This paper presents a small and efficient model for predicting NOx emissions from coal-fired boilers. The raw data collected are processed by the min–max scale method and converted into a multivariate time series. The overall model’s architecture is mainly based on building blocks consisting of separable convolutional neural networks and efficient channel attention (ECA) modules. The experimental results show that the model can learn good representations from sufficient data covering different operation conditions. These results also suggest that ECA modules can improve the model’s performance. The comparative study shows our model’s strong performance compared to other NOx prediction models. Then, we demonstrate the effectiveness of the mo...
In this paper a neural network-based strategy is proposed for the estimation of the NOx emissions in...
New emission regulations will increase the need for inexpensive NOx emission monitoring solutions al...
Accurate and reliable prediction of exhaust emissions is crucial for combustion optimization control...
This paper presents a non-conventional dynamic neural network that was designed for real time predic...
In this paper we investigate the problem of NOx pollution using a model of furnace of an industrial ...
The formation of nitrogen oxides (NO{sub x}) during pulverized-coal combustion in utility boilers is...
AbstractA new methodology combining the advanced extreme learning machine (ELM) and harmony search (...
In this research paper, predictive modelling of NOx emission of a 210 MW capacity pulverized coal-fi...
In this paper we propose a soft sensor for prediction of NOx emission from the combustion unit of in...
Coal combustion is considered to be the key source of nitrogen oxide (NOx) emissions in thermal powe...
An automatic encoder (AE) extreme learning machine (ELM)-AE-ELM model is proposed to predict the NOx...
In this work, an adaptive NOx emission model is proposed for a SCR system of a 660 MW utility boiler...
Coal-fired power plants have been used to meet the energy requirements in countries where coal reser...
Abstract: This paper investigates neural network based estimation of NOx emissions in a thermal powe...
The predictive ability of artificial neural networks where a large number of experimental data are a...
In this paper a neural network-based strategy is proposed for the estimation of the NOx emissions in...
New emission regulations will increase the need for inexpensive NOx emission monitoring solutions al...
Accurate and reliable prediction of exhaust emissions is crucial for combustion optimization control...
This paper presents a non-conventional dynamic neural network that was designed for real time predic...
In this paper we investigate the problem of NOx pollution using a model of furnace of an industrial ...
The formation of nitrogen oxides (NO{sub x}) during pulverized-coal combustion in utility boilers is...
AbstractA new methodology combining the advanced extreme learning machine (ELM) and harmony search (...
In this research paper, predictive modelling of NOx emission of a 210 MW capacity pulverized coal-fi...
In this paper we propose a soft sensor for prediction of NOx emission from the combustion unit of in...
Coal combustion is considered to be the key source of nitrogen oxide (NOx) emissions in thermal powe...
An automatic encoder (AE) extreme learning machine (ELM)-AE-ELM model is proposed to predict the NOx...
In this work, an adaptive NOx emission model is proposed for a SCR system of a 660 MW utility boiler...
Coal-fired power plants have been used to meet the energy requirements in countries where coal reser...
Abstract: This paper investigates neural network based estimation of NOx emissions in a thermal powe...
The predictive ability of artificial neural networks where a large number of experimental data are a...
In this paper a neural network-based strategy is proposed for the estimation of the NOx emissions in...
New emission regulations will increase the need for inexpensive NOx emission monitoring solutions al...
Accurate and reliable prediction of exhaust emissions is crucial for combustion optimization control...