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The Future of Agriculture: IoT, AI and Blockchain Technology for Sustainable Farming explores how cutting-edge technologies like Artificial Intelligence (AI), the Internet of Things (IoT), and Blockchain are transforming farming for a sustainable future. Addressing challenges such as climate change, resource scarcity, and food supply chain inefficiencies, the book highlights how these technologies can improve decision-making, enhance crop yields, and increase transparency in agriculture. With a blend of theory and real-world applications, it covers everything from AI-driven pesticide prediction and disease identification to using Blockchain for efficient food supply chain management. This comprehensive guide is essential for researchers, professionals, and anyone interested in the intersection of technology and sustainable farming.
Key Features:
- Introduction to Digital Twin technology for sustainable farming
- Practical applications of AI and IoT in agriculture
- Blockchain's role in food supply chain management
- Frameworks for precision agriculture and access to government schemes
- Insights on integrating AI, IoT, and Blockchain into solid waste management systems

Readership:
Researchers (Academia, Ph.D. students), industry professionals, and trade experts.

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Seitenzahl: 342

Veröffentlichungsjahr: 2024

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Table of Contents
BENTHAM SCIENCE PUBLISHERS LTD.
End User License Agreement (for non-institutional, personal use)
Usage Rules:
Disclaimer:
Limitation of Liability:
General:
FOREWORD
PREFACE
List of Contributors
Digital Twin for Sustainable Farming: Developing User-Friendly Interfaces for Informed Decision-Making and Increased Profitability
Abstract
INTRODUCTION
LITERATURE STUDY
PROPOSED METHODOLOGY- META-ANALYSIS
Digital Twin Technology in Agriculture
The Critical Benefit of Digital Twin Technology in Agriculture
OBSERVATION
DISCUSSIONS
RESEARCH HIGHLIGHTS AND FUTURE FOCUS
CONCLUSION
ACKNOWLEDGMENT
REFERENCES
Agricultural Resource Management Using Technologies Like AI, IoT, and Blockchain
Abstract
INTRODUCTION
AGRICULTURAL GROWTH IN INDIA
SUSTAINABLE AGRICULTURE METHODS
FRAMEWORK FOR AGRICULTURE DECISION SUPPORT
TECHNOLOGIES USED IN SMART FARMING
Internet of Things (IoT)
Artificial Intelligence (AI)
Blockchain
APPLICATIONS IN AGRICULTURE
ROLE OF ENGINEER IN DEVELOPING SMART FARMING
CONCLUSION
List of Abbreviations
ACKNOWLEDGEMENT
REFERENCES
Prediction for Increasing Yield Production with IoT and AI Using Soil Properties
Abstract
INTRODUCTION
Contributions of the Research Article
LITERATURE REVIEW
Wireless Sensor Network (WSN) /Internet of Things (IoT)
Data Analytics
FRAMEWORK OF THE PROPOSED SYSTEM
Components of Sub-modules
Arduino UNO
Internet of Things (IoT)
Machine Learning (ML)
Servo Motor
LCD Display
Sensors
Flowchart of the Proposed System
IMPLEMENTATION OF THE PROPOSED SYSTEM
RESULTS AND DISCUSSION
CONCLUSION
CONSENT FOR PUBLICATIONS
ACKNOWLEDGEMENT
REFERENCES
Pesticide Prediction and Disease Identification with AIoT
Abstract
INTRODUCTION
LITERATURE SURVEY
Different Techniques for Pest Detection
Image Processing in the Field of Agricultural Research
IOT-BASED SMART PEST DETECTION IN AGRICULTURE
Sensor Deployment
Pest Detection Sensors
Data Collection and Transmission
Data Analytics and Processing
Pest Detection and Alerts
Decision Support System
Integration with other Agricultural Systems
Historical Data Analysis and Prediction
Benefits of Smart Pest Detection in Agriculture using IoT Include
PROBLEM STATEMENT
EXISTING METHOD
Image Acquisition
Pre-processing
Feature extraction
Classification
PROPOSED MODEL
Proposed Methodology
Data Collection
Dataset Augmentation
Classification of Datasets
Deep Learning Model
Structure of ResNet-18
Initial Layers
Basic Blocks (Residual Blocks)
Global Average Pooling and Classifier
Training and Testing the Model
Performance Evaluation
Components Used
Arduino UNO
Relay
RESULTS AND DISCUSSIONS
CONCLUSION
FUTURE WORK
ACKNOWLEDGEMENT
REFERENCES
Weed Control for Better Crop Health Using AIoT
Abstract
INTRODUCTION
LITERATURE SURVEY
SYSTEM FOR AUTONOMOUS ERADICATION OF WEEDS
CONCLUSION
REFERENCES
Origin and History of AI, IoT and Blockchain Technology and their Pertinence in Food Supply Chain Management
Abstract
INTRODUCTION
METHODOLOGY
CHALLENGES OF AI IN SUPPLY CHAIN
Evolution and History of IoT
Applications of IoT
IoT in the Food Supply Chain
The architecture of IoT in the food supply chain
Widely accepted definitions of Blockchain
Looking back at Blockchain
Characteristics of Blockchain
Application of Blockchain in Agriculture
Blockchain for Food Supply Chain Management
Blockchain
Any Food Supply Chain Starts with the following:
