Scientific journal paper Q1
Sustainable irrigation system for farming supported by machine learning and real-time sensor data
André Glória (Glória, A.); João Cardoso (Cardoso, J.); Pedro Sebastião (Sebastião, P.);
Journal Title
Sensors
Year (definitive publication)
2021
Language
English
Country
Switzerland
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Web of Science®

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Abstract
Presently, saving natural resources is increasingly a concern, and water scarcity is a fact that has been occurring in more areas of the globe. One of the main strategies used to counter this trend is the use of new technologies. On this topic, the Internet of Things has been highlighted, with these solutions being characterized by offering robustness and simplicity, while being low cost. This paper presents the study and development of an automatic irrigation control system for agricultural fields. The developed solution had a wireless sensors and actuators network, a mobile application that offers the user the capability of consulting not only the data collected in real time but also their history and also act in accordance with the data it analyses. To adapt the water management, Machine Learning algorithms were studied to predict the best time of day for water administration. Of the studied algorithms (Decision Trees, Random Forest, Neural Networks, and Support Vectors Machines) the one that obtained the best results was Random Forest, presenting an accuracy of 84.6%. Besides the ML solution, a method was also developed to calculate the amount of water needed to manage the fields under analysis. Through the implementation of the system it was possible to realize that the developed solution is effective and can achieve up to 60% of water savings.
Acknowledgements
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Keywords
Internet of things,Machine learning,Wireless sensor networks,Sustainable farming,Sustainability,Water efficiency
  • Computer and Information Sciences - Natural Sciences
  • Physical Sciences - Natural Sciences
  • Chemical Sciences - Natural Sciences
  • Biological Sciences - Natural Sciences
  • Other Engineering and Technology Sciences - Engineering and Technology
  • Electrical Engineering, Electronic Engineering, Information Engineering - Engineering and Technology
  • Clinical Medicine - Medical and Health Sciences
  • Other Medical Sciences - Medical and Health Sciences
Funding Records
Funding Reference Funding Entity
ISTA-BM-2018 ISCTE - Instituto Universitário de Lisboa