Integration of IoT and DNN Model to Support the Precision Crop

Authors

  • C. Sasikala Associate Professor, Department of CSE, Srinivasa Ramanujan Institute of Technology (A), Anantapur
  • P. Srilatha Assistant Professor, Dept of CSE, CVR college of Engineering (A),Hyderabad
  • Shaik Khaleelullah Assistant Professor, Dept of IT, Vignan Institute of Technology and Science(A),Hyderabad
  • Ch. Ravindra Assistant.Professor, Dept of CSE, Guru Nanak Institutions Technical Campus, Hyderabad
  • Anup Kadam Assistant Professor, Dept of Computer Engineering, Army Institute of Technology, Pune
  • K. Gurnadha Gupta Department of Computer Science and Engineering, Koneru Lakshmaiah Education Foundation, Vaddeswaram, Guntur Dist.

Keywords:

IoT, DNN, crop precision, sensor data, precision agriculture, soil test, pH data collection

Abstract

Agriculture filed is the major source of living for humans in many countries. As the population is increasing there was no proportionate growth in in agriculture productions which may leads to the harm to the societies. Most of the cases we depended on natural resources for cultivation, due to geological disasters many times there may be damage of the fields. Our main focus is to suggest precision crop based on climatical situations. We integrated IoT with ML algorithms for this purpose for enabling precision crop. Combining IoT with DNN (Deep Neural Networks) for making various aspects of test such as soil, temperature, humidity, pH values generating from various sources can be decided which crop is suitable the conditions. This paper gives the usage of IoT sensors for decision making for crop fields, optimizing the usage of resources and directs various farming methods. The comparative study proved our results are better than the many existed works.

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References

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Published

23.02.2024

How to Cite

Sasikala, C. ., Srilatha, P. ., Khaleelullah, S. ., Ravindra, C. ., Kadam, A. ., & Gupta, K. G. . (2024). Integration of IoT and DNN Model to Support the Precision Crop. International Journal of Intelligent Systems and Applications in Engineering, 12(16s), 408–416. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/4853

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Research Article

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