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An Organized Review of Current AI Trends for Smart Farming to Boost Crop Yield and Its Advantages

Received: 11 July 2022    Accepted: 23 July 2022    Published: 24 August 2022
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Abstract

At the moment, the advancement in technology is being extensively used for development around the world nowadays. One of the advancements in technology is the use of artificial intelligence (AI) for smart farming for the production of crops and animals in agriculture. Special powers can be programmed into artificial intelligence (AI) systems as needed. Working with agricultural systems, artificial intelligence (AI) helps to raise the standard of agriculture in the world nowadays. The use of this new technology in fundamental industries like agriculture is nothing new as we speak. Utilizing the most recent paper trends will help enhance agricultural yields in a variety of places. This is essential since there is a rising need for food sources and less land is accessible for agriculture use in Nigeria. So, utilizing the features from the most recent year, this systematic review tries to gather the most recent trends in AI studies for Smart Farming publications, and using such a system will help enhance the production of the crops. The impacts of artificial intelligence for smart farming to enhance crop yield are also discussed in detail along with its various applications. We have seen how these sensors can be combined to improve the crop yield production.

Published in Control Science and Engineering (Volume 6, Issue 1)
DOI 10.11648/j.cse.20220601.11
Page(s) 1-9
Creative Commons

This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited.

Copyright

Copyright © The Author(s), 2024. Published by Science Publishing Group

Keywords

Smart Farming, Artificial Intelligence (AI), Crop Yield, Internet of Things (IoT), Wireless Sensor

References
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Cite This Article
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    Zaharadeen Yusuf Abdullahi, Amira Musa Saad, Salmanu Safiyanu Abdulsalam, Kassim Sulaiman Abubakar, Adamu Bello, et al. (2022). An Organized Review of Current AI Trends for Smart Farming to Boost Crop Yield and Its Advantages. Control Science and Engineering, 6(1), 1-9. https://doi.org/10.11648/j.cse.20220601.11

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    Zaharadeen Yusuf Abdullahi; Amira Musa Saad; Salmanu Safiyanu Abdulsalam; Kassim Sulaiman Abubakar; Adamu Bello, et al. An Organized Review of Current AI Trends for Smart Farming to Boost Crop Yield and Its Advantages. Control Sci. Eng. 2022, 6(1), 1-9. doi: 10.11648/j.cse.20220601.11

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    AMA Style

    Zaharadeen Yusuf Abdullahi, Amira Musa Saad, Salmanu Safiyanu Abdulsalam, Kassim Sulaiman Abubakar, Adamu Bello, et al. An Organized Review of Current AI Trends for Smart Farming to Boost Crop Yield and Its Advantages. Control Sci Eng. 2022;6(1):1-9. doi: 10.11648/j.cse.20220601.11

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  • @article{10.11648/j.cse.20220601.11,
      author = {Zaharadeen Yusuf Abdullahi and Amira Musa Saad and Salmanu Safiyanu Abdulsalam and Kassim Sulaiman Abubakar and Adamu Bello and Muhammad Ahmad Baballe},
      title = {An Organized Review of Current AI Trends for Smart Farming to Boost Crop Yield and Its Advantages},
      journal = {Control Science and Engineering},
      volume = {6},
      number = {1},
      pages = {1-9},
      doi = {10.11648/j.cse.20220601.11},
      url = {https://doi.org/10.11648/j.cse.20220601.11},
      eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.cse.20220601.11},
      abstract = {At the moment, the advancement in technology is being extensively used for development around the world nowadays. One of the advancements in technology is the use of artificial intelligence (AI) for smart farming for the production of crops and animals in agriculture. Special powers can be programmed into artificial intelligence (AI) systems as needed. Working with agricultural systems, artificial intelligence (AI) helps to raise the standard of agriculture in the world nowadays. The use of this new technology in fundamental industries like agriculture is nothing new as we speak. Utilizing the most recent paper trends will help enhance agricultural yields in a variety of places. This is essential since there is a rising need for food sources and less land is accessible for agriculture use in Nigeria. So, utilizing the features from the most recent year, this systematic review tries to gather the most recent trends in AI studies for Smart Farming publications, and using such a system will help enhance the production of the crops. The impacts of artificial intelligence for smart farming to enhance crop yield are also discussed in detail along with its various applications. We have seen how these sensors can be combined to improve the crop yield production.},
     year = {2022}
    }
    

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    AU  - Amira Musa Saad
    AU  - Salmanu Safiyanu Abdulsalam
    AU  - Kassim Sulaiman Abubakar
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    AU  - Muhammad Ahmad Baballe
    Y1  - 2022/08/24
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    AB  - At the moment, the advancement in technology is being extensively used for development around the world nowadays. One of the advancements in technology is the use of artificial intelligence (AI) for smart farming for the production of crops and animals in agriculture. Special powers can be programmed into artificial intelligence (AI) systems as needed. Working with agricultural systems, artificial intelligence (AI) helps to raise the standard of agriculture in the world nowadays. The use of this new technology in fundamental industries like agriculture is nothing new as we speak. Utilizing the most recent paper trends will help enhance agricultural yields in a variety of places. This is essential since there is a rising need for food sources and less land is accessible for agriculture use in Nigeria. So, utilizing the features from the most recent year, this systematic review tries to gather the most recent trends in AI studies for Smart Farming publications, and using such a system will help enhance the production of the crops. The impacts of artificial intelligence for smart farming to enhance crop yield are also discussed in detail along with its various applications. We have seen how these sensors can be combined to improve the crop yield production.
    VL  - 6
    IS  - 1
    ER  - 

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Author Information
  • Department of Agriculture Economics and Extension, Kano University of Science and Technology Wudil, Kano, Nigeria

  • Department of Crop Science, Faculty of Agriculture and Agricultural Technology, Kano University of Science and Technology Wudil, Kano, Nigeria

  • Department of Agriculture Economics and Extension, Kano University of Science and Technology Wudil, Kano, Nigeria

  • Department of Electrical and Electronics Engineering Technology, School of Technology, Kano State Polytechnic, Kano, Nigeria

  • Department of Electrical and Electronics Engineering Technology, School of Technology, Kano State Polytechnic, Kano, Nigeria

  • Department of Computer Engineering Technology, School of Technology, Kano State Polytechnic, Kano, Nigeria

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