Abstract

The current agriculture systems compete to take advantage of industry advanced technologies, including the internet of things (IoT), cloud/fog/edge computing, artificial intelligence, and agricultural robots to monitor, track, analyze and process various functions and services in real-time. Additionally, these technologies can make the agricultural processes smarter and more cost-efficient by using automated systems and eliminating any human interventions, hence enhancing agricultural production to meet future expectations. Although the current agriculture systems that adopt the traditional cloud-based architecture have provided powerful computing infrastructure to distributed IoT sensors. However, the cost of energy consumption associated with transferring heterogeneous data over the multiple network tiers to process, analyze and store the sensor's information in the cloud has created a huge load on information and communication infrastructure. Besides, the energy consumed by cloud data centers has an environmental impact associated with using non-clean fuels, which usually release carbon emissions (CO <sub xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">2</sub> ) to produce electricity. Thus, to tackle these issues, we propose a new integrated edge-fog-cloud architectural paradigm that promises to enhance the energy-efficient of smart agriculture systems and corresponding carbon emissions. This architecture allows data collection from several sensors to process and analyze the agriculture data that require real-time operation (e.g., weather temperature, soil moisture, soil acidity, irrigation, etc.) in several layers (edge, fog, and cloud). Thus, the real-time processing could be held by the edge and fog layers to reduce the load on the cloud layer, which will help to enhance the overall energy consumption and process the agriculture applications/services efficiently. Mathematical modeling is conducted using mixed-integer linear programming (MILP) for a smart agriculture environment, where the proposed architecture is implemented, and results are analyzed and compared to the traditional implementation. According to the results of thousands of agriculture sensors, the proposed architecture outperforms the traditional cloud-based architecture in terms of reducing the overall energy consumption by 36% and the carbon emissions by 43%. In addition to these achievements, the results show that our proposed architecture can reduce network traffic by up to 86%, which can reduce network congestion. Finally, we develop a heuristic algorithm to validate and mimic the presented approach, and it shows comparable results to the MILP model.

Highlights

  • The Internet of Things (IoT) is one of the emerging technologies that promise to transform the way on how people work and live

  • The concept of an edge-fog-cloud architecture is introduced in the smart a griculture system, which solved existing real-time processing issues in terms of reducing energy consumption, CO2 emission, and network traffic, compared to the tra ditional cloud-based a rchitecture

  • The proposed architecture was significantly reduced the computational load and the amount of transmitteddata to and from the cloud due to the use of edge and fog layers, the cloud layer is inevitably used to process the heavy and complex data/task requested by IoT agriculture devices/sensors

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Summary

Introduction

The Internet of Things (IoT) is one of the emerging technologies that promise to transform the way on how people work and live. The term IoT refers to a network of physical objects “things” that contain embedded systems with connectivity and computing power to exchange data with other devices and systems over the Internet. By 2025, the number of IoT devices connected to the Internet is projected to be100 billion, with an economic impact ofmore than $11 trillion [1]. The recent development of IoT devices presents a new dimension in the agriculturefield, wheretheIoThas become an ideal choice for smart agriculturedue to its highly scalable a nd ubiquitous architecture. The IoT-based smart agriculture value is estimated to reach $18.45 billion in 2022, and 75 million IoT devices areused for theagricultural sector in 2020 [2]. Smart farms are projected to have 12 million IoT points by 2023 [3]

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