In order to implement a model-based predictive control methodology for a research greenhouse several predictive models are required. This paper presents the modelling framework and results about the models that were identified. RBF neural networks are used as non-linear auto-regressive and non-linear auto-regressive with exogenous inputs models. The networks parameters are determined using the Levenberg-Marquardt optimisation method and their structure is selected by means of multi-objective genetic algorithms. By network structure we refer to the number of neurons of the networks, the input variables and for each variable considered its lagged input terms. Two types of models were identified: process models (greenhouse climate) and ext...
Prediction the inside environment variables in greenhouses is very important because they play a vit...
The application of the radial basis function neural network to greenhouse inside air temperature mod...
As greenhouses are being widely adopted worldwide, it is important to improve the energy efficiency ...
In order to implement a model-based predictive control methodology for a research greenhouse several...
This paper presents results on the application of Multi-Objective Genetic Algorithms to the selectio...
This paper presents some of the work on greenhouse environmental control that has been carried out a...
In this work a multiobjective genetic algorithm is applied to the identi cation of radial basis fun...
This paper presents the methodology and simulation results regarding the application of model predic...
[Abstract] Greenhouses are multivariable and nonlinear systems with high degree of complexity, so it...
This paper presents results regarding ongoing experimental research in a hydroponic greenhouse locat...
Food production and energy consumption are two important factors when assessing greenhouse systems. ...
Moderne Präzisionsgartenbaulicheproduktion schließt hoch technifizierte Gewächshäuser, deren Einsatz...
The adequacy of radial basis function neural networks to model the inside air temperature of a hydro...
The adequacy of radial basis function neural networks to model the inside air temperature of a hydro...
Plants need a specific environment to grow and reproduce in fine fettle. Nevertheless, climatic cond...
Prediction the inside environment variables in greenhouses is very important because they play a vit...
The application of the radial basis function neural network to greenhouse inside air temperature mod...
As greenhouses are being widely adopted worldwide, it is important to improve the energy efficiency ...
In order to implement a model-based predictive control methodology for a research greenhouse several...
This paper presents results on the application of Multi-Objective Genetic Algorithms to the selectio...
This paper presents some of the work on greenhouse environmental control that has been carried out a...
In this work a multiobjective genetic algorithm is applied to the identi cation of radial basis fun...
This paper presents the methodology and simulation results regarding the application of model predic...
[Abstract] Greenhouses are multivariable and nonlinear systems with high degree of complexity, so it...
This paper presents results regarding ongoing experimental research in a hydroponic greenhouse locat...
Food production and energy consumption are two important factors when assessing greenhouse systems. ...
Moderne Präzisionsgartenbaulicheproduktion schließt hoch technifizierte Gewächshäuser, deren Einsatz...
The adequacy of radial basis function neural networks to model the inside air temperature of a hydro...
The adequacy of radial basis function neural networks to model the inside air temperature of a hydro...
Plants need a specific environment to grow and reproduce in fine fettle. Nevertheless, climatic cond...
Prediction the inside environment variables in greenhouses is very important because they play a vit...
The application of the radial basis function neural network to greenhouse inside air temperature mod...
As greenhouses are being widely adopted worldwide, it is important to improve the energy efficiency ...