By integrating two powerful methods of density reduction and intrinsic dimensionality estimation, a new data-driven method, referred to as OLPP-MLE (orthogonal locality preserving projection-maximum likelihood estimation), is introduced for process monitoring. OLPP is utilized for dimensionality reduction, which provides better locality preserving power than locality preserving projection. Then, the MLE is adopted to estimate intrinsic dimensionality of OLPP. Within the proposed OLPP-MLE, two new static measures for fault detection TOLPP2 and SPEOLPP are defined. In order to reduce algorithm complexity and ignore data distribution, kernel density estimation is employed to compute thresholds for fault diagnosis. The effectiveness of the prop...
One-class classification (OCC) has attracted a great deal of attentions from various disciplines. Fe...
Motivated by mixture of probabilistic principal component analysis (PCA), which is time-consumingdue...
Abstract—In this paper, a novel approach, namely Globality and Locality Preserving Projections (GLPP...
By integrating two powerful methods of density reduction and intrinsic dimensionality estimation, a ...
It has been proved that global and local structure are both important for process monitoring, but pr...
The dimension reduction methods have been proved powerful and practical to extract latent features i...
Multivariate statistical process monitoring (MSPM) can conduct dimensionality reduction on process v...
Kernel principal component analysis (KPCA) has become a popular technique for process monitoring, ow...
Aimed at the problem of high dimension and nonlinearity of variable data in chemical process, a proc...
Kernel principal component analysis (KPCA) is an effective and efficient technique for monitoring no...
Traditional kernel principal component analysis (KPCA) concentrates on the global structure analysis...
Principal Component Analysis(PCA) reduces the dimensionality of the process by creating a new set of...
Real-time or in-line process monitoring frameworks are designed to give early warnings for a fault a...
Locality preserving projection (LPP) is an effective dimensionality reduction method based on manifo...
The kernel partial least squares (KPLS) method was originally focused on soft-sensor calibration for...
One-class classification (OCC) has attracted a great deal of attentions from various disciplines. Fe...
Motivated by mixture of probabilistic principal component analysis (PCA), which is time-consumingdue...
Abstract—In this paper, a novel approach, namely Globality and Locality Preserving Projections (GLPP...
By integrating two powerful methods of density reduction and intrinsic dimensionality estimation, a ...
It has been proved that global and local structure are both important for process monitoring, but pr...
The dimension reduction methods have been proved powerful and practical to extract latent features i...
Multivariate statistical process monitoring (MSPM) can conduct dimensionality reduction on process v...
Kernel principal component analysis (KPCA) has become a popular technique for process monitoring, ow...
Aimed at the problem of high dimension and nonlinearity of variable data in chemical process, a proc...
Kernel principal component analysis (KPCA) is an effective and efficient technique for monitoring no...
Traditional kernel principal component analysis (KPCA) concentrates on the global structure analysis...
Principal Component Analysis(PCA) reduces the dimensionality of the process by creating a new set of...
Real-time or in-line process monitoring frameworks are designed to give early warnings for a fault a...
Locality preserving projection (LPP) is an effective dimensionality reduction method based on manifo...
The kernel partial least squares (KPLS) method was originally focused on soft-sensor calibration for...
One-class classification (OCC) has attracted a great deal of attentions from various disciplines. Fe...
Motivated by mixture of probabilistic principal component analysis (PCA), which is time-consumingdue...
Abstract—In this paper, a novel approach, namely Globality and Locality Preserving Projections (GLPP...