Genesis and History of Public Distribution System (PDS)
Evolution of PDS in India
Public Distribution System (PDS) in India
What is the current state of using modern ICT in the food sector?
What is SMART-PDS?
“Food for all Model” of Chhattisgarh
Centralized Online Real-Time Electronic Public Distribution System (CORE-PDS) of Chhattisgarh in India
Phases of Chhattisgarh’s Model
Conclusion and Future Perspectives
ACKNOWLEDGEMENT
REFERENCES
Food Supply Chain Management by Leveraging AI, IoT, and Blockchain Technologies
Abstract
INTRODUCTION
ARTIFICIAL INTELLIGENCE IN FOOD SUPPLY CHAIN MANAGEMENT
Role of AI in Food Supply Chain Management
Predictive Analytics for Demand Forecasting
AI-enabled Quality Control and Inspection
AI-enabled route optimization and logistics
LEVERAGING IOT IN FOOD SUPPLY CHAIN MANAGEMENT
Introduction to IoT in the Context of Food Supply Chain
IoT-enabled Smart Sensors for Real-time Monitoring
IoT-based Temperature and Humidity Control
BLOCKCHAIN TECHNOLOGY IN FOOD SUPPLY CHAIN MANAGEMENT
Role of Blockchain Technology in Food Supply Chain Management
Transparency and Traceability through Blockchain
Blockchain-based smart contracts for secure transactions
INTEGRATION OF AI, IOT, AND BLOCKCHAIN IN FOOD SUPPLY CHAIN MANAGEMENT
CHALLENGES AND RESEARCH DIRECTIONS
CONCLUSION
CONSENT FOR PUBLICATION
CONFLICT OF INTEREST
ACKNOWLEDGEMENTS
REFERENCES
Framework Based on IoT, AI, and Blockchain for Smart Access to Government Agricultural Schemes
Abstract
INTRODUCTION
EXISTING SYSTEMS
TECHNOLOGIES USED
IoT in Precision Agriculture
Detectors of Soil Moisture
Weather Monitoring Sensor
Sensors for Crop Health
GPS Trackers
Drone
Role of AI in Precision Agriculture
Role of Blockchain in Precision Agriculture
PROPOSED MODEL
Drone Monitoring System (DMS)
Soil Health Monitoring System
Crop Health Monitoring System
Health Assessing Model
Blockchains for Smart Access to Government Schemes
Blockchain for DMS (BC_DMS)
BC for Field-wise Sanctioned Schemes (BC_FSS)
Smart Contracts
CONCLUSION
ACKNOWLEDGMENTS
REFERENCES
Transforming Agriculture with IoT for Precision Agriculture and Sustainable Crop Management
Abstract
INTRODUCTION TO IOT IN AGRICULTURE
Definition of IoT
Applications of IoT in Agriculture
Precision agriculture
Agricultural Drones
Automated irrigation
Livestock Monitoring
Crop Monitoring System
Smart Greenhouses
Environmental Monitoring
Remote Sensing
Supply Chain Management
Advantages of IoT-based agriculture systems
IOT SENSORS IN AGRICULTURE
Types of IoT sensors used in agriculture
Soil Moisture Sensors
Crop Sensors
Weather Sensors
Livestock Sensors
Irrigation Sensors
Sensor Technologies for Monitoring Crop Health
Optical Sensors
Spectral Sensors
Multispectral and Hyperspectral Imaging
Thermal Imaging
Drone-based Sensors
Soil Sensors
IOT-BASED DATA COLLECTION AND MANAGEMENT
Overview of Data Collection and Management Systems
Centralized Data Collection and Management Systems
Decentralized Data Collection and Management Systems
Cloud-based Data Management Systems
Edge Computing in IoT-based Agriculture
IOT-BASED PRECISION AGRICULTURE
Definition of Precision Agriculture
Advantages of Precision Agriculture
Real-time Monitoring and Control using IoT in Precision Agriculture
Literature Review of IoT in Precision Agriculture
IOT-BASED SUSTAINABLE CROP MANAGEMENT
Crop Monitoring using IoT
Automated Irrigation Systems using IoT
Pest and Disease Management using IoT
Literature Review of Sustainable Crop Management
CHALLENGES AND FUTURE OF IOT FOR PRECISION AGRICULTURE AND SUSTAINABLE AGRICULTURE
Challenges for Precision Agriculture and Sustainable Agriculture
Technical Challenges in IoT-based Agriculture
Privacy and Security Concerns in IoT-based Agriculture
Future Trends in IoT-based Agriculture
CONCLUSION
CONSENT FOR PUBLICATION
CONFLICT OF INTEREST
ACKNOWLEDGEMENT
REFERENCES
Scientific Integrated Solid Waste Management System to Minimize Adverse Effects on Agriculture
Abstract
INTRODUCTION
RELATED STUDY
PROBLEM STATEMENT
METHODOLOGY
Stages in Remote Sensing
Resolution
Resolutions of Remote Sensing
Criteria for extracting the data
A. Data and Material
IMPLEMENTATION AND RESULTS
Simple Additive Weighting (SAW) Technique
Compromise Programming Technique
TOPSIS Technique
CONCLUSION
FUTURE SCOPE
FUNDING AGENCY
The Future of Agriculture: IoT, AI and Blockchain Technology for Sustainable Farming
Edited by
Kavita Pandey
Department of Computer Science Engineering and Information Technology
Jaypee Institute of Information Technology
Noida, U.P., India
Shikha Jain
Department of Computer Science Engineering and Information Technology
Jaypee Institute of Information Technology
Noida, U.P., India
Dhiraj Pandey
Department of Information Technology
JSS Academy of Technical Education
Noida, U.P., India
&
Omprakash Kaiwartya
Nottingham Trent University
Newcastle, UK

