Please use this identifier to cite or link to this item: https://dspace.univ-ghardaia.edu.dz/xmlui/handle/123456789/9547
Title: Contribution to the study of the microclimate in greenhouse equipped with thermal storage north wall
Authors: Tahar Chaouch, Sihem
Bekkair, Khadidja Nourelhouda
BEZARI, Salah Supervisor
Keywords: Greenhouse; Thermal Storage, Artificial Neural Networks, Prediction, Temperature.
Greenhouse; Thermal Storage, Artificial Neural Networks, Prediction, Temperature.
Serre, Stockage Thermique, Réseaux de Neurones Artificiels, Prédiction, Température.
Serre, Stockage Thermique, Réseaux de Neurones Artificiels, Prédiction, Température.
Issue Date: 2025
Publisher: université Ghardaia
Abstract: Protected agriculture faces major climatic challenges, particularly the significant temperature difference between day and night. This requires advanced technological solutions to ensure a suitable indoor climate and enhance productivity. This study aims to develop an integrated system combining efficient design, thermal storage techniques, and artificial intelligence to predict the internal temperature. A solar greenhouse was constructed at the Applied Research Unit for Renewable Energy in Ghardaïa (32.36° North, 3.51° West), incorporating a north wall designed to store solar energy. This wall, with an area of 1.62 m2, was built using locally sourced stones selected for their excellent thermal properties. It stores excess heat during the day and releases it at night, thereby reducing nighttime temperature fluctuations. Experimental measurements showed that the air temperature inside the greenhouse equipped with the thermal wall was about 2.7 °C higher than the outside air temperature at night, demonstrating the system’s effectiveness. This system was coupled with an artificial intelligence model based on artificial neural networks to accurately predict the internal temperature, using indoor and outdoor climatic data collected from the experimental setup. The model showed high performance and good agreement between predicted and measured values, with a correlation coefficient exceeding 98%, confirming its efficiency and reliability as a sustainable and effective solution to the challenges of protected agriculture in harsh environments.
Protected agriculture faces major climatic challenges, particularly the significant temperature difference between day and night. This requires advanced technological solutions to ensure a suitable indoor climate and enhance productivity. This study aims to develop an integrated system combining efficient design, thermal storage techniques, and artificial intelligence to predict the internal temperature. A solar greenhouse was constructed at the Applied Research Unit for Renewable Energy in Ghardaïa (32.36° North, 3.51° West), incorporating a north wall designed to store solar energy. This wall, with an area of 1.62 m2, was built using locally sourced stones selected for their excellent thermal properties. It stores excess heat during the day and releases it at night, thereby reducing nighttime temperature fluctuations. Experimental measurements showed that the air temperature inside the greenhouse equipped with the thermal wall was about 2.7 °C higher than the outside air temperature at night, demonstrating the system’s effectiveness. This system was coupled with an artificial intelligence model based on artificial neural networks to accurately predict the internal temperature, using indoor and outdoor climatic data collected from the experimental setup. The model showed high performance and good agreement between predicted and measured values, with a correlation coefficient exceeding 98%, confirming its efficiency and reliability as a sustainable and effective solution to the challenges of protected agriculture in harsh environments.
URI: https://dspace.univ-ghardaia.edu.dz/xmlui/handle/123456789/9547
Appears in Collections:Mémoires de Master

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