The aim of the optimization is to find out the optimal parameters for complex system such as synthesis of the com-pounds, chemical reactions, analytical methods, property of the products or chemical processes. The parameters that we want to determine are the values, which describe the system. The SIMPLEX is one of the most simple and general opti-mization method. It is used to predict the experiments that in quickest way lead to an optimum. In this work the SIMPLEX method was used to optimize the parameters of the counter-propagation neural network model constructed for the prediction of the ozone concentration as one of the most outstanding air pollution parameters in the Buenos Aires region. The network was trained with the data available...
The modelling of urban air quality prediction is a difficult task because: i) the processes are cont...
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 ...
This paper presents an artificial neural network model that is able to predict ozone concentrations ...
Air quality problems produced by high levels of ozone affect human health and are related to respira...
ABSTRACT: This work analyzes the results of a Neural Network model applied to air pollution data. In...
This paper present an environmental contingency forecasting tool based on Neural Networks (NN). Fore...
Background and Objectives: Weather pollution, caused by Ozone (O3) in metropolitans, is one of the m...
This study considers the usage of multilinear regression and artificial neural network modelling to ...
WOS: 000428114800013The method of Levenberg-Marquardt learning algorithm was investigated for estima...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
The estimation of the surface ozone concentration promotes the creation of data useful for plan-ning...
(24-29 avril 2005)The nitrogen monoxide (NO) is essential in atmospheric chemistry and especially in...
Many environmental variables, in particular, related to air or water quality, are measured in a limi...
A neural network model to predict ozone concentration in the Sao Paulo Metropolitan Area was develop...
The modelling of urban air quality prediction is a difficult task because: i) the processes are cont...
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 ...
This paper presents an artificial neural network model that is able to predict ozone concentrations ...
Air quality problems produced by high levels of ozone affect human health and are related to respira...
ABSTRACT: This work analyzes the results of a Neural Network model applied to air pollution data. In...
This paper present an environmental contingency forecasting tool based on Neural Networks (NN). Fore...
Background and Objectives: Weather pollution, caused by Ozone (O3) in metropolitans, is one of the m...
This study considers the usage of multilinear regression and artificial neural network modelling to ...
WOS: 000428114800013The method of Levenberg-Marquardt learning algorithm was investigated for estima...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
The estimation of the surface ozone concentration promotes the creation of data useful for plan-ning...
(24-29 avril 2005)The nitrogen monoxide (NO) is essential in atmospheric chemistry and especially in...
Many environmental variables, in particular, related to air or water quality, are measured in a limi...
A neural network model to predict ozone concentration in the Sao Paulo Metropolitan Area was develop...
The modelling of urban air quality prediction is a difficult task because: i) the processes are cont...
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 ...