Exhaust Gas Temperature (EGT) is a key parameter in diagnosing the health of gas turbine engines (GTEs). In this paper, we propose a model-driven spectroscopic network with strong generalizability to monitor the EGT rapidly and accurately. The proposed network relies on data obtained from a well-proven temperature measurement technique, i.e., wavelength modulation spectroscopy, with the novelty of introducing underlying physical absorption model and building a hybrid dataset from simulation and experiment. This hybrid model-driven network enables strong noise resistance of the neural network against real-world experimental data. The proposed network is assessed by in situ measurements of EGT on an aero-GTE at millisecond-level temporal resp...
Accurate and rapid measurement of water vapor concentration and temperature in the exhaust of gas tu...
A machine learning approach has been implemented to measure the electron temperature directly from t...
The lack of gas turbine field data, especially faulty engine data, and the complexity of fault embed...
Exhaust Gas Temperature (EGT) is a key parameter in diagnosing the health of gas turbine engines (GT...
Proceeding of: International Conference on Computational Intelligence for Modelling, Control and Aut...
Given the critical nature of Gas Turbines in most industrial plants, it is a high priority to find w...
This paper presents the prediction of temperature field distribution in a single annular section usi...
Considering that vehicle exhaust contributes to the majority of nitrogen oxides (NOx), which is harm...
ABSTRACT In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and develo...
In the paper, neural network (NN) models for gas turbine diagnostics are studied and developed. The ...
Proceeding of: 7th International Conference on Intelligent Data Engineering and Automated Learning, ...
Gas turbines, which is also called as combustion turbines, are broadly used in scope of industry of ...
State-of-the-art gas turbine technology is technically capable of providing the flexible power gener...
Modern condition monitoring-based methods are used to reduce maintenance costs, increase aircraft sa...
Abstract This paper presents a physics-informed neural network (PINN) approach for monitoring the he...
Accurate and rapid measurement of water vapor concentration and temperature in the exhaust of gas tu...
A machine learning approach has been implemented to measure the electron temperature directly from t...
The lack of gas turbine field data, especially faulty engine data, and the complexity of fault embed...
Exhaust Gas Temperature (EGT) is a key parameter in diagnosing the health of gas turbine engines (GT...
Proceeding of: International Conference on Computational Intelligence for Modelling, Control and Aut...
Given the critical nature of Gas Turbines in most industrial plants, it is a high priority to find w...
This paper presents the prediction of temperature field distribution in a single annular section usi...
Considering that vehicle exhaust contributes to the majority of nitrogen oxides (NOx), which is harm...
ABSTRACT In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and develo...
In the paper, neural network (NN) models for gas turbine diagnostics are studied and developed. The ...
Proceeding of: 7th International Conference on Intelligent Data Engineering and Automated Learning, ...
Gas turbines, which is also called as combustion turbines, are broadly used in scope of industry of ...
State-of-the-art gas turbine technology is technically capable of providing the flexible power gener...
Modern condition monitoring-based methods are used to reduce maintenance costs, increase aircraft sa...
Abstract This paper presents a physics-informed neural network (PINN) approach for monitoring the he...
Accurate and rapid measurement of water vapor concentration and temperature in the exhaust of gas tu...
A machine learning approach has been implemented to measure the electron temperature directly from t...
The lack of gas turbine field data, especially faulty engine data, and the complexity of fault embed...