Quantitative analysis for the flue gas of natural gas-fired generator is significant for energy conservation and emission reduction. The traditional partial least squares method may not deal with the nonlinear problems effectively. In the paper, a nonlinear partial least squares method with extended input based on radial basis function neural network (RBFNN) is used for components prediction of flue gas. For the proposed method, the original independent input matrix is the input of RBFNN and the outputs of hidden layer nodes of RBFNN are the extension term of the original independent input matrix. Then, the partial least squares regression is performed on the extended input matrix and the output matrix to establish the components prediction...
In this study, the multilayer neural networks (MLNNs) with sigmoid hidden layers and radial basis fu...
In view of the local extreme problem of the gradient descent algorithm, which makes the working face...
My country’s coal seam permeability is generally low, and it is difficult to carry out large-scale d...
Copyright © 2014 Hui Cao et al.This is an open access article distributed under the Creative Commons...
This degree project studies implementation and comparison of different AI models to predict (1) soli...
In biomass gasification, efficiency of energy quantification is a difficult part without finishing t...
As a powerful tool to solve nonlinear problems, artificial neural network method (ANN) gets a wide r...
This work deals with quantitative analysis of multicomponent mud logging gas based on infrared spect...
Aspen Plus (R) is one of the practicable software for investigation of the biomass gasification char...
In this paper a new method based an artificial neural network (ANN) for prediction of naturalgas mix...
The oxygen content of the gas-fired boiler flue gas is used to monitor boiler combustion efficiency....
This paper is aiming to apply neural network algorithm for predicting the process response (NOx emis...
This study is an extensive comparison of the predictive performance of a bagging neural network (BAN...
Artificial neural networks have been shown to be able to approximate any continuous nonlinear functi...
This paper studies the application of radial basis functions to predict nitrogen oxides 24 hours in ...
In this study, the multilayer neural networks (MLNNs) with sigmoid hidden layers and radial basis fu...
In view of the local extreme problem of the gradient descent algorithm, which makes the working face...
My country’s coal seam permeability is generally low, and it is difficult to carry out large-scale d...
Copyright © 2014 Hui Cao et al.This is an open access article distributed under the Creative Commons...
This degree project studies implementation and comparison of different AI models to predict (1) soli...
In biomass gasification, efficiency of energy quantification is a difficult part without finishing t...
As a powerful tool to solve nonlinear problems, artificial neural network method (ANN) gets a wide r...
This work deals with quantitative analysis of multicomponent mud logging gas based on infrared spect...
Aspen Plus (R) is one of the practicable software for investigation of the biomass gasification char...
In this paper a new method based an artificial neural network (ANN) for prediction of naturalgas mix...
The oxygen content of the gas-fired boiler flue gas is used to monitor boiler combustion efficiency....
This paper is aiming to apply neural network algorithm for predicting the process response (NOx emis...
This study is an extensive comparison of the predictive performance of a bagging neural network (BAN...
Artificial neural networks have been shown to be able to approximate any continuous nonlinear functi...
This paper studies the application of radial basis functions to predict nitrogen oxides 24 hours in ...
In this study, the multilayer neural networks (MLNNs) with sigmoid hidden layers and radial basis fu...
In view of the local extreme problem of the gradient descent algorithm, which makes the working face...
My country’s coal seam permeability is generally low, and it is difficult to carry out large-scale d...