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FOREWORD

In the ever-evolving landscape of agriculture, where the intersection of technology and sustainability has become the driving force of change, "The Future of Agriculture: IoT, AI, and Blockchain Technology for Sustainable Farming" emerges as a beacon of insight and innovation. This book serves as a guiding light as we enter a new era in agriculture, characterized by the urgent need to feed a growing global population while mitigating the environmental impact of food production. Within the pages of this comprehensive volume, readers will embark on a transformative journey through ten meticulously crafted chapters that explore the dynamic synergy between cutting-edge technologies and the timeless art of farming.

The authors of each chapter are experts in their respective fields, and their insight shows the dedication and passion they bring to the task of securing our agricultural future. Their collective vision, presented here, outlines a world where technology and tradition work hand in hand and where sustainability is not just a goal but a way of life.

Each chapter of this book delves into a distinct facet of this remarkable transformation. From the foundations of IoT (Internet of Things) that have revolutionized the way we monitor and manage crops to the incredible potential of AI (Artificial Intelligence) to optimize farming practices and enhance yields, every aspect of modern agriculture is examined very closely and carefully. The inclusion of blockchain technology, a breakthrough in secure and transparent data management, adds a layer of trust and traceability to the agricultural supply chain. In a world where the effects of climate change are felt more acutely each day, the urgency of embracing sustainable farming practices cannot be overstated. This book serves as a call to farmers, policymakers, researchers, and enthusiasts to unite in the mission to reshape agriculture for the betterment of humanity and the planet.

"The Future of Agriculture" is not merely a theoretical exploration; it is a practical roadmap for the farming revival we desperately need. Whether you are a seasoned farmer seeking to modernize your practices, an innovator searching for opportunities in agriculture, or simply a concerned citizen curious about the future of food, this book offers a wealth of knowledge and inspiration.

David J Brown Department of Computer science Nottingham Trent University Nottingham, UK

PREFACE

In an era defined by rapid technological advancements and an urgent need for sustainable practices, the world of agriculture stands on the verge of transformation. "The Future of Agriculture: IoT, AI, and Blockchain Technology for Sustainable Farming" delves into the intersection of cutting-edge technologies and the age-old practice of farming, offering a comprehensive exploration of how IoT, AI, and blockchain are reshaping the agricultural landscape.

Farming has many challenges, like population growth, climate change, resource scarcity, and the imperative to feed a global population while preserving our planet's health. As we navigate these complex issues, technology emerges as a beacon of hope, providing tools that promise to revolutionize agriculture and enable us to cultivate the future sustainably.

This book embarks on a journey through the realms of the Internet of Things (IoT), Artificial Intelligence (AI), and Blockchain, illuminating their profound impacts on agriculture. There are a total of 10 chapters in this book. The chapters of this book not only present the theoretical underpinnings of IoT, AI, and blockchain, but they also provide practical insights into their application on the farm. From precision agriculture and data-driven decision-making enabled by IoT sensors to predictive analytics and crop management through AI algorithms, along with the secure traceability brought by blockchain, we explore the tangible ways in which these technologies are being integrated into the farming lifecycle.

The book shows how humans and technology work in harmonious collaboration. As the authors of this book, we stand at the threshold of an extraordinary era in agriculture. The integration of IoT, AI, and blockchain promises not just incremental improvements but a fundamental reimagining of how we nourish ourselves and our planet. We invite you to embark on this journey with us, to explore the exciting frontier where technology and agriculture converge, and to envision the future of farming—one where innovation and sustainability thrive hand in hand.

Welcome to "The Future of Agriculture: IoT, AI, and Blockchain Technology for Sustainable Farming".

