Gas turbines, which is also called as combustion turbines, are broadly used in scope of industry of electric power generation, aircrafts and various process applications. The increasing of number of gas turbines used in the industry had received many concerns as the pollutant emission from gas turbine also increase. The emission of gas turbines from the burning fuels due to its operational process in nowadays industries had caused the negative effects to the green and clean environment. This study poses a prediction method together with diagnosis of emission of industrial gas turbines. The Artificial Neural Network (ANN) regression trained by using predicted results from simulation model established using GSP11. MATLAB is used as a basic pl...
The wide adoption of gas turbines in the energy industry has led to the introduction of dry low emis...
Palm oil is produced in palm oil mills, where palm oil waste can be used (shell and fibre) as fuel f...
The predictive ability of artificial neural networks where a large number of experimental data are a...
This paper is aiming to apply neural network algorithm for predicting the process response (NOx emis...
In this work, artificial neural networks (ANNs) were applied to describe the performance of a micro ...
In this work, artificial neural networks (ANNs) were applied to describe the performance of a micro ...
In this work, artificial neural networks (ANNs) were applied to describe the performance of a micro ...
Predictive emission monitoring systems (PEMS) are software solutions for the validation and suppleme...
State-of-the-art gas turbine technology is technically capable of providing the flexible power gener...
State-of-the-art gas turbine technology is technically capable of providing the flexible power gener...
The aim of this collaboration, between the division of Thermal Power Engineering and Lunds Energi AB...
Predictive emission monitoring systems (PEMS) are important tools for validation and backing up of c...
In the paper, Neural Networks (NNs) for the simulation of gas turbines are studied and developed in ...
Predicting the state of modern heavy-duty gas turbines for large-scale power generation allows for m...
Abstract. Nitric acid production plants emit small amounts of nitrogen oxides (NOx) to the environme...
The wide adoption of gas turbines in the energy industry has led to the introduction of dry low emis...
Palm oil is produced in palm oil mills, where palm oil waste can be used (shell and fibre) as fuel f...
The predictive ability of artificial neural networks where a large number of experimental data are a...
This paper is aiming to apply neural network algorithm for predicting the process response (NOx emis...
In this work, artificial neural networks (ANNs) were applied to describe the performance of a micro ...
In this work, artificial neural networks (ANNs) were applied to describe the performance of a micro ...
In this work, artificial neural networks (ANNs) were applied to describe the performance of a micro ...
Predictive emission monitoring systems (PEMS) are software solutions for the validation and suppleme...
State-of-the-art gas turbine technology is technically capable of providing the flexible power gener...
State-of-the-art gas turbine technology is technically capable of providing the flexible power gener...
The aim of this collaboration, between the division of Thermal Power Engineering and Lunds Energi AB...
Predictive emission monitoring systems (PEMS) are important tools for validation and backing up of c...
In the paper, Neural Networks (NNs) for the simulation of gas turbines are studied and developed in ...
Predicting the state of modern heavy-duty gas turbines for large-scale power generation allows for m...
Abstract. Nitric acid production plants emit small amounts of nitrogen oxides (NOx) to the environme...
The wide adoption of gas turbines in the energy industry has led to the introduction of dry low emis...
Palm oil is produced in palm oil mills, where palm oil waste can be used (shell and fibre) as fuel f...
The predictive ability of artificial neural networks where a large number of experimental data are a...