Water Quality Monitoring by Implementing ZigBee Network Wireless Sensors

Authors

  • Munara Moldobaeva Asia Pacific University of Technology and Innovation, Technology Park Malaysia, Bukit Jalil, Kuala Lumpur, Malaysia. Author
  • Naresh Kumar Appadurai Asia Pacific University of Technology and Innovation, Technology Park Malaysia, Bukit Jalil, Kuala Lumpur, Malaysia. Author

DOI:

https://doi.org/10.61841/nkmmjz72

Keywords:

ZigBee, Water Quality Monitoring, Wireless Sensor Network.

Abstract

 Water quality is an extremely valuable condition to all forms of life. Due to the technological development and industrialization during last decades the water quality is drastically dropped down and additional issue as water pollution was raised up. However, the same technology has high capability to resolve the problem with water pollution, manual monitoring and make water quality research efficient by providing more accurate results. Hence, the technology I want to propose in this research paper is the ZigBee based wireless sensor network. ZigBee technology has capacity to measure temperature and water turbidity in real time by sending data to a laboratory station. By implementing Zigbee, it enables to collect water quality monitoring results in remote areas and pass that data wirelessly to laboratory or research centre. The application of wireless system will widely help to reduce the monitoring system expenses and give adjustability in terms of location and distance. And one of the main strength features of ZigBee wireless system is in low cost, reliable data transmission, efficient data collection and ease of use. Water quality monitoring includes analyzing river and marine water resources. 

Downloads

Download data is not yet available.

References

[1] Alliance, Z. (2019). Zigbee Alliance. [online] Zigbee Alliance. Available at: https://www.zigbee.org

Monitorwater.org. (2019). EarthEcho Water Challenge. [online] Available at: http://monitorwater.org

[2] Cyfar.org. (2019). Inferential Analysis | CYFAR. [online] Available at: https://cyfar.org/inferential-analysis

[3] Woodford, C. (2019). Water pollution: An introduction to causes, effects, solutions. [online] Explain that

Stuff. Available at: https://www.explainthatstuff.com/waterpollution.html [Accessed 20 Apr. 2019].

[4] Adu-Manu, K., Tapparello, C., Heinzelman, W., Katsriku, F. and Abdulai, J. (2017). Water Quality

Monitoring Using Wireless Sensor Networks. ACM Transactions on Sensor Networks, 13(1), pp.1-41.

[5] Shu, J., Hong, M., Liu, L. and Chen, Y. (2012). A Water Quality Monitoring Method Based on Fuzzy

Comprehensive Evaluation in Wireless Sensor Networks. Journal of Networks, 7(1).

[6] Lutakamale, A. and Kaijage, S. (2017). Wildfire Monitoring and Detection System Using Wireless Sensor

Network: A Case Study of Tanzania. Wireless Sensor Network, 09(08), pp.274-289

[7] Tuna, G., Nefzi, B., Arkoc, O. and Potirakis, S. (2014). Wireless Sensor Network-Based Water Quality

Monitoring System. Key Engineering Materials, 605, pp.47-50.

[8] Pule, M., Yahya, A. and Chuma, J. (2017). Wireless sensor networks: A survey on monitoring water

quality. Journal of Applied Research and Technology, 15(6), pp.562-570.

[9] Ahmedi, L., Sejdiu, B., Bytyçi, E. and Ahmedi, F. (2015). An Integrated Web Portal for Water Quality

Monitoring through Wireless Sensor Networks. International Journal of Web Portals, 7(1), pp.28-46.

[10] Allegretti, M. (2014). Concept for Floating and Submersible Wireless Sensor Network for Water Basin

Monitoring. Wireless Sensor Network, 06(06), pp.104-108.

[11] Olatinwo, S. and Joubert, T. (2019). Efficient energy resource utilization in a wireless sensor system for

monitoring water quality. EURASIP Journal on Wireless Communications and Networking, 2019(1).

[12] Adake, M. (2019). Review Paper on Water Quality Monitoring System using RC Boat with Wireless

Sensor Network. International Journal for Research in Applied Science and Engineering Technology, 7(1),

pp.873-875.

[13] Luo, R. (2015). Literature Survey on the Performance of the ZigBee Standard. Stanford Research, p.10.

Available at: http://Web.stanford.edu.

