Enhancements in Smart Application for Tracking Farm Land Using Cloud Computing

Authors

  • Rajeswari J. Assistant Professor, Department of Electronics and Communication Engineering, Agni College of Technology, Chennai, Tamil Nadu
  • Josh Kumar J. P. Professor, Department of Electronics and Communication Engineering, Saveetha School of Engineering, Saveetha Institute of Medical and Technical Sciences, Chennai, Tamil Nadu
  • Saranya Nair M. Associate Professor, School of Electronics Engineering, Vellore Institute of Technology, Chennai, Tamil Nadu
  • Ratheesh R. Assistant Professor, Department of Electronics and Communication Engineering, Agni College of Technology, Chennai, Tamil Nadu
  • Navaneethan S. Assistant Professor, Department of Electronics and Communication Engineering, Saveetha Engineering College, Chennai, Tamil Nadu
  • Elaiyarani K. Assistant Professor, Department of Electronics and Communication Engineering, Agni College of Technology, Chennai, Tamil Nadu
  • Shanmugam B. Student, Department of Electronics and Communication Engineering, Agni College of Technology, Chennai, Tamil Nadu

Keywords:

Agriculture, Internet of Things, Smart application, Smart farming

Abstract

Smart farming is a renovation in the agriculture sector that focuses on information and communication technologies employed in machinery, equipment, and network-based sensors. Invasive pests are estimated to cost at least $70 billion per year and contribute to the loss of biodiversity, which is reported by the Food and Agriculture Organization of the United Nations (FAO). In this proposed study, a prototype of device was developed with a smart application to help farmers by monitoring their farmland's temperature, air humidity, soil wetness, and lighting. The user can utilize the options provided by the application to decide what has to be done on the field, such as providing water or pesticides, while keeping a watch on the real-time data for soil moisture, temperature, humidity, and plant height (to determine the harvest time). Additionally, the automatic motor on and off control has been included in this prototype, which helps to water the fields at the right time. The Open Weather API, JSON, XML, HTML, and relay modules are the methods utilized to develop smart applications. Mechanisms such as cloud computing and the IoT (Internet of Things) were used to develop this proposed method. Moreover, the sensors, mobile applications, and big data analytics were also utilized to support the enhancements in smart farming. This strategy yields advanced monitoring and increased agricultural productivity.

Downloads

Download data is not yet available.

References

M. Schnfeld, R. Heil, and L. Bittner, “Big data on a farm smart farming,” in Big Data in Context, T. Hoeren and B. Kolany-Raiser, Eds., pp. 109–120, Springer, Berlin, Germany, 2018.

A. Antonacci, F. Arduini, D. Moscone, G.Palleschi, V. Scognamiglio, “Nanostructured (Bio) sensors for smart agriculture”, Trac Trends in Analytical Chemistry, Vol. 98, pp. 95–103, 2018.

F. Li,X. Wang, X. Sun, W. Zhao, “A dual-signal amplification strategy for kanamycin based on ordered mesoporous carbon-chitosan/gold nanoparticles-streptavidin and ferrocene labelled DNA”, Analytica Chimica Acta, Vol. 1033, pp. 185–192, 2018.

C.P. Apurva, S.G. Vijay, “Implementation of wireless sensor network for real time monitoring of agriculture”, International Research Journal of Engineering and Technology, Vol. 03, No. 05, 2016.

G. Raj Kumar, Y. Chandra Shekhar, V. Shweta, R. Ritesh, “Smart agriculture-Urgent need of the day in developing countries”, Sustainable Computing: Informatics and Systems, Vol. 30, p. 100512, 2021.

R. Thombare, S. Bhosale, P. Dhemey, and A. Chaudhari, “Crop yield prediction using big data analytics”, International Journal of Computer and Mathematical Sciences, Vol. 6, No. 11, pp. 53–61, 2017.

J. Gholap, A. Lngole, J. Gohil, Shailesh, and V. Attar, “Soil data analysis using classification techniques and soil attribute prediction”, International Journal of Computer Science, Vol. 9, No. 3, pp. 14, 2012.

S. Ghosh and S. Koley, “Machine learning for soil fertility and plant nutrient management using back propagation neural networks”, International Journal on Recent and Innovation Trends in Computing and Communication, Vol. 2, No. 2, pp. 292–297, 2014

K. Phasinam, T. Kassanuk, and M. Shabaz. Applicability of Internet of Things in Smart Farming”, Journal of Food Quality, Vol. 2022, Article ID 7692922, p-7, 2022.

S. Sivachandran, K. Balakrishnan, K. Navin, “Real Time Embedded Based Soil Analyser”, International Research Journal of Engineering and Technology, Vol. 3, No. 3, 2014.

N. Anand, P. Vikram, “IoT Based Smart Sensors Agriculture Stick for Live Temperature and Moisture Monitoring using Arduino”, Cloud Computing & Solar Technology, May 2015.

V. Suma, “Internet of Things (IoT) based Smart Agriculture in India: An Overview”, Journal of ISMAC, Vol. 03, No. 1, pp. 1-15, 2020.

S. ChandanKumar, B.Pramitee, “A low cost smart irrigation control system”, IEEE 2nd International Conference on Electronics and Communication System (ICECS2015), 2015.

Z.M. Lay, “Security alarm by global system for mobile (GSM) communication using SIM900A”, Research Journal, Vol. 11, pp. 145-152 2020.

S.A. Bhat, N.F. Huang, I.B. Sofi, M. Sultan, “Agriculture-food supply chain management based on blockchain and IoT: a narrative on enterprise blockchain interoperability”, Agriculture, Vol. 12, No. 1, p. 40, 2021.

