The target of this paper is the performance-based diagnostics of a gas turbine for the automated early detection of components malfunctions. The paper proposes a new combination of multiple methodologies for the performance-based diagnostics of single and multiple failures on a two-spool engine. The aim of this technique is to combine the strength of each methodology and provide a high success rate for single and multiple failures with the presence of measurement malfunctions. A combination of KF (Kalman Filter), ANN (Artificial Neural Network) and FL (Fuzzy Logic) is used in this research in order to improve the success rate, to increase the flexibility and the number of failures detected and to combine the strength of multiple methods to ...
ABSTRACT In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and develo...
The FDI step identifies the presence of a fault, its level, type, and possible location. Gas turbine...
Gas path fault diagnosis involves the effective utilization of condition-based sensor signals along ...
A fuzzy system is developed using a linearized performance model of the gas turbine engine for perfo...
Accurate gas turbine diagnosis relies on accurate measurements from sensors. Unfortunately, sensors ...
The reliability of gas path components (compressor, burners and turbines) of a gas turbine is genera...
In a gas turbine fault diagnostics, the removal of measurement noise and data outliers prior to the ...
In a gas turbine fault diagnostics, the removal of measurementnoise and data outliers prior to the f...
The reliabilities of the gas-path components (compressor, burners and turbines) of a gas turbine (G...
The correct and early detection of incipient faults or severe degradation phenomena in gas turbine s...
Aircraft engines are complex systems that require high reliability and adequate monitoring to ensure...
In a free energy market the reduction of operating costs becomes a primary goal and, in this context...
Effective fault diagnosis approach in gas turbines is crucial for ensuring reliable and efficient op...
A diagnostic method consisting of a combination of Kalman filters and Bayesian Belief Network (BBN) ...
The role of diagnostic systems in gas turbine operations has changed over the past years from a sing...
ABSTRACT In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and develo...
The FDI step identifies the presence of a fault, its level, type, and possible location. Gas turbine...
Gas path fault diagnosis involves the effective utilization of condition-based sensor signals along ...
A fuzzy system is developed using a linearized performance model of the gas turbine engine for perfo...
Accurate gas turbine diagnosis relies on accurate measurements from sensors. Unfortunately, sensors ...
The reliability of gas path components (compressor, burners and turbines) of a gas turbine is genera...
In a gas turbine fault diagnostics, the removal of measurement noise and data outliers prior to the ...
In a gas turbine fault diagnostics, the removal of measurementnoise and data outliers prior to the f...
The reliabilities of the gas-path components (compressor, burners and turbines) of a gas turbine (G...
The correct and early detection of incipient faults or severe degradation phenomena in gas turbine s...
Aircraft engines are complex systems that require high reliability and adequate monitoring to ensure...
In a free energy market the reduction of operating costs becomes a primary goal and, in this context...
Effective fault diagnosis approach in gas turbines is crucial for ensuring reliable and efficient op...
A diagnostic method consisting of a combination of Kalman filters and Bayesian Belief Network (BBN) ...
The role of diagnostic systems in gas turbine operations has changed over the past years from a sing...
ABSTRACT In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and develo...
The FDI step identifies the presence of a fault, its level, type, and possible location. Gas turbine...
Gas path fault diagnosis involves the effective utilization of condition-based sensor signals along ...