Automation and Safety for Agriculture and Forest Conservation Using IOT
DOI:
https://doi.org/10.32628/CSEIT251112322Keywords:
IoT, Precision Agriculture, Smart Farming, Forest Conservation, Automation, Machine Learning, Remote SensingAbstract
This paper presents an IoT-based automation system for agriculture and forest conservation, aimed at improving efficiency, sustainability, and safety. The system integrates smart sensors, machine learning (ML), and real-time monitoring to address key challenges such as inefficient resource management, delayed hazard detection, and environmental degradation. The proposed system uses environmental sensors to monitor soil moisture, temperature, humidity, air quality, and fire risks, allowing for automated irrigation, predictive analytics, and early detection of threats like wildfires and deforestation. Machine learning models optimize resource allocation and hazard prediction, enhancing decision-making capabilities. A cloud-based dashboard enables remote monitoring and control, ensuring a proactive approach to agriculture and forest conservation. This solution significantly improves yield, reduces human intervention, and minimizes environmental risks through automation and real-time data processing.
Downloads
References
D.L. Bjorneberg, Irrigation Methods, Reference Module in Earth Sys- tems and Environmental Sciences, Elsevier, 2013 ISBN 9780124095489, doi: 10.1016/B978-0-12-409548-9.05195-2 .
GoIPocket book of Agricultural Statistics, Government of India, Ministry of Agricul- ture & Farmers Welfare, Department of Agriculture, Cooperation & Farmers Welfare, Directorate of Economics & Statistics, New Delhi, 2017 .
R.J. Smith , S.R. Raine , J. Minkovich , Irrigation application efficiency and deep drainage potential under surface irrigated cotton, Agric. Water Manag. 71 (2) (2005) 117–130 .
V. Dhawan. Water and agriculture in India, background paper for the South Asia expert panel during the global forum for food and agriculture (GFFA) (2017)
R.K. Sivanappan , Status, scope and future prospects of micro-irrigation in India, in: Proceedings of the Workshop on micro-irrigation and sprinkler irrigation system, 28-30, 2008, pp. 1–7. CBIP New DelhiApril .
A.J. Clemmens, Feedback control of basin irrigation system, J. Irrig. Drain. Eng. 118 (3) (1992) 481-196, doi: 10.1061/(ASCE)0733-9437(1992)118:3(480) .
R.J. Smith, M. Uddin, M.H. Gillies, P.M. Clurey, Evaluating the per- formance of automated bay irrigation, Irrig. Sci. 34 (2016) 175–185, doi: 10.1007/s00271-016-0494-8 .
R.M. Michael, A. Hussain, M.H. Gillies, J. Nicholas, Inflow rate and border irrigation performance, Agric. Water Manag. 155 (2015) 76–86, doi: 10.1016/J.AGWAT.2015.03.017 .
H.M. Al-Ghobari, F.S. Mohammad, M.S.A. El Marazky, A.Z. Dewidar, Automated irrigation systems for wheat and tomato crops in arid regions, Water SA 43 (2017) 354–364, doi: 10.4314/wsa.v43i2.18 .
A.P. Bowlekar, S.T. Patil, U.S. Kadam, M.S. Mane, S.B. Nandgude, N.K. Palte, Performance evaluation of real time automatic irrigation system on the yield of cabbage ( Brassica oleracea L.), Int. J. Pure Appl. Biosci. 7 (2019) 160–165, doi: 10.18782/2320-7051.7433 .
Dryad Networks, 2023 . This article discusses how IoT is revolutionizing forest management through real-time data collection, wildfire detection, and enhancing sustainability.
IEEE Conference Publication, 2017 .This paper presents an IoT-based system for monitoring environmental factors in agriculture, aiming to improve crop yield and efficiency.
Satvik Garg, Pradyumn Pundir, Himanshu Jindal, Hemraj Saini, Somya Garg Published in: arXiv, 2021.This study proposes a system combining IoT and machine learning to enhance precision agriculture through improved data collection and analysis.
Md. Mahadi Hasan, Muhammad Usama Islam, Muhammad Jafar Sadeq
Published in: arXiv, 2022.Tis paper provides an overview of integrating AI, IoT, and robotics in agriculture, discussing current applications and future research directions.
CNN-Based Real-Time Forest Monitoring and Response"
Authors: Avishek Bhattacharjee, Swarup Samanta, Jagadish Bhattacharya, Manish Kumar Singh .Published in: arX
Downloads
Published
Issue
Section
License
Copyright (c) 2025 International Journal of Scientific Research in Computer Science, Engineering and Information Technology

This work is licensed under a Creative Commons Attribution 4.0 International License.