Detalhes do Documento

Solar radiation prediction using wavelet decomposition

Autor(es): Coelho, J.P. cv logo 1 ; Cunha, José Boaventura cv logo 2 ; Oliveira, Paulo cv logo 3

Data: 2008

Identificador Persistente: http://hdl.handle.net/10198/2746

Origem: Biblioteca Digital do IPB

Assunto(s): Time-series prediction; Neural networks; Wavelet decomposition; AR models


Descrição
Nowadays, a substantial part of the agricultural production takes place in greenhouses, which enable to tune the crop growing by modifying, artificially, the environmental conditions and the plant’s nutrition. The main goal is to optimise the balance between the production economic return and the operation costs of the climate actuators. Severe environment and market restrictions jointly with an increasing tendency of the fuel price motivate the development of more “intelligent” energy regulators. In order to formulate the best options for a production plan, this type of artificial supervisors must be able to formulate close predictions on a large set of variables. Considering, for instance, the air temperature control inside a greenhouse, the system must be able to close predict the evolution of the solar radiation since this is the exogenous variable which most influences the thermal load during the day. In this paper, an artificial neural network, in conjunction with a wavelet decomposition strategy, is used for forecasting, an hour ahead, the instantaneous solar radiation energy density sampled at one minute interval. The results obtained from this work encourage further exploitation of this kind of signal processing technique
Tipo de Documento Documento de conferência
Idioma Inglês
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