Enhancing Irrigation Efficiency through Machine Learning and IoT Integration

Year : 2024 | Volume :15 | Issue : 03 | Page : 18-24
By
vector

Meena Kumari,

vector

Akshansh Mishra,

vector

Aryan Vashisth,

  1. Assistant Professor, Department of Computer Science Engineering, ABES Institute of Technology, Ghaziabad, India
  2. Student, Department of Computer Science Engineering (AI), ABES Institute of Technology, Ghaziabad, India
  3. Student, Department of Computer Science Engineering (AI), ABES Institute of Technology,, Ghaziabad, India

Abstract document.addEventListener(‘DOMContentLoaded’,function(){frmFrontForm.scrollToID(‘frm_container_abs_114411’);});Edit Abstract & Keyword

This study provides an integrated approach to enhance irrigation systems by fusing machine learning (ML) with Internet of Things (IoT) technologies. Agriculture is a major contributor to India’s economy, which is referred to as the backbone of the country. However, its production is highly dependent on several environmental and agronomic factors, with water being a critical resource. Irrigation consumes about 84% of total available water in India; however, a significant portion is wasted due to poor management. We created a mechanism to automatically regulate water release valves based on the amount of soil moisture present in the crop’s root zone to overcome this difficulty. This system uses a predictive ML model that estimates more accurate irrigation durations. Furthermore, we integrated real-time soil sensors to collect critical data including nutrient level, pH, temperature, and rainfall, transmitting this information wirelessly to a mobile/web app. The app provides accurate real-time data and regulates valves to maintain optimal soil moisture levels. This innovative fusion of ML and IoT technologies empowers farmers with data-driven decision-making capabilities, ultimately leading to improved crop management and enhanced agricultural sustainability.

Keywords: Machine learning, internet of things, web app, automatic irrigation, soil moisture

[This article belongs to Journal of Electronic Design Technology (joedt)]

How to cite this article:
Meena Kumari, Akshansh Mishra, Aryan Vashisth. Enhancing Irrigation Efficiency through Machine Learning and IoT Integration. Journal of Electronic Design Technology. 2024; 15(03):18-24.
How to cite this URL:
Meena Kumari, Akshansh Mishra, Aryan Vashisth. Enhancing Irrigation Efficiency through Machine Learning and IoT Integration. Journal of Electronic Design Technology. 2024; 15(03):18-24. Available from: https://journals.stmjournals.com/joedt/article=2024/view=0

Full Text PDF

Browse Figures

References
document.addEventListener(‘DOMContentLoaded’,function(){frmFrontForm.scrollToID(‘frm_container_ref_114411’);});Edit

  1. Chawla H, Kumar P. Arduino based automatic water planting system using soil moisture sensor. InInternational Conference on Advances in Engineering Science Management & Technology (ICAESMT)-2019, Uttaranchal University, Dehradun, India 2019 Mar 15.
  2. Goud LJ, Goud SL, Kulkarni S. A review and proposed automated irrigation system using soil moisture sensor and android app. International Journal of Latest Engineering and Management Research. 2019 Jul;4(7):27-35.
  3. Reddy SR. Design of remote monitoring and control system with automatic irrigation system using GSM-bluetooth. International Journal of Computer Applications. 2012 Jan 1;47(12).
  4. Kaur S. An automatic irrigation system for different crops with wsn. In2017 6th International Conference on Reliability, Infocom Technologies and Optimization (Trends and Future Directions)(ICRITO) 2017 Sep 20 (pp. 406-411). IEEE.
  5. IACSIT VD, Akhouri A, Kumar C, Rishabh R, Bagla R. A Real time implementation of a GSM based Automated Irrigation Control System using Drip Irrigation Methology. International Journal of Scientific & Engineering Research. 2013 May;4(5).
  6. Mansour HA, El-Melhem Y. Impact the automatic control of closed circuits drip irrigation system on yellow corn growth and yield. International Journal of Advanced Research. 2013;1(10):33-42.
  7. Baudoin WO. Protected cultivation in the Mediterranean region. InInternational Symposium Greenhouse Management for Better Yield & Quality in Mild Winter Climates 491 1997 Nov 3 (pp. 23-30).
  8. Archana P, Priya R. Design and implementation of automatic plant watering system. International Journal of Advanced Engineering and Global Technology. 2016 Jan;4(1):1567-70.
  9. Baghyalakshmi D, Ebenezer J, Satyamurty SA. WSN based temperature monitoring for high performance computing cluster. In2011 International conference on recent trends in information technology (ICRTIT) 2011 Jun 3 (pp. 1105-1110). IEEE.
  10. Aggarwal S, Kumar A. A smart irrigation system to automate irrigation process using IOT and artificial neural network. In2019 2nd International Conference on Signal Processing and Communication (ICSPC) 2019 Mar 29 (pp. 310-314). IEEE.

Regular Issue Subscription Original Research
Volume 15
Issue 03
Received 18/09/2024
Accepted 05/10/2024
Published 19/11/2024