Kavita Pandey Department of Computer Science Engineering and Information Technology Jaypee Institute of Information Technology Noida, U.P., IndiaShikha Jain Department of Computer Science Engineering and Information Technology Jaypee Institute of Information Technology Noida, U.P., IndiaDhiraj Pandey Department of Information Technology J.S.S. Academy of Technical Education Noida, U.P., India &Omprakash Kaiwartya

List of Contributors

Ashok Kumar. S.Department of Electronics and Communication and Engineering, Rajalakshmi Institute of Technology, Chennai, IndiaAshish MahalleDepartment of Computer Science & Engineering, G. H. Raisoni College of Engineering, Nagpur, IndiaAravind H.S.Department of Electronics and Communication, J.S.S. Academy of Technical Education, Bengaluru, IndiaAjay Kumar DharmireddyDepartment of Electronics and Communication Engineering, Sir C.R.R. College of Engineering, Eluru, Andhra Pradesh, IndiaAbhinab BorahDr. Rajendra Prasad Central Agricultural University, Pusa(Bihar), IndiaChandramohan DhasarathanDepartment of Electronics and Communication and Engineering, Thapar Institute of Engineering and Technology, Patiala, Punjab, IndiaDiksha SrivastavaDr. Rajendra Prasad Central Agricultural University, Pusa(Bihar), IndiaD. VinodhaSchool of Engineering and Technology, CHRIST (Deemed to be University), Kengeri, Bangalore, IndiaDhiraj PandeyJ.S.S. Academy of Technical Education, Noida, IndiaE.A. Mary AnitaSchool of Engineering and Technology, CHRIST (Deemed to be University), Kengeri, Bangalore, IndiaJ. JenefaSchool of Engineering and Technology, CHRIST (Deemed to be University), Kengeri, Bangalore, IndiaKalyan Kumar BasavaiahDepartments of Electrical Power Engineering, University of Technology and Applied Science, Muscat, OmanKambham Jacob Silva LorraineDepartment of Electronics and Communication Engineering, Sir C.R.R. College of Engineering, Eluru, Andhra Pradesh, IndiaKotha LavanyaDepartment of Electronics and Communication Engineering, Sir C.R.R. College of Engineering, Eluru, Andhra Pradesh, IndiaK. RadhikaChaitanya Bharathi Institute of Technology, Hyderabad, IndiaKiranmaie PuvvulaChaitanya Bharathi Institute of Technology, Hyderabad, IndiaLeezamoni DasDr. Rajendra Prasad Central Agricultural University, Pusa(Bihar), IndiaMadhusudhan K. N.B.M.S. College of Engineering, Bull Temple Rd, Basavanagudi, Bengaluru, Karnataka-560019, IndiaM.J. BuvanaDepartment of Computer Science and Engineering, Sri Venkateswara College of Engineering, Sriperumbudur, IndiaMaria LapinaInstitute of Digital Development, North-Caucasus Federal University, Stavropol, RussiaMegha JainJ.S.S. Academy of Technical Education, Noida, IndiaNeha VenkateshVeterinary Doctor, Government of Karnataka, Shivamogga, IndiaPashupati NathCollege of Smart Agriculture, COER University, Uttarakhand, IndiaRamachandra Reddy. B.Department of Computer Science and Engineering, National Institute of Technology, Jamshedpur, IndiaRavi Kumar MaddumalaDepartment of Electronics and Communication Engineering, Sir C.R.R. College of Engineering, Eluru, Andhra Pradesh, IndiaSambasivam GnanasekaranSchool of Computing and Data Science, Xiamen University, Xiamen, MalaysiaSnehlata DongreDepartment of Computer Science & Engineering, G. H. Raisoni College of Engineering, Nagpur, IndiaSavitha Ambliihalli ChandrappaDepartment of Electronics and Communication, J.S.S. Academy of Technical Education, Bengaluru, IndiaSanjana T.B.M.S. College of Engineering, Bull Temple Rd, Basavanagudi, Bengaluru, Karnataka-560019, IndiaSudhanand Prasad LalDr. Rajendra Prasad Central Agricultural University, Pusa(Bihar), IndiaSakshi PundirDr. Rajendra Prasad Central Agricultural University, Pusa(Bihar), IndiaSheena MohammedChaitanya Bharathi Institute of Technology, Hyderabad, IndiaSatya Kiranmai TadepalliChaitanya Bharathi Institute of Technology, Hyderabad, IndiaS. RajalakshmiDepartment of Computer Science and Engineering, Sri Venkateswara College of Engineering, Sriperumbudur, IndiaSuyash BhardwajDepartment of Computer Science Engineering, Gurukula Kangri Deemed to be University, Uttarakhand, IndiaSasirekha VenkatesanDepartment of Management Studies, Sri Sairam Engineering College, Chennai, IndiaSwati RawatMMICT&BM, Maharishi Markandeshwar Deemed to be University, Haryana, India

Digital Twin for Sustainable Farming: Developing User-Friendly Interfaces for Informed Decision-Making and Increased Profitability

Chandramohan Dhasarathan1,*,Ramachandra Reddy. B.2,Ashok Kumar. S.3,Sambasivam Gnanasekaran4
1 Department of Electronics and Communication and Engineering, Thapar Institute of Engineering and Technology, Patiala, Punjab, India
2 Department of Computer Science and Engineering, National Institute of Technology, Jamshedpur, India
3 Department of Electronics and Communication and Engineering, Rajalakshmi Institute of Technology, Chennai, India
4 School of Computing and Data Science, Xiamen University, Xiamen, Malaysia

