Modeling of Energy Demand of a High-Tech Greenhouse in Warm Climate Based on Bayesian Networks

Author:

Hernández César1,del Sagrado José1,Rodríguez Francisco1,Moreno José Carlos1,Sánchez Jorge Antonio1

Affiliation:

1. University of Almería, Agrifood Campus of International Excellence (CeiA3), CIESOL Research Center on Solar Energy, Informatics Department, Carretera Sacramento s/n, 04120 Almería, Spain

Abstract

This work analyzes energy demand in a High-Tech greenhouse and its characterization, with the objective of building and evaluating classification models based on Bayesian networks. The utility of these models resides in their capacity of perceiving relations among variables in the greenhouse by identifying probabilistic dependences between them and their ability to make predictions without the need of observing all the variables present in the model. In this way they provide a useful tool for an energetic control system design. In this paper the acquisition data system used in order to collect the dataset studied is described. The energy demand distribution is analyzed and different discretization techniques are applied to reduce its dimensionality, paying particular attention to their impact on the classification model’s performance. A comparison between the different classification models applied is performed.

Funder

Andalusian Ministry of Economy, Innovation and Science

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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