Por favor, use este identificador para citar o enlazar este ítem: http://hdl.handle.net/10259/9717
Título
Extension of locally adapted models of photosynthetically active radiation for all sky conditions
Autor
Publicado en
Proceedings 12CNIT 2022, p. 981-986
Fecha de publicación
2022
ISBN
978-84-09-42477-1
Descripción
Comunicación presentada en: XII Congreso Nacional y III Internacional de Ingeniería Termodinámica (12 CNIT), June 19- July 1, Madrid (Spain)
Abstract
Photosynthetically Active Radiation (PAR, 400-700 nm) is the energy source to trigger photosynthesis. This process makes food and biomass production and forest productivity possible, so it becomes essential for determining the impact of deforestation and climate change on agriculture. Due to the scarcity of PAR data from direct measurements at ground meteorological stations, empirical models based on linear regressions have been developed for estimate PAR data, using other meteorological and climatic variables. In recent years, machine learning algorithms have been discovered as a useful tool for modelling meteorological and climatic data. Thus, Artificial Neural Networks (ANN) have been used for modelling PAR, with different meteorological variables as input. Both procedures, multilinear regressions and ANN’s, have been used in this work for modelling PAR in Burgos (Spain) under all sky conditions attending to the sky clearness classification and in an hourly basis. The performance of the resulting models has been tested for PAR estimates at other locations. To this end, he experimental data obtained from the Surface Radiation Budget Network (SURFRAD) in the USA was used. This proves the good fit of the models developed in Burgos to the SURFRAD weather stations.
Palabras clave
Solar radiation
Modelling
PAR
biomass
Materia
Termodinámica
Thermodynamics
Energía solar
Solar energy
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