Brackish water parameters monitoring dashboard using Internet of things and industry 4.0

Authors

  • V. Sowmiya Vel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and Technology image/svg+xml
  • G. R. Kanagachidambaresan Vel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and Technology image/svg+xml

DOI:

https://doi.org/10.4108/eetiot.6860

Keywords:

Brackish aquaculture, Machine Learning, Long Short-Term Memory, Water quality management, Web-based application

Abstract

INTRODUCTION: Brackish water aquaculture plays a crucial role in meeting the growing global demand for seafood. It offers an opportunity to diversify aquaculture production and reduce pressure on overexploited marine resources.

OBJECTIVES: By harnessing the unique properties of brackish ecosystems, this practice contributes to food security, economic growth, and sustainable resource management, while also promoting the conservation of valuable marine habitats. The development of a cutting-edge Indigenous Water Quality Monitoring Prototype named "Aqua BuoySis" for precision brackish water aquaculture utilizing machine intelligence.

METHODS: The prototype integrates sensors for Dissolved Oxygen (DO), pH, Temperature, Turbidity, and Total Dissolved Solids (TDS). These sensors are calibrated using a dynamic temperature-based machine-learning approach to ensure accuracy in real-time environments. Sensor calibration constants are uploaded to a server for comprehensive data calibration.

RESULTS: The system collects data at 20-second intervals, associating it with specific pond IDs. Data refinement is achieved through Long Short-Term Memory (LSTM) processing. An Android and Web application, available in native languages such as Tamil and Telugu, has been developed to provide live updates to aqua farmers, facilitating informed decision-making.

CONCLUSION: This technology represents a significant step towards enhancing precision in brackish water aquaculture through the fusion of machine intelligence and water quality management.

Downloads

Download data is not yet available.
<br data-mce-bogus="1"> <br data-mce-bogus="1">

References

1. Nawandar, N. K., & Satpute, V. R. (2019). IoT based low cost and intelligent module for smart irrigation system. Computers and Electronics in Agriculture, 162, 979-990.

2. Yanes, A. R., Martinez, P., & Ahmad, R. (2020). Towards automated aquaponics: A review on monitoring, IoT, and smart systems. Journal of Cleaner Production, 263, 121571.

3. Sharma, B. B., & Kumar, N. (2021). IoT-based intelligent irrigation system for paddy crop using an internet-controlled water pump. International Journal of Agricultural and Environmental Information Systems (IJAEIS), 12(1), 21-36.

4. Mahmud, H., Rahaman, M. A., Hazra, S., & Ahmed, S. (2023). IoT based integrated system to monitor the ideal environment for shrimp cultivation with Android mobile application. European Journal of Information Technologies and Computer Science, 3(1), 22-27.

5. Poovendran, A. (2024), A SYSTEMATIC LITERATURE REVIEW OF THE ELLIPTIC CURVE CRYPTOGRAPHY (ECC) ALGORITHM FOR ENCRYPTING DATA SHARING IN CLOUD COMPUTING, International Journal of Engineering & Science Research, IJESR/April. 2024/ Vol-14/Issue-2/1717-1736, ISSN 2277-2685.

6. Sri, H.G. (2021). Integrating HMI display module into passive IoT optical fiber sensor network for water level monitoring and feature extraction. World Journal of Advanced Engineering Technology and Sciences, 02(01), 132–139.

7. Maulana, F., Fakhrurroja, H., & Lubis, M. (2022, November). Smart dashboard design and water sensor integration architecture by applying Internet of Things (IoT) technology using data analysis and prediction methods. In 2022 International Conference Advancement in Data Science, E-learning and Information Systems (ICADEIS) (pp. 1-7). IEEE.

8. Bersani, C., Ruggiero, C., Sacile, R., Soussi, A., & Zero, E. (2022). Internet of Things approaches for monitoring and control of smart greenhouses in Industry 4.0. Energies, 15(10), 3834.

