A low-cost Smart Farming prototype with Internet of Things (IoT) technologies and Edge Computing devices | IEEE Conference Publication | IEEE Xplore

A low-cost Smart Farming prototype with Internet of Things (IoT) technologies and Edge Computing devices


Abstract:

Issues such as the increase food demand, the decrease of arable land and scarcity of water resources push for efficient and effective agriculture operations. In such dire...Show More

Abstract:

Issues such as the increase food demand, the decrease of arable land and scarcity of water resources push for efficient and effective agriculture operations. In such directions, the synergy of Internet of Things (IoT) technologies and Edge Computing devices allow the development of low-cost Smart Farming systems aimed to support the farmer in the real-time monitoring, management and control of agriculture field. To these aims, the paper presents a Smart Farm prototype developed by exploiting exclusively commercial edge devices (like Arduino and Raspberry) as well as open source IoT protocols and tools (such as Node-RED and MQTT), under the guidelines provided by the ACOSO-METH development methodology.
Date of Conference: 25-28 October 2021
Date Added to IEEE Xplore: 15 March 2022
ISBN Information:
Conference Location: AB, Canada

Funding Agency:

References is not available for this document.

I. Introduction

Smart Farming consists in the application of the IoT technologies and edge devices (like sensors, micro-computers and drones) to agriculture [1]. By accessing real-time data about plants and soils conditions, weather, climate, resource usage, etc., farmers make informed decisions based on concrete data rather than their intuition, being hence able to effectively and systematically tackle those problems inherent in the production of food, long-standing and exacerbated by global warming. In fact, the synergy of IoT, Edge Computing and other technologies (i.e., Cloud Computing, AI, Big Data) [2]–[4], allows (i) maximizing the yields of agricultural fields and minimizing the costs related to their management, guaranteeing constant product quality and minimizing water consumption and environmental footprint of the individual company as well as of the entire supply chain, and at the same time (ii) guaranteeing consumers a safe and quality product, with less pesticides and traceable in the various stages of processing. Smart Farming therefore represents a business opportunity with great potential, capable of creating value in a sustainable way for the entire agricultural supply chain, which is why it has gained increasing popularity in recent years [5].

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References

References is not available for this document.