The dimension reduction methods have been proved powerful and practical to extract latent features in the signal for process monitoring. A linear dimension reduction method called nonlocal orthogonal preserving embedding (NLOPE) and its nonlinear form named nonlocal kernel orthogonal preserving embedding (NLKOPE) are proposed and applied for condition monitoring and fault detection. Different from kernel orthogonal neighborhood preserving embedding (KONPE) and kernel principal component analysis (KPCA), the NLOPE and NLKOPE models aim at preserving global and local data structures simultaneously by constructing a dual-objective optimization function. In order to adjust the trade-off between global and local data structures, a weighted param...
In this paper, a new nonlinear process monitoring technique based on kernel principal component anal...
Abstract: In this paper, a new nonlinear process monitoring technique based upon kernel principal co...
In order to deeply exploit intrinsic data feature information hidden among the process data, an impr...
In order to detect faults of nonlinear systems, an approach based on improved Locally Linear Embeddi...
As a newly emerging multivariate statistical process monitoring method, non-negative matrix factoriz...
Kernel principal component analysis (KPCA) based fault detection method, whose statistical model onl...
Aimed at the problem of high dimension and nonlinearity of variable data in chemical process, a proc...
International audienceThe principal component analysis (PCA) is a well-know technique to detect, iso...
By integrating two powerful methods of density reduction and intrinsic dimensionality estimation, a ...
In the field of structural health monitoring or machine condition monitoring, the activation of nonl...
We suggest in this article a dynamic reduced algorithm in order to enhance the monitoring abilities ...
International audienceThis paper presents a detection and diagnosis fault based on Neural Non Linear...
Traditional kernel principal component analysis (KPCA) concentrates on the global structure analysis...
In the field of structural health monitoring or machine condition monitoring, the activation of nonl...
Many industrial processes contain both linear and nonlinear parts, and kernel principal component an...
In this paper, a new nonlinear process monitoring technique based on kernel principal component anal...
Abstract: In this paper, a new nonlinear process monitoring technique based upon kernel principal co...
In order to deeply exploit intrinsic data feature information hidden among the process data, an impr...
In order to detect faults of nonlinear systems, an approach based on improved Locally Linear Embeddi...
As a newly emerging multivariate statistical process monitoring method, non-negative matrix factoriz...
Kernel principal component analysis (KPCA) based fault detection method, whose statistical model onl...
Aimed at the problem of high dimension and nonlinearity of variable data in chemical process, a proc...
International audienceThe principal component analysis (PCA) is a well-know technique to detect, iso...
By integrating two powerful methods of density reduction and intrinsic dimensionality estimation, a ...
In the field of structural health monitoring or machine condition monitoring, the activation of nonl...
We suggest in this article a dynamic reduced algorithm in order to enhance the monitoring abilities ...
International audienceThis paper presents a detection and diagnosis fault based on Neural Non Linear...
Traditional kernel principal component analysis (KPCA) concentrates on the global structure analysis...
In the field of structural health monitoring or machine condition monitoring, the activation of nonl...
Many industrial processes contain both linear and nonlinear parts, and kernel principal component an...
In this paper, a new nonlinear process monitoring technique based on kernel principal component anal...
Abstract: In this paper, a new nonlinear process monitoring technique based upon kernel principal co...
In order to deeply exploit intrinsic data feature information hidden among the process data, an impr...