Modeling of Path Loss for RadioWave Propagation in Wireless Sensor Networks in Cassava Crops Using Machine Learning
Metadatos
Mostrar el registro completo del ítemAutor
Barrios Ulloa, Alexis; Cama Pinto, Alejandro; De-la-Hoz-Franco, Emiro; Ramírez-Velarde, Raúl; Cama Pinto, DoraEditorial
MDPI
Materia
Agriculture Cassava crops Machine learning
Fecha
2023-10-25Referencia bibliográfica
Barrios-Ulloa, A.; Cama-Pinto, A.; De-la-Hoz-Franco, E.; Ramírez-Velarde, R.; Cama-Pinto, D. Modeling of Path Loss for Radio Wave Propagation in Wireless Sensor Networks in Cassava Crops Using Machine Learning. Agriculture 2023, 13, 2046. https://doi.org/10.3390/agriculture13112046
Resumen
Modeling radio signal propagation remains one of the most critical tasks in the planning of
wireless communication systems, including wireless sensor networks (WSN). Despite the existence of
a considerable number of propagation models, the studies aimed at characterizing the attenuation
in the wireless channel are still numerous and relevant. These studies are used in the design and
planning of wireless networks deployed in various environments, including those with abundant
vegetation. This paper analyzes the performance of three vegetation propagation models, ITU-R,
FITU-R, and COST-235, and compares them with path loss measurements conducted in a cassava field
in Sincelejo, Colombia. Additionally, we applied four machine learning techniques: linear regression
(LR), k-nearest neighbors (K-NN), support vector machine (SVM), and random forest (RF), aiming to
enhance prediction accuracy levels. The results show that vegetation models based on traditional
approaches are not able to adequately characterize attenuation, while models obtained by machine
learning using RF, K-NN, and SVM can predict path loss in cassava with RMSE and MAE values
below 5 dB.