A Deep Learning Model of Radio Wave Propagation for Precision Agriculture and Sensor System in Greenhouses
Metadatos
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MDPI
Materia
Deep learning Neural network Precision agriculture Propagation model Wireless sensor networks
Fecha
2023-01-13Referencia bibliográfica
Cama-Pinto, D... [et al.]. A Deep Learning Model of RadioWave Propagation for Precision Agriculture and Sensor System in Greenhouses. Agronomy 2023, 13, 244. [https://doi.org/10.3390/agronomy13010244]
Patrocinador
AUIP (Iberoamerican University Association for Postgraduate Studies); Spanish Ministry of Science, Innovation, and Universities under the programme "Proyectos de I+D de Generacion de Conocimiento" of the national programme for the generation of scientific and technological knowledge and strengthening of the R+D+I system PGC2018-098813-B-C33; UAL-FEDER 2020 UAL2020-TIC-A2080Resumen
The production of crops in greenhouses will ensure the demand for food for the world’s
population in the coming decades. Precision agriculture is an important tool for this purpose, supported
among other things, by the technology of wireless sensor networks (WSN) in the monitoring
of agronomic parameters. Therefore, prior planning of the deployment of WSN nodes is relevant
because their coverage decreases when the radio waves are attenuated by the foliage of the plantation.
In that sense, the method proposed in this study applies Deep Learning to develop an empirical model
of radio wave attenuation when it crosses vegetation that includes height and distance between the
transceivers of the WSN nodes. The model quality is expressed via the parameters cross-validation,
R2 of 0.966, while its generalized error is 0.920 verifying the reliability of the empirical model.