[14] Sung, W. and Hsu, C. (2013). Intelligent environment monitoring system based on Innovative Integration

Technology via Programmable System on Chip platform and ZigBee network. IET Communications, 7(16),

pp.1789-1801.

[15] Shruti M., H. (2015). A Review of Water Environment Monitoring System based on Zigbee Technology.

Matoshri College of Engineering and Research Centre, 1343, p.395.

[16] G. (2016). Smart Irrigation System Using Micro Controller and Zigbee. International Journal of Research

in Engineering and Technology, 05(33), pp.79-81.

[17] Unnikrishna Menon, K. (2012). Wireless Sensor Network for River Water Quality Monitoring in India.

Amrita Centre for Wireless Networks & Applications, (IEEE - 20180), p.10. Water Quality Monitoring

and Control Using Wireless Sensor Networks. (2016). International Research Journal of Engineering and

Technology (IRJET), [online] 03(1206), p.12. Available at: https://www.irjet.net/archives/V3/i3/IRJETV3I3256.pdf [Accessed 1 May 2019].

[18] G.Lakshmi, P., Prasad, S., Dr. C.D, N. and Reddy, D. (2015). Water Quality Monitoring and Controlling In

Irrigation Using Zigbee Technology. [online] Ijsetr.org. Available at: http://ijsetr.org/wpcontent/uploads/

2015/01/IJSETR-VOL-4-ISSUE-1-210-214.pdf [Accessed 30 Apr. 2019].

[19] Ahmad Khan, D. and Mujahid Ghouri, A. (2011). Environmental Pollution: Its Effects on Life and Its

Remedies. [online] Retawprojects.com. Available at: http://www.retawprojects.com/uploads/Paper_23.pdf

[Accessed 20 Apr. 2019].

[20] IT Portal Knowledge. (kein Datum). Software Development Methodologies. Abgerufen am 24. April 2019

von http://www.itinfo.am/eng/software-development-methodologies/ Pule, Mompoloki. (12 2017). Journal

of Applied Research and Technology. Von Science Direct: https://www.sciencedirect.com/

science/article/pii/S1665642317301037 abgerufen Zulhani, R. (12 2019). Water Quality Monitoring

System Using Zigbee. Melaka.

[21] P. Mary Jeyanthi, Santosh Shrivastava Kumar “The Determinant Parameters of Knowledge Transfer among

Academicians in Colleges of Chennai Region”, Theoretical Economics Letters, 2019, 9, 752-760, ISSN

Online: 2162-2086, DOI: 10.4236/tel.2019.94049, which is in B category of ABDC

List. https://www.scirp.org/journal/Home.aspx?IssueID=12251

[22] P. Mary Jeyanthi, “An Empirical Study of Fraudulent and Bankruptcy in Indian Banking Sectors”, The

Empirical Economics Letters, Vol.18; No. 3, March 2019, ISSN: 1681-8997, which is in C category of

ABDC List. http://www.eel.my100megs.com/volume-18-number-3.htm

[23] Mary Jeyanthi, S and Karnan, M.: “Business Intelligence: Hybrid Metaheuristic techniques”, International

Journal of Business Intelligence Research, - Volume 5, Issue 1, April-2014. URL: https://dl.acm.org/

citation.cfm?id=2628938; DOI: 10.4018/ijbir.2014010105, which is in C category of ABDC List.

[24] P. Mary Jeyanthi, “INDUSTRY 4.O: The combination of the Internet of Things (IoT) and the Internet of

People (IoP)”, Journal of Contemporary Research in Management, Vol.13; No. 4 Oct-Dec, 2018, ISSN:

0973-9785.

[25] P. Mary Jeyanthi, "The transformation of Social media information systems leads to Global business: An

Empirical Survey", International Journal of Technology and Science (IJTS), issue 3, volume 5, ISSN

Online: 2350-1111 (Online). URL: http://www.i3cpublications.org/M-IJTS-061801.pdf

[26] P. Mary Jeyanthi,” An Empirical Study of Fraud Control Techniques using Business Intelligence in

Financial Institutions”, Vivekananda Journal of Research Vol. 7, Special Issue 1, May 2018, ISSN 2319-8702(Print), ISSN 2456-7574(Online). URL: http://vips.edu/wp-content/uploads/2016/09/Special-IssueVJR-conference-2018.pdf Page no: 159-164.