S. Linsner, F. Kuntke, E. Steinbrink, J. Franken, C. Reuter,“The role of privacy in digitalization-analyzing perspectives of German farmers”, Proceedings on Privacy Enhancing Technologies, Vol. 2012, No. 3, pp. 334-350, 2021.

D. Sivaganesan, “Design and Development AI-Enabled Edge Computing for Intelligent-IOT Applications”, JTCSST, Vol. 1, No. 2, pp. 84-94, 2019.

D. Sinwar, V.S. Dhaka, M.K. Sharma, G. Rani, “AI-Based Yield Prediction and Smart Irrigation”, Internet of Things and Analytics for Agriculture, Vol. 2, pp. 155-180, 2020.

S. Kumar, “Artificial Intelligence in Indian Irrigation”, International Journal of Scientific Research in Computer Science, Engineering and Information Technology, Vol. 5, No. 5, pp. 149-167, 2019.

S. Bhat, N. Huang, “The Big Data and AI Revolution in Precision Agriculture: Survey and Challenges”, IEEE Access, Vol. 9, pp. 110209-110222, 2021.

S. Leekongxue, L. Li, T. Page, “Smart Door Monitoring and Locking System using SIM900 GSM Shield and Arduino UNO”, International Journal of Engineering Research, Vol. 9, No. 4, pp. 47-52, 2020.

M. Naresh, P. Munaswamy, “Smart agriculture system using IoT technology”, Internationa Journal of Recent Technology and Engineering, Vol. 7, No. 5, pp. 98-102, 2019.

A. Camacho, H. Arguello, “Smartphone-based application for agricultural remote technical assistance and estimation of visible vegetation index to farmers in Colombia: AgroTIC”, Proceedings in Society of Photographic Instrumentation Engineers, Article id.10783, 2018.

D. Turgut, L. Boloni, “Value of Information and Cost of Privacy in the Internet of Things”, IEEE Communications Magazine,Vol. 55, pp. 62–66, 2015.

X. Bai, Z. Wang, L. Sheng, Z.Wang,. “Reliable Data Fusion of Hierarchical Wireless Sensor Networks withAsynchronous Measurement for Greenhouse Monitoring”, IEEETransactions on Control Systems Technology, Vol. 27,2019.

M. Mahbub, “A smart farming concept based on smart embedded electronics, internet of things and wireless sensor network”, Internet of Things, Vol. 9, Article id. 100161, 2020.

K. Zhou, C. Fu, S. Yang, “Big data driven smart energy management: From big data to big insights”, Renewable and Sustainable Energy Reviews , Vol. 56, pp. 215-225, 2016.

A. Kamilaris, A. Kartakoullis, F.X. Prenafeta-Boldú, “A review on the practice of big data analysis in agriculture”, Computers and Electronics in Agriculture. Vol. 143, pp. 23–37, 2017.

J. Martínez-Fernández, A. González-Zamora, N. Sánchez, A. Gumuzzio, CM. Herrero-Jiménez, “Satellite soil moisture for agricultural drought monitoring: Assessment of the SMOS derived soil water deficit index”, Remote Sensing of Environment, Vol. 177: pp. 277-286, 2016.

T.-G. Vågen, LA. Winowiecki, JE. Tondoh, LT. Desta, T. Gumbricht, “Mapping of soil properties and land degradation risk in Africa using MODIS reflectance”, Geoderma, Vol. 263, pp. 216-225, 2016.

C. Hariharr, S. Agarwal, K. Vivek, M. Venkatesh, V. Mrugendra, “Smart farming using IoT”, International Journal of Electronics and Communication Engineering and Technology, Vol. 8, No. 1, pp. 58-66, 2017.

C.M. Swaraj, KM. Sowmyashree, “IoT-based Smart Agriculture Monitoring and Irrigation System”, International Journal of Engineering Research & Technology. Vol. 8, No. 14, pp. 245-249, 2020.

A. Sopegno, A. Calvo, R. Berruto, P. Busato, D. Bocthis, “A Web mobile application for agricultural machinery cost analysis”, Computers and Electronics in Agriculture, Vol. 130, pp.158-168, 2016.

R. Raut, H. Varma, C. Mulla, V. Pawar, “Soil Monitoring, Fertigation, and Irrigation System Using IoT for Agricultural Application”, Intelligent Communication and Computational Technologies, pp. 67-73, 2018.

N.G. Beza, A.A. Hussain, “Automatic control of agricultural pumps based on soil mois-ture sensing”, IEEE AFRICONConference,Addis Ababa,Ethiopia (2015).

J. Ruan, Y. Shi, “Monitoring and assessing fruit freshness in IoT-based E-commercedeliveryusingscenarioanalysisandintervalnumberapproaches”, InformationSciences, Vol. 373, pp. 557–570, 2016.

P.K. Sethy, S.K. Behera, N. Kannan, S. Narayanand,C. Pandey, “Smart paddy field monitoring system using deep learning and IoT”, Concurrent Engineering Research and Applications, Vol. 29, No. 1, pp. 16–24, 2021.

N. Kaushik,S. Narad, A. Mohature,P. Sakpal, “Predictive analysis of IoT based digital agriculture system using machine learning”, International Journal of Engineering Science and Computing, Vol. 9, pp. 20959–20960, 2019.

Downloads

Published

24.03.2024

How to Cite

J., R. ., J. P., J. K. ., Nair M., S. ., R., R. ., S., N. ., K., E. ., & B., S. . (2024). Enhancements in Smart Application for Tracking Farm Land Using Cloud Computing. International Journal of Intelligent Systems and Applications in Engineering, 12(3), 578–585. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/5289

Issue

Section

Research Article

Most read articles by the same author(s)