A Nonlinear Gaussian Belief Network (NLGBN) based fault diagnosis technique is proposed for industrial processes. In this study, a three-layer NLGBN is constructed and trained to extract useful features from noisy process data. The nonlinear relationships between the process variables and the latent variables are modelled by a set of sigmoidal functions. To take into account the noisy nature of the data, model variances are also introduced to both the process variables and the latent variables. The three-layer NLGBN is first trained with normal process data using a variational Expectation and Maximization algorithm. During real-time monitoring, the online process data samples are used to update the posterior mean of the top-layer latent var...
Neural nets have recently become the focus of much attention, largely because of their wide range of...
Due to its importance in process improvement, the issue of determining exactly when faults occur has...
The fault detection and diagnosis of complicated production processes is one of essential tasks need...
Monitoring process upsets and malfunctions as early as possible and then finding and removing the fa...
Modern industrial processes are systems with a high degree of complexity. These systems comprise of ...
A probabilistic multivariate fault diagnosis technique is proposed for industrial processes. The joi...
Abstract. The traditional model-based fault detection and isolation (FDI) rely on tacit assumption t...
In this paper, stochastic models for fault detection in industrial automation processes are investig...
Abstract Real-time process monitoring and diagnosis of industrial processes is one of important oper...
Statistical fault detection techniques are able to detect fault and diagnose root-cause(s) from the ...
The field of fault detection and diagnosis deals with the design of computer-based automated systems...
The thesis proposes a quite novel and easily generalized fault detection and diagnosis (FDD) scheme ...
A self-organizing map (SOM) based methodology is proposed for fault detection and diagnosis of proce...
A self-organizing map (SOM) based methodology is proposed for fault detection and diagnosis of proce...
The purpose of this article is to present a method for industrial process diagnosis with Bayesian ne...
Neural nets have recently become the focus of much attention, largely because of their wide range of...
Due to its importance in process improvement, the issue of determining exactly when faults occur has...
The fault detection and diagnosis of complicated production processes is one of essential tasks need...
Monitoring process upsets and malfunctions as early as possible and then finding and removing the fa...
Modern industrial processes are systems with a high degree of complexity. These systems comprise of ...
A probabilistic multivariate fault diagnosis technique is proposed for industrial processes. The joi...
Abstract. The traditional model-based fault detection and isolation (FDI) rely on tacit assumption t...
In this paper, stochastic models for fault detection in industrial automation processes are investig...
Abstract Real-time process monitoring and diagnosis of industrial processes is one of important oper...
Statistical fault detection techniques are able to detect fault and diagnose root-cause(s) from the ...
The field of fault detection and diagnosis deals with the design of computer-based automated systems...
The thesis proposes a quite novel and easily generalized fault detection and diagnosis (FDD) scheme ...
A self-organizing map (SOM) based methodology is proposed for fault detection and diagnosis of proce...
A self-organizing map (SOM) based methodology is proposed for fault detection and diagnosis of proce...
The purpose of this article is to present a method for industrial process diagnosis with Bayesian ne...
Neural nets have recently become the focus of much attention, largely because of their wide range of...
Due to its importance in process improvement, the issue of determining exactly when faults occur has...
The fault detection and diagnosis of complicated production processes is one of essential tasks need...