimension along the variable space, i.e. reducing the number of columns. However, no efforts are made to reduce dimensions along the sample (row) space. In this paper, an algorithm based on nearest neighbor is presented here that exploits the principle of distributional equivalence (PDE) property of the correspondence analysis (CA) algorithm to achieve data reduction along the sample space without significantly affecting the diagnostic performance. The data reduction algorit...
Aimed at the problem of high dimension and nonlinearity of variable data in chemical process, a proc...
Data collected from operating plants can be mined to extract information related to both normal and ...
Dimensionality reduction is an important factor in fault diagnosis, when dealing with a high-dimensi...
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...
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 databases are usually filled with information about plant operation during normal as well...
Industrial systems often encounter abnormal conditions due to various faults or external disturbance...
In this paper, a new approach to fault detection and diagnosis that is based on correspondence analy...
About four zetta bytes of data, which falls into the category of big data, is generated by complex m...
As a newly emerging multivariate statistical process monitoring method, non-negative matrix factoriz...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...
As an effective dimensionality reduction method, Same Degree Distribution (SDD) has been demonstrate...
One most significant challenge in batch process monitoring, compared to continuous process monitorin...
Aimed at the problem of high dimension and nonlinearity of variable data in chemical process, a proc...
Data collected from operating plants can be mined to extract information related to both normal and ...
Dimensionality reduction is an important factor in fault diagnosis, when dealing with a high-dimensi...
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...
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 databases are usually filled with information about plant operation during normal as well...
Industrial systems often encounter abnormal conditions due to various faults or external disturbance...
In this paper, a new approach to fault detection and diagnosis that is based on correspondence analy...
About four zetta bytes of data, which falls into the category of big data, is generated by complex m...
As a newly emerging multivariate statistical process monitoring method, non-negative matrix factoriz...
Nonlinear dimensionality reduction methods often rely on the nearest-neighbors graph to extract low-...
As an effective dimensionality reduction method, Same Degree Distribution (SDD) has been demonstrate...
One most significant challenge in batch process monitoring, compared to continuous process monitorin...
Aimed at the problem of high dimension and nonlinearity of variable data in chemical process, a proc...
Data collected from operating plants can be mined to extract information related to both normal and ...
Dimensionality reduction is an important factor in fault diagnosis, when dealing with a high-dimensi...