Abstract

This chapter endeavors to develop a robust digital model for farm optimization with the primary objectives of enhancing resource utilization, minimizing waste, and increasing productivity while mitigating environmental impact. The proposed digital twin will leverage data from diverse sources, including sensors, weather data, soil moisture levels, and crop yields. Methodologically, the integration and processing of this varied data will be achieved through advanced algorithms, ensuring a comprehensive and accurate representation of the farm. The simulation aspect of the digital twin will explore different scenarios, allowing for a nuanced understanding of the impact of interventions on farm productivity and sustainability. Specific scenarios, such as testing the effects of varied irrigation strategies on crop yields or optimizing fertilizer inputs, will be explored. Methodological considerations will be discussed, addressing challenges related to data integration, format disparities, and accuracy variations across different data sources. Crucially, collaboration with farmers and stakeholders will be a cornerstone of this research. Their insights and real-world experiences will be actively incorporated throughout the development process, ensuring that the digital twin is tailored to the practical needs and challenges faced in agricultural operations. In tandem with this, the development of user-friendly interfaces will be emphasized, providing farmers and stakeholders with accessible tools for interacting with the digital twin. Specific functionalities, tailored to inform periodic decisions and processes, will be integrated into the interfaces, fostering usability and

adoption. The chapter will examine the assessment of environmental impact. A detailed examination of the criteria and indicators used to measure and minimize the farm's environmental footprint will be discussed. By addressing these methodological considerations comprehensively, this research aims to not only optimize resource use and reduce waste but also contribute to the transformative advancement of sustainable and efficient farming practices.

Keywords: Agro-industry, Bio-diversity, Climate change, Digital twins, Environmental impact, Informed decision, Resource optimization, Smart forming, Soil regeneration, Sustainability.
*Corresponding author Chandramohan Dhasarathan: Department of Electronics and Communication and Engineering, Thapar Institute of Engineering and Technology, Patiala, Punjab, India; E-mail: [email protected]

INTRODUCTION

The 21st-century agricultural landscape grapples with formidable challenges, as the imperative to sustain a burgeoning global population coincides with the pressing need to mitigate environmental impact. Tackling these issues necessitates a transformative shift toward sustainable farming practices. A beacon of promise in this endeavor is digital twin technology, presenting an innovative avenue for optimizing resource utilization and curbing environmental repercussions in farming operations.

This chapter introduces a digital twin prototype tailored for sustainable farming, harnessing data from diverse sources, including sensors, to construct a comprehensive model of a farm. Encompassing critical metrics such as crop yields, soil moisture levels, and weather data, this model serves as a dynamic platform for simulating various scenarios and assessing the impact of interventions on both productivity and sustainability. The chapter delves into the development of user-friendly interfaces, empowering farmers to engage with the digital twin and make informed decisions regarding their operations in real time.

The interfaces provide instantaneous information on crucial factors like crop yields and soil moisture levels, enabling farmers to fine-tune resource allocation and minimize wastage. The potential advantages of this approach are substantial, as it not only bolsters profitability but also diminishes the environmental footprint of farming practices. Against the backdrop of challenges posed by climate change, depleting natural resources, and the imperative for heightened productivity, sustainable farming has emerged as a pivotal paradigm. Within this context, digital twins stand out as a transformative technological innovation, serving as virtual replicas that monitor, simulate, and analyze physical objects and processes in real time.

Moreover, how digital twins are harnessed in sustainable farming to create an integrated and intelligent ecosystem is explored. By facilitating precision agriculture, digital twins empower farmers to monitor crop health, growth, and nutrient requirements with unparalleled accuracy. The integration of data from sensors, satellites, and weather forecasts allows farmers to make data-driven decisions regarding irrigation, fertilization, and pest management. This targeted approach not only minimizes the use of water and chemicals but also augments crop yield and quality, signaling a promising trajectory for the future of agriculture.

Efficient resource management is integral to the fabric of sustainable farming, and digital twins emerge as a transformative tool in this endeavor. These virtual models empower farmers to intricately map out their agricultural landscape, encompassing vital elements such as soil composition, water sources, and machinery. Through a meticulous analysis of these digital replicas, farmers gain the ability to pinpoint inefficiencies, curtail wastage, and optimize the utilization of resources like water, energy, and fertilizers. The resultant effect is not only cost savings but also a tangible reduction in the environmental footprint.

The escalating challenges posed by climate change, characterized by more frequent extreme weather events impacting crop production, have intensified the urgency for adaptive agricultural strategies. Digital twins, with their predictive capabilities, furnish farmers with the means to simulate diverse climate scenarios. This simulation-driven approach enables the development of resilient farming strategies, helping farmers minimize losses and secure food production in the face of a changing climate.

Sustainable farming, extending its scope beyond crops to encompass livestock management, finds an ally in digital twins. These virtual representations of livestock operations allow farmers to track crucial parameters such as animal health, behavior, and productivity. This data-driven approach not only enhances animal welfare but also optimizes feed efficiency, contributing to a reduction in greenhouse gas emissions from livestock farming.

Digital twins serve as a catalyst for knowledge sharing and collaboration among the agricultural community. By fostering the exchange of data, best practices, and success stories, farmers can collectively elevate their understanding and contribute to the broader scale of sustainable agriculture. The convergence of sustainable farming and digital twin technology heralds an unprecedented opportunity to revolutionize agriculture, making it more efficient, productive, and environmentally friendly. Through the amalgamation of data-driven decision-making and real-time monitoring, sustainable farming with digital twins emerges as a promising avenue to address the contemporary challenges of agriculture, ensuring a more sustainable and prosperous future for generations to come. Embracing this technology and advocating for its widespread adoption hold the potential to usher in a transformative era for sustainable farming, aligning with the overarching global sustainability agenda.

Fig. (1)) Smart farming system that supports sustainability development.

As discussed in Fig. (1), evaluating existing farming practices and pinpointing areas for improvement involves a multifaceted approach, encompassing surveys, interactions with practicing farmers, and on-the-ground field observations. Once the current state of farming practices is comprehensively assessed, the subsequent step involves identifying key challenges that impact both productivity and sustainability. These challenges may span soil health, water management, pest control, or other factors. The ensuing action plan, rooted in a thorough assessment, should delineate specific interventions tailored to address these challenges and enhance both productivity and sustainability.

The subsequent phase necessitates the implementation of the identified interventions, which could range from introducing novel farming practices and leveraging new technologies to adopting innovative management strategies. Post-implementation, continuous monitoring and assessment become imperative to gauge the impact on farming productivity and sustainability. This involves data collection, rigorous analysis, and feedback from farmers. Based on the outcomes of this monitoring and evaluation, adjustments can be made to the interventions, further refining them for improved productivity and sustainability.

This systematic methodology serves as a robust support system for farmers, enabling them to elevate productivity and sustainability while concurrently minimizing their environmental footprint, contributing to a more sustainable future. In the realm of sustainable farming, the introduction of digital twin technology emerges as a transformative force with the potential to redefine agricultural practices.

As the global imperative for sustainable farming intensifies, particularly in the face of the challenge of feeding a growing population while preserving the environment, the advent of digital twin technology opens new horizons for the agricultural industry. This chapter delves into the intersection of sustainable farming and digital twins, illuminating the innovative potential of this approach to revolutionize agriculture and address the impacts of climate change.

Digital twins, as virtual representations of physical entities, systems, or processes, furnish real-time insights and analytics. In the context of sustainable farming, they recreate entire agricultural ecosystems, capturing the intricacies of crops, soil, weather, and farm equipment. By mirroring real-world processes virtually, farmers gain a comprehensive understanding of their farm's dynamics, empowering them to make informed decisions that optimize resource usage and minimize waste.

The key advantage of incorporating digital twins into farming lies in precision agriculture. This approach allows for meticulous management, tailoring interventions with a high degree of precision, thereby enhancing efficiency, resource-friendliness, and environmental consciousness in the agricultural industry. The transformative potential of digital twin technology in sustainable farming lies not only in optimizing resource utilization but also in fostering a more resilient and ecologically aware agricultural landscape.

Precision agriculture, achieved through the meticulous monitoring of individual plants or specific field areas, empowers farmers to customize irrigation, fertilization, and pesticide application to match the precise needs of each crop. This targeted approach optimizes resource utilization, resulting in reduced water and chemical usage while concurrently enhancing crop yields. The outcome is a paradigm of sustainable farming practices that align with both economic viability and environmental responsibility. In the face of climate change-induced uncertainties, traditional farming practices prove unreliable. Digital twins, offering a dynamic simulation platform for various climate scenarios, allow farmers to assess the impact on crops and soil health. Armed with this knowledge, farmers can develop adaptive strategies to confront adverse weather events, fortifying resilience against climate-related challenges.

The menace of soil degradation poses a significant threat to agricultural productivity and environmental stability. Embracing a data-driven approach facilitates precise soil management practices, fostering soil regeneration and diminishing the reliance on chemical fertilizers. The restoration of soil health becomes an achievable reality through such methods. As a cornerstone of sustainable agriculture, the preservation of biodiversity and natural ecosystems is paramount. Farmers can harness digital twins to create models accounting for wildlife habitats and ecosystems within and around the farm. By integrating this data into decision-making processes, farmers can adopt practices that promote biodiversity conservation, such as crop rotation, integrated pest management, and the creation of buffer zones to protect sensitive areas.

Digital twins generate copious amounts of data from diverse sensors and IoT devices across the farm. This wealth of information is leveraged through advanced analytics and AI algorithms to offer valuable insights into farm operations. Farmers can use this data to optimize planting schedules, predict disease outbreaks, and streamline logistics, ultimately increasing farm efficiency and reducing environmental impact. The crux of sustainable farming lies in the preservation of food security and the environment. Digital twin technology emerges as a transformative force in the agricultural sector, providing a comprehensive approach to tackle the challenges of modern farming. By embracing digital twins, farmers can envision a future where productivity, profitability, and environmental stewardship harmonize, paving the way for a sustainable and resilient agricultural ecosystem.

The chapter organization is structured in a logical sequence to systematically address key aspects related to Digital Twin Technology in Agriculture. The introductory section sets the stage by providing an overview of the subject matter. Following this, the literature study delves into existing knowledge and research in the field, offering a comprehensive background. The proposed methodology introduces the approach taken, specifically highlighting the use of meta-analysis as a methodological tool.

Diving into the core of the research, the next sections zoom in on digital twin technology in agriculture, exploring its critical benefits. The dual sections, “Digital Twin Technology in Agriculture” and “The Critical Benefit of Digital Twin Technology in Agriculture”, collectively contribute to an in-depth examination of the technology's application and advantages in agricultural contexts.

Moving forward, the chapter transitions to the observation and discussion phase, where empirical findings and insights are presented and analyzed. The subsequent section, “Discussions”, provides an extended platform for interpreting and contextualizing the observations, fostering a deeper understanding of the implications.

The chapter then shifts towards summarizing its key findings and providing a glimpse into future research directions in the “Research Highlights and Future Focus” section. Finally, the conclusion wraps up the chapter, offering a concise synthesis of the research, its contributions, and implications for the broader field of digital twin technology in agriculture. This systematic organization ensures a coherent and comprehensive exploration of the subject matter, facilitating clarity and understanding for the readers.

LITERATURE STUDY

The digital twin-based un-ordered collaborative strategy approach is a promising multifaceted engineering product advance solution. This approach involves creating a virtual replica of the physical product, which can simulate and optimize its performance across multiple disciplines. By leveraging the power of digital twins, engineers can collaborate more effectively and efficiently, reducing the time and cost associated with traditional design processes. This approach also enables engineers to categorize and address prospective issues early in the planning process, reducing the risk of inflated errors and delays [1]. The digital twin-based multidisciplinary collaborative design approach has the potential to revolutionize complex engineering product development, enabling faster, more efficient, and more sustainable design processes.

The concept of intelligent agriculture and digital twins in the context of sustainable agriculture is also discussed. Smart agriculture uses IoT sensors, data analytics, and automation to optimize agricultural processes. At the same time, digital twins are virtual replicas of physical objects that can be used for simulation and prediction. The chapter examines various applications of smart agriculture and digital twins, such as precision agriculture, crop modeling, and supply chain management [2]. It also discusses the potential benefits of these technologies, including increased efficiency, reduced environmental impact, and improved yields. However, the chapter also highlights several challenges that need to be addressed for intelligent agriculture and digital twins to reach their full potential. These challenges include data privacy and security concerns, interoperability issues, and the need for specialized skills and knowledge. The chapter suggests that smart agriculture and digital twins have the potential to play a significant role in sustainable agriculture.

The development of a digital twin for intelligent farming, specifically an irrigation management system for water-saving. The system uses sensors to collect soil moisture, temperature, and humidity data. This data is transmitted to a cloud-based platform that uses algorithms to analyze it and generate recommendations for irrigation scheduling. The digital twin mimics the physical environment and allows farmers to experiment with different irrigation strategies without making changes in the field. The system is designed to be flexible and can be customized to meet the specific needs of various crops and farming conditions. The chapter emphasizes the importance of water management in agriculture, given the increasing water scarcity and the need to feed a growing population. The irrigation management system aims to reduce water use and improve crop yields while also minimizing the environmental impact of farming. The authors conclude that the digital twin for intelligent farming is a promising technology that can revolutionize agriculture and address some of the industry's significant challenges [3]. They suggest that further research is needed to optimize the system and ensure its scalability and cost-effectiveness.

The chapter discusses the concept of digital twins in intelligent farming and how it can be applied in agricultural systems. Digital twins are virtual representations of physical objects, processes, or systems, and they have become increasingly popular in the agriculture industry. In smart farming, digital twins can simulate different scenarios and predict outcomes, such as crop growth and yield. The chapter explains how digital twins can optimize crop production by analyzing data such as soil moisture levels, weather conditions, and pest infestations. This information can then be used to make decisions about crop management, such as when to irrigate or fertilize the crops. The chapter also highlights the potential for digital twins to improve animal husbandry by monitoring animal behavior and health. Digital twins can also optimize feed and water consumption and observe the animals' health and well-being [4]. The chapter emphasizes the potential benefits of digital twins in intelligent farming, including increased efficiency, improved sustainability, and better decision-making. However, it also acknowledges the challenges of implementing digital twins in agriculture, such as data privacy concerns and the need for reliable and accurate data. The authors highlight the need for an integrated system to monitor and control (Controlled Environment Agriculture) CEA, plant growth, and resource consumption. They propose a digital twin system that includes various sensors, actuators, and models to simulate the behavior of the CEA environment and provide real-time monitoring and control [5]. The design incorporates machine learning techniques to optimize the use of resources, reduce waste, and increase yield.

The authors conclude that the digital twin system can improve the efficiency and sustainability of CEA services, leading to increased food production and reduced environmental impact. The chapter discourses the use of digital twins in agriculture, a technology that produces a virtual model of a physical object or system. Farmers can feign various scenarios by implementing digital twins and make informed decisions to optimize their operations. Digital twins can also monitor crop growth, soil moisture levels, and other environmental factors in real time. The chapter emphasizes the potential benefits of digital twins in agriculture, including increased efficiency, improved crop yields, and reduced resource waste. Additionally, the paper discusses some challenges that need to be addressed, such as data privacy concerns and the need for reliable and accurate data [6]. Digital twins have the potential to revolutionize the agriculture industry and contribute to sustainable and efficient food production. The chapter proposes a digital twin and simulation approach for farmers to enhance sustainability in the agri-food supply chain. The authors highlight the importance of sustainable agriculture practices and how digital technology can assist farmers in achieving this goal. They explain how the proposed approach can simulate different scenarios to help farmers make informed decisions that balance economic, social, and environmental factors. The authors also provide a case study that demonstrates the effectiveness of the proposed approach in enhancing sustainability in the production of a tomato crop [7]. The chapter emphasizes the potential of digital technology to support sustainable agriculture practices and promote responsible food production.

Virtual Reality (VR) technology is used to create digital twins of greenhouses to enhance human interaction with the plants and environment. The digital twins can simulate real-time plant growth and environmental conditions, allowing growers to monitor and adjust temperature, humidity, and light. This technology can also improve grower training and reduce greenhouse operations' environmental impact [8]. The chapter highlights the potential benefits and challenges of using VR-based digital twins in the greenhouse industry. The chapter discusses the concept of digital twins, virtual replicas of real-world objects or systems. Specifically, it focuses on the potential applications of digital twins for monitoring land and plant conditions using multiple sensors. The authors propose a framework for developing digital twins that can integrate data from different sensors and provide a comprehensive view of the monitored area or plant. They also discuss the challenges and opportunities associated with implementing digital twins for land and plant monitoring, including the need for accurate and reliable data, robust algorithms, and efficient computational methods [9]. The chapter highlights the potential benefits of digital twins for improving agricultural practices and enhancing our understanding of land and plant ecosystems.

The chapter introduces the concept of digital twins for post-harvest handling, which involves creating a virtual model of a physical product or system. Digital twins can track and trace agricultural products throughout the supply chain, allowing for greater transparency and accountability. By using sensors and other technologies to collect data on the physical product, a digital twin can provide real-time information on its location, condition, and other essential factors [10]. The authors argue that digital twins could revolutionize post-harvest handling by enabling more efficient and sustainable practices, reducing waste, and improving food safety. The chapter discusses using intelligent sensors to improve crop yield, reduce waste, and optimize resource usage. It explains how smart sensors work and describes various types of sensors used in agriculture, such as soil moisture, temperature, and humidity sensors.

The report also discusses the benefits of using intelligent sensors, such as more accurate data collection, real-time monitoring, and increased efficiency in resource management. The chapter also provides details of how intelligent sensors are used in agriculture, such as monitoring crop growth, predicting weather patterns, and detecting disease outbreaks [11]. It concludes by highlighting the potential of intelligent sensors in revolutionizing agriculture and the importance of continued research and development in this area to address challenges such as cost, scalability, and data management. The chapter proposes a conceptual framework for a decentralized digital farming system that ensures resilient and safe data management in the agriculture industry. The framework aims to address data privacy and security concerns while leveraging emerging technologies such as blockchain, the Internet of Things (IoT), and artificial intelligence (AI). The framework consists of five layers, including the data acquisition layer, data processing layer, data storage layer, data management layer, and user interface layer. Each layer has a specific function and interacts with the other layers to ensure efficient and effective data management [12]. The proposed framework offers benefits such as increased transparency, improved data accuracy, and enhanced efficiency in the farming industry.

The chapter discusses using machine learning algorithms to optimize soil sensors' placement and flight path mapping in agricultural fields. The authors propose a novel approach that utilizes a combination of machine learning algorithms, geostatistics, and optimization techniques to determine the best locations for soil sensors and the most efficient flight paths for drones to cover large areas of land [13]. The study results show that this approach can significantly reduce the number of sensors needed while improving the accuracy of soil measurements, ultimately leading to more efficient and sustainable farming practices. The chapter discusses how the Internet of Things (IoT) can be used to monitor and promote sustainability in agriculture. The authors provide a practical approach for implementing IoT-based sustainable agriculture, which involves identifying sustainability goals, selecting appropriate IoT devices, collecting and analyzing data, and using the insights gained to improve. The chapter highlights the benefits of this approach, such as reduced environmental impact, increased efficiency, and improved yields [14]. The authors argue that IoT has great potential to help farmers achieve sustainable agriculture and contribute to a more environmentally responsible food system.