9. Ramakrishnam Raju, S. V. S., Dappuri, B., Ravi Kiran Varma, P., Yachamaneni, M., Verghese, D. M. G., & Mishra, M. K. (2022). Design and implementation of smart hydroponics farming using IoT-based AI controller with mobile application system. Journal of Nanomaterials, 2022, 1-12.

10. Pejić Bach, M., Topalović, A., Krstić, Ž., & Ivec, A. (2023). Predictive maintenance in Industry 4.0 for the SMEs: A decision support system case study using open-source software. Designs, 7(4), 98.

11. Khurshid, H., Mumtaz, R., Alvi, N., Haque, A., Mumtaz, S., Shafait, F., Ahmed, S., Malik, M. I., & Dengel, A. (2022). Bacterial prediction using Internet of Things (IoT) and machine learning. Environmental Monitoring and Assessment, 194(2), 133.

12. Pejić Bach, M., Topalović, A., Krstić, Ž., & Ivec, A. (2023). Predictive maintenance in Industry 4.0 for the SMEs: A decision support system case study using open-source software. Designs, 7(4), 98.

13. Mahmud, H., Rahaman, M. A., Hazra, S., & Ahmed, S. (2023). IoT based integrated system to monitor the ideal environment for shrimp cultivation with Android mobile application. European Journal of Information Technologies and Computer Science, 3(1), 22-27.

14. Saravanan, S., Guntuku, N., Akshaya, C., Prakash, B., Kumar, D. G., & Goud, P. C. D. (2023, July). A novel sensor-based water quality monitoring system using Internet of Things (IoT). In 2023 4th International Conference on Electronics and Sustainable Communication Systems (ICESC) (pp. 355-360). IEEE.

15. Butinyac, M. G., Montaño, V. A., Downes, J., Ruane, N. M., Ryder, E., Egan, F., Staessen, T., Paull, B., & Murray, E. (2023). Continuous nitrite and nitrate monitoring of recirculating aquaculture systems using a deployable ion chromatography-based analyzer. Aquaculture International, 1-14.

16. Dipali, D., Subramanian, T., & Kumaran, G. S. A smart oyster mushroom cultivation using automatic fuzzy logic controller.

17. Mantravadi, S., Srai, J. S., & Møller, C. (2023). Application of MES/MOM for Industry 4.0 supply chains: A cross-case analysis. Computers in Industry, 148, 103907.

18. de Camargo, E. T., Spanhol, F. A., Slongo, J. S., da Silva, M. V. R., Pazinato, J., de Lima Lobo, A. V., Coutinho, F. R., Pfrimer, F. W. D., Lindino, C. A., Oyamada, M. S., & Martins, L. D. (2023). Low-cost water quality sensors for IoT: A systematic review. Sensors, 23(9), 4424.

19. Hassoun, A., Cropotova, J., Trollman, H., Jagtap, S., Garcia-Garcia, G., Parra-López, C., Nirmal, N., Özogul, F., Bhat, Z., Aït-Kaddour, A., & Bono, G. (2023). Use of Industry 4.0 technologies to reduce and valorize seafood waste and by-products: A narrative review on current knowledge. Current Research in Food Science, 100505.

20. Fulton, S. G., Stegen, J. C., Kaufman, M. H., Dowd, J., & Thompson, A. (2023). Laboratory evaluation of open source and commercial electrical conductivity sensor precision and accuracy: How do they compare? PLOS ONE, 18(5), e0285092.

21. Cafuta, D., Dodig, I., Cesar, I., & Kramberger, T. (2021). Developing a modern greenhouse scientific research facility—a case study. Sensors, 21(8), 2575.

22. Murillo, L. F. R., & Wenzel, T. (2017). Welcome to the journal of open hardware. Journal of Open Hardware, 1(1).

Downloads

Published

12-11-2024

How to Cite

[1]
V. Sowmiya and G. R. Kanagachidambaresan, “Brackish water parameters monitoring dashboard using Internet of things and industry 4.0”, EAI Endorsed Trans IoT, vol. 11, Nov. 2024.