An analysis of learning and generalization characteristics of neural networks for diagnosing process failures was presented. Various feedforward neural network topologies were tested and compared. The single fault assumption was relaxed to include multiple causal origins of the symptoms. A chemical plant composed of a reactor and a distillation column was used as a case study. The performance during recall improves at first with an increase in the number of hidden units and with the amount of training, and then attains convergence. The algorithm of the Generalized Delta Rule (GDR) was used to train the networks by minimizing the sum of squares of residual according to the given convergence criterion. The obtained results show the applicabil...
This thesis is about the application of Artificial Neural Network (ANN) as fault detection in the ch...
A fault diagnosis scheme for unknown nonlinear dynamic systems with modules of residual generation a...
Industrial plants often work at different operating points. However, in literature applications o...
The field of fault detection and diagnosis deals with the design of computer-based automated systems...
Neural nets have recently become the focus of much attention, largely because of their wide range of...
The present investigation was focused on formulating a method for designing a fault diagnosis system...
energy and process flow. As time passes, the performance of chemical process gradually degrades due ...
The suitability of pattern recognition for process monitoring of chemical plants is discussed. Exper...
This paper focuses on the use of artificial neural network (ANN) to detect and diagnose fault in pro...
The thesis proposes a quite novel and easily generalized fault detection and diagnosis (FDD) scheme ...
Chemical processes are systems that include complicated network of material, energy and process flow...
Fault diagnosis and identi®cation (FDI) have been widely developed during recent years. Model-based...
A neural-network based on-line fault-diagnosis system for industrial processes is presented in this ...
In this paper, the application of neural network in detecting sensor failures is presented. The stud...
This article presents an approach to fault diagnosis of chemical processes at steadystate operation ...
This thesis is about the application of Artificial Neural Network (ANN) as fault detection in the ch...
A fault diagnosis scheme for unknown nonlinear dynamic systems with modules of residual generation a...
Industrial plants often work at different operating points. However, in literature applications o...
The field of fault detection and diagnosis deals with the design of computer-based automated systems...
Neural nets have recently become the focus of much attention, largely because of their wide range of...
The present investigation was focused on formulating a method for designing a fault diagnosis system...
energy and process flow. As time passes, the performance of chemical process gradually degrades due ...
The suitability of pattern recognition for process monitoring of chemical plants is discussed. Exper...
This paper focuses on the use of artificial neural network (ANN) to detect and diagnose fault in pro...
The thesis proposes a quite novel and easily generalized fault detection and diagnosis (FDD) scheme ...
Chemical processes are systems that include complicated network of material, energy and process flow...
Fault diagnosis and identi®cation (FDI) have been widely developed during recent years. Model-based...
A neural-network based on-line fault-diagnosis system for industrial processes is presented in this ...
In this paper, the application of neural network in detecting sensor failures is presented. The stud...
This article presents an approach to fault diagnosis of chemical processes at steadystate operation ...
This thesis is about the application of Artificial Neural Network (ANN) as fault detection in the ch...
A fault diagnosis scheme for unknown nonlinear dynamic systems with modules of residual generation a...
Industrial plants often work at different operating points. However, in literature applications o...