A Portland cement process was taken into consideration and monitored for one month with respect to polluting emissions, fuel and raw material physical-chemical properties, and operative conditions. Soft models, based on linear (partial least-squares, PLS, and principal component regression, PCR) and nonlinear (artificial neural networks, ANNs) approaches, were employed to predict the polluting emissions. The predictive ability of the three regression methods was evaluated by means of the partition of the dataset by Kohonen self-associative maps into both a training and a test set. Then, a "leave-more-out" approach, based on the use of a training set, a test set, and a production set, was adopted. The training set was used to build the model...
Application of a reliable forecasting model for any water treatment plant (WTP) is essential in orde...
This paper presents a way of predicting the biochemical oxygen demand (BOD) of the output stream of ...
Supplementary cementitious materials have been proven to be effective partial cement replacements in...
A Portland cement process was taken into consideration and monitored for one month with respect to p...
Abstract. Nitric acid production plants emit small amounts of nitrogen oxides (NOx) to the environme...
In this paper a novel approach, based on a neural network structure, is introduced in order to face ...
In this paper, machine learning techniques are compared to predict nitrogen oxide (NOx) pollutant e...
In this paper, supervised learning techniques are compared to predict nitro- gen oxide (NOx) pollut...
In this work, two alternative methodologies for mod-eling and predicting gas emissions of NO, NO2 an...
This research deals with the analysis of the behaviour of artificial neural nets for prediction of r...
With increasing demands regarding a detailed estimation of environmental impacts of materials in new...
This paper presents the methodology of design of three different modeling techniques for predicting ...
Raw-material blending is an important process affecting cement quality. The aim of this process is t...
Artificial Neural Networks (ANN) has been widely used to solve some of the problems in science and e...
This study aimed at developing models predicting cement strength based on shallow neural networks (A...
Application of a reliable forecasting model for any water treatment plant (WTP) is essential in orde...
This paper presents a way of predicting the biochemical oxygen demand (BOD) of the output stream of ...
Supplementary cementitious materials have been proven to be effective partial cement replacements in...
A Portland cement process was taken into consideration and monitored for one month with respect to p...
Abstract. Nitric acid production plants emit small amounts of nitrogen oxides (NOx) to the environme...
In this paper a novel approach, based on a neural network structure, is introduced in order to face ...
In this paper, machine learning techniques are compared to predict nitrogen oxide (NOx) pollutant e...
In this paper, supervised learning techniques are compared to predict nitro- gen oxide (NOx) pollut...
In this work, two alternative methodologies for mod-eling and predicting gas emissions of NO, NO2 an...
This research deals with the analysis of the behaviour of artificial neural nets for prediction of r...
With increasing demands regarding a detailed estimation of environmental impacts of materials in new...
This paper presents the methodology of design of three different modeling techniques for predicting ...
Raw-material blending is an important process affecting cement quality. The aim of this process is t...
Artificial Neural Networks (ANN) has been widely used to solve some of the problems in science and e...
This study aimed at developing models predicting cement strength based on shallow neural networks (A...
Application of a reliable forecasting model for any water treatment plant (WTP) is essential in orde...
This paper presents a way of predicting the biochemical oxygen demand (BOD) of the output stream of ...
Supplementary cementitious materials have been proven to be effective partial cement replacements in...