This paper describes two implementation approaches for modelling the air temperature of an automated greenhouse located in the campus of the University of Trás-os- Montes e Alto Douro. Linear models, based in the discretization of the heat transfer physical laws, and non-linear neural networks models are used. These models are describes as functions of the outside climate and control actions performed for heating and cooling. Results are presented to illustrate the performance of each model in the simulation and prediction of the greenhouse air temperature. The data used to compute the simulation models was collected with a PC-based acquisition and control system using a sampling time interval of 1 minute.The authors appreciate the support ...
The time-series models introduced in this paper were developed to estimate and forecast temperature ...
Results on the application of radial basis function neural networks to model the inside air temperat...
The adequacy of radial basis function neural networks to model the inside air temperature of a hydro...
[Abstract] Greenhouses are multivariable and nonlinear systems with high degree of complexity, so it...
This paper presents some of the work on greenhouse environmental control that has been carried out a...
Comunicación presentada a las XXXIX Jornadas de Automática, celebradas en Badajoz del 5 al 7 de Sept...
ABSTRACT During the daytime in tropical region, air temperature inside the greenhouse higher than th...
The adequacy of radial basis function neural networks to model the inside air temperature of a hydro...
Food production and energy consumption are two important factors when assessing greenhouse systems. ...
Model-based control techniques are commonly applied to control the greenhouse climate. As well-know...
Model-based greenhouse climate control combined with use of reliable sensors can achieve ideal balan...
Performance of greenhouse environmental control systems can be evaluated by predictive climate model...
During the daytime in tropical region, air temperature inside the greenhouse higher than the outside...
The use of experimental research results to teach artificial neural networks was aimed at determinin...
The need for production of all kinds of crops in high quantities and over the entire year makes the...
The time-series models introduced in this paper were developed to estimate and forecast temperature ...
Results on the application of radial basis function neural networks to model the inside air temperat...
The adequacy of radial basis function neural networks to model the inside air temperature of a hydro...
[Abstract] Greenhouses are multivariable and nonlinear systems with high degree of complexity, so it...
This paper presents some of the work on greenhouse environmental control that has been carried out a...
Comunicación presentada a las XXXIX Jornadas de Automática, celebradas en Badajoz del 5 al 7 de Sept...
ABSTRACT During the daytime in tropical region, air temperature inside the greenhouse higher than th...
The adequacy of radial basis function neural networks to model the inside air temperature of a hydro...
Food production and energy consumption are two important factors when assessing greenhouse systems. ...
Model-based control techniques are commonly applied to control the greenhouse climate. As well-know...
Model-based greenhouse climate control combined with use of reliable sensors can achieve ideal balan...
Performance of greenhouse environmental control systems can be evaluated by predictive climate model...
During the daytime in tropical region, air temperature inside the greenhouse higher than the outside...
The use of experimental research results to teach artificial neural networks was aimed at determinin...
The need for production of all kinds of crops in high quantities and over the entire year makes the...
The time-series models introduced in this paper were developed to estimate and forecast temperature ...
Results on the application of radial basis function neural networks to model the inside air temperat...
The adequacy of radial basis function neural networks to model the inside air temperature of a hydro...