Affiliation:
1. Department of Innovation Engineering, University of Salento, via per Monteroni, 73100 Lecce, Italy
2. Asepa Energy S.R.L., Via degli Ulivi s.sn zona P.I.P., 74020 Montemesola, TA, Italy
Abstract
This article illustrates the development of SolarFertigation (SF), an IoT (Internet of Things) solution for precision agriculture. Contrary to similar systems on the market, SolarFertigation can monitor and optimize fertigation autonomously, based on the analysis of data collected through the cloud. The system is made up of two main components: the central unit, which enables the precise deployment and distribution of water and fertilizers in different areas of the agricultural field, and the sensor node, which oversees collecting environmental and soil data. This article delves into the evolution of the system, focusing on structural and architectural changes to develop an infrastructure suitable for implementing a predictive model based on artificial intelligence and big data. Aspects concerning both the sensor node, such as energy management, accuracy of solar radiation readings, and qualitative soil moisture measurements, as well as implementations to the hydraulic system and the control and monitoring system of the central unit, are explored. This article provides an overview of the results obtained from solar radiation and soil moisture measurements. In addition, the results of an experimental campaign, in which 300 salad plants were grown using the SolarFertigation system in a photovoltaic field, are presented. This study demonstrated the effectiveness and applicability of the system under real-world conditions and highlighted its potential in optimizing resources and increasing agricultural productivity, especially in agrivoltaic settings.
Reference37 articles.
1. Kiełbasa, P., Juliszewski, T., and Kurpaska, S. (2023). Special Issue on the Engineering of Smart Agriculture. Appl. Sci., 13.
2. A decision support system for agricultural machines and equipment selection: A case study on olive harvester machines;Hafezalkotob;Comp. Electron. Agric.,2018
3. Using cloud IOT for disease prevention in precision agriculture;Foughali;Proc. Comp. Sci.,2018
4. Analysis of Big Data technologies for use in agro-environmental science;Lokers;J. Environ. Modell. Softw.,2016
5. Review of IoT Applications in Agro-industrial and Environmental Fields;Portocarrero;Comput. Electr. Agric.,2017