[27] Mary Jeyanthi, S and Karnan, M.: “Business Intelligence: Artificial bear Optimization

Approach”, International Journal of Scientific & Engineering Research, Volume 4, Issue 8, August-2013.

URL: https://www.ijser.org/onlineResearchPaperViewer.aspx?Business-Intelligence-Artificial-BearOptimization-Ap-proach.pdf

[28] Mary Jeyanthi, S and Karnan, M.: “Business Intelligence: Optimization techniques for Decision

Making”, International Journal of Engineering Research and Technology, Volume 2, Issue 8, August-

2013. URL: https://www.ijert.org/browse/volume-2-2013/august-2013-edition?start=140

[29] Mary Jeyanthi, S and Karnan, M.: “A New Implementation of Mathematical Models with metaheuristic

Algorithms for Business Intelligence”, International Journal of Advanced Research in Computer and

Communication Engineering, Volume 3, Issue 3, March-2014. URL: https://ijarcce.com/wpcontent/uploads/2012/03/IJARCCE7F-a-mary-prem-A-NEW-IMPLEMENTATION.pdf

[30] Dr. Mary Jeyanthi: “Partial Image Retrieval Systems in Luminance and Color Invariants: An Empirical

Study”, International Journal of Web Technology (ISSN: 2278-2389) – Volume-4, Issue-2.

URL: http://www.hindex.org/2015/p1258.pdf

[31] Dr. Mary Jeyanthi: “CipherText Policy attribute-based Encryption for Patients Health Information in Cloud

Platform”, Journal of Information Science and Engineering (ISSN: 1016-2364)

[32] Mary Jeyanthi, P, Adarsh Sharma, Purva Verma: “Sustainability of the business and employment

generation in the field of UPVC widows” (ICSMS2019).

[33] Mary Jeyanthi, P: “An Empirical Survey of Sustainability in Social Media and Information Systems across

emerging countries”, International Conference on Sustainability Management and Strategy”

(ICSMS2018).

[34] Mary Jeyanthi, P: “Agile Analytics in Business Decision Making: An Empirical Study”, International

Conference on Business Management and Information Systems” (ICBMIS2015).

[35] Mary Jeyanthi, S and Karnan, M.: “Business Intelligence – soft computing Techniques”, International

Conference on Mathematics in Engineering & Business Management (ICMEB 2012).

[36] Mary Jeyanthi, S and Karnan, M.: “A Comparative Study of Genetic algorithm and Artificial Bear

Optimization algorithm in Business Intelligence”, International Conference on Mathematics in Engineering

& Business Management (ICMEB 2012).

[37] Mary Jeyanthi, S and Karnan, M.: “Business Intelligence: Data Mining and Optimization for Decision

Making”, 2011 IEEE International Conference on Computational Intelligence and Computing Research

(2011 IEEE ICCIC).

[38] Mary Jeyanthi, S and Karnan, M.: “Business Intelligence: Data Mining and Decision making to overcome

the Financial Risk”, 2011 IEEE International Conference on Computational Intelligence and Computing

Research (2011 IEEE ICCIC).

[39] Dr. Mary Jeyanthi, S: “Pervasive Computing in Business Intelligence”, State level seminar on Computing

and Communication Technologies. (SCCT-2015)

[40] Dr.P.Mary Jeyanthi, “Artificial Bear Optimization (ABO) – A new approach of Metaheuristic algorithm for

Business Intelligence”, ISBN no: 978-93-87862-65-4, Bonfring Publication. Issue Date: 01-Apr-2019

[41] Dr.P.Mary Jeyanthi, “Customer Value Management (CVM) – Thinking Inside the box” – ISBN: 978-93-

87862-94-4, Bonfring Publication, Issue Date: 16-Oct-2019.

[42] Jeyanthi, P.M., & Shrivastava, S.K. (2019). The Determinant Parameters of Knowledge Transfer among

Academicians in Colleges of Chennai Region. Theoretical Economics Letters, 9(4), 752-760.

Downloads

Published

31.10.2019

How to Cite

Moldobaeva, M., & Kumar Appadurai, N. (2019). Water Quality Monitoring by Implementing ZigBee Network Wireless Sensors. International Journal of Psychosocial Rehabilitation, 23(4), 1403-1413. https://doi.org/10.61841/nkmmjz72