IoT-Based Predictive Maintenance and Monitoring System for Water Purifiers
Abstract
This project focuses on developing an Internet of Things (IoT) based predictive monitoring and maintenance system for water purifiers. Various sensors such as pressure, pH, vibration, temperature, flow, and turbidity sensors are integrated into the purifier to continuously monitor the condition of important components like filters and pumps. Machine learning models including Long Short-Term Memory (LSTM) and Gradient Boosting algorithms such as XGBoost are used to analyze sensor data and identify possible system failures or performance degradation in advance.
The proposed system provides real-time notifications through a user interface, allowing users to take preventive maintenance actions before major faults occur. As a result, the lifespan of the purifier can be extended, maintenance costs can be reduced, and a continuous supply of clean drinking water can be ensuredReferences
Sohanpal, P. K., Sarao, P. S., Goyal, P., Trivedi, N. K., & Tiwari, R. G. (2022). IoT enabled RO water filter indicator. In IEEE.
Kumar, A., & Kumari, M. (2023). Design & implementation of smart RO purifier for remote monitoring using IoT sensor. In IEEE.
Real-time IoT-based water quality management system. (2020). ScienceDirect.
Hakim, W. L., Hasanah, L., Mulyanti, B., & Aminudin, A. (2019). Characterization of turbidity water sensor SEN0189 on the changes of total suspended solids in the water. Journal of Physics: Conference Series. IOP Publishing.
Predictive maintenance using LSTM for time-series data. (2023). Journal of Intelligent Systems.
Thosar, D. S., Shinde, R. R., Gadakh, P. J., & Kashid, P. V. (2016). Secure kNN query processing in entrusted cloud environments. Asian Journal for Convergence in Technology (AJCT), 2(1).
Thosar, D. S., & Gandhewar, N. (2022). An advanced image authentication using pass image algorithm to resist shoulder surfing attack. Computer Integrated Manufacturing Systems.
Thosar, D. S., & Singh, M. (2018). A review on advanced graphical authentication to resist shoulder surfing attack. In Proceedings of the 2018 International Conference on Advanced Computation and Telecommunication (ICACAT). IEEE.
Pagare, S., Thosar, D. S., & Shegde, K. (2021). Agriculture food supply chain management using blockchain technology. International Research Journal of Engineering and Technology (IRJET).
Sonavane, S. S., Thosar, D. S., Wankar, B. R., Jadhav, K., More, P. A., & Kulkarni, A. (2024). DermDetectNet: Identifying skin diseases with advanced computer learning. In Proceedings of the 2nd DMIHER International Conference on Artificial Intelligence in Healthcare, Education and Industry (IDICAIEI).
Refbