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    Evaluation of Machine Learning Approaches for Precision Farming in Smart Agriculture System: A Comprehensive Review


    Mohyuddin, Ghulam, Khan, Muhammad Adnan, Haseeb, Abdul, Mahpara, Shahzadi, Waseem, Muhammad and Saleh, Ahmed Mohammed (2024) Evaluation of Machine Learning Approaches for Precision Farming in Smart Agriculture System: A Comprehensive Review. IEEE Access, 12. pp. 60155-60184. ISSN 2169-3536

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    Abstract

    In the era of digital data proliferation, agriculture stands on the cusp of a transformative revolution driven by Machine Learning (ML). This study delves into the intricate interplay between Information and Communications Technology (ICT) and conventional agriculture, emphasizing the role of ML in reshaping farming practices. With the ongoing data tsunami impacting data-driven businesses, the fusion of smart farming and precision agriculture emerges as a beacon of innovation. ML algorithms, analyzing historical and real-time environmental data, soil conditioning, predicts suitable crop for maximum yields, detect diseases, and optimize irrigation in smart farming, facilitating informed decision-making. Precision agriculture benefits from autonomous vehicles and drones, driven by ML, ensuring precision in planting, harvesting, and crop monitoring. Resource efficiency increases as ML optimizes energy consumption, manages fertilizer application, and promotes climate-resilient practices. This comprehensive assessment underscores ML’s pivotal role in maximizing productivity, minimizing environmental impact, and navigating the complexities of modern agriculture.
    Item Type: Article
    Keywords: Farming; Smart agriculture; Intelligent sensors; Productivity; Europe; Monitoring; Precision agriculture; Machine learning; Autonomous aerial vehicles; Artificial intelligence;
    Academic Unit: Faculty of Social Sciences > School of Business
    Item ID: 19906
    Identification Number: 10.1109/ACCESS.2024.3390581
    Depositing User: Muhammed Waseem
    Date Deposited: 27 May 2025 13:56
    Journal or Publication Title: IEEE Access
    Publisher: IEEE
    Refereed: Yes
    Related URLs:
    URI: https://mural.maynoothuniversity.ie/id/eprint/19906
    Use Licence: This item is available under a Creative Commons Attribution Non Commercial Share Alike Licence (CC BY-NC-SA). Details of this licence are available here

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