Industrial plants often work at different operating points. However, in literature applications of neural networks for fault diagnosis usually consider only a single working condition or small changes of operating points. A standard scheme for the design of neural networks for fault diagnosis at all operating points may be impractical due to the unavailability of suitable training data for all working conditions. This paper addresses the design of a single neural network for the diagnosis of faults in the sensors of an industrial gas turbine working at different conditions. The presented results illustrate the performance of the trained neural network for sensor fault diagnosis
ABSTRACT This paper describes a procedure to measure the performance of detection and isolation of m...
Fault diagnosis and identification (FDI) have been widely developed during recent years. Model--bas...
The application of neural networks is one of promising ways to improve efficiency when diagnosing av...
Industrial plants often work at different operating points. However, in literature applications o...
An application of a procedure using a neural network for the detection and isolation of faults model...
In this paper an application of a procedure using a neural network for the detection and isolation o...
Sensor failures are a major cause of concern in engine-performance monitoring as they can result in ...
Summarization: In this paper artificial neural networks are used with promising results in a critica...
In the paper, neural network (NN) models for gas turbine diagnostics are studied and developed. The ...
Accurate gas turbine diagnosis relies on accurate measurements from sensors. Unfortunately, sensors ...
In this work a model--based procedure exploiting analytical redundancy via state estimation techn...
The paper deals with the set-up and the application of an Artificial Intelligence technique based on...
A neural network approach is employed for estimating key efficiency parameters in a gas turbine engi...
ABSTRACT In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and develo...
An application of a procedure using a neural network for the detection and isolation of faults model...
ABSTRACT This paper describes a procedure to measure the performance of detection and isolation of m...
Fault diagnosis and identification (FDI) have been widely developed during recent years. Model--bas...
The application of neural networks is one of promising ways to improve efficiency when diagnosing av...
Industrial plants often work at different operating points. However, in literature applications o...
An application of a procedure using a neural network for the detection and isolation of faults model...
In this paper an application of a procedure using a neural network for the detection and isolation o...
Sensor failures are a major cause of concern in engine-performance monitoring as they can result in ...
Summarization: In this paper artificial neural networks are used with promising results in a critica...
In the paper, neural network (NN) models for gas turbine diagnostics are studied and developed. The ...
Accurate gas turbine diagnosis relies on accurate measurements from sensors. Unfortunately, sensors ...
In this work a model--based procedure exploiting analytical redundancy via state estimation techn...
The paper deals with the set-up and the application of an Artificial Intelligence technique based on...
A neural network approach is employed for estimating key efficiency parameters in a gas turbine engi...
ABSTRACT In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and develo...
An application of a procedure using a neural network for the detection and isolation of faults model...
ABSTRACT This paper describes a procedure to measure the performance of detection and isolation of m...
Fault diagnosis and identification (FDI) have been widely developed during recent years. Model--bas...
The application of neural networks is one of promising ways to improve efficiency when diagnosing av...