Performance evaluation of edge‑computing platforms for the prediction of low temperatures in agriculture using deep learning
Author/s
Guillén, Miguel Angel; Llanes, Antonio; Imbernón Tudela, Baldomero; Martínez España, Raquel; Bueno Crespo, Andrés; [et al.]Date
2020Discipline/s
Ingeniería, Industria y ConstrucciónSubject/s
Edge computingLSTM
Deep learning
Precision Agriculture
Abstract
The Internet of Things (IoT) is driving the digital revolution. AlSome palliative measures aremost all economic sectors are becoming “Smart” thanks to the analysis
of data generated by IoT. This analysis is carried out by advance artificial intelligence (AI) techniques that provide insights never before imagined. The combination of both IoT and AI is giving rise to an emerging trend, called AIoT, which is opening up new paths to bring digitization into the new era. However, there is still a big gap between AI and IoT, which is basically in the computational power required by the former and the lack of computational resources offered by the latter. This is particularly true in rural IoT environments where the lack of connectivity (or low-bandwidth connections) and power supply forces the search for “efficient” alternatives to provide computational resources to IoT infrastructures without increasing power consumption. In this paper, we explore edge computing as a solution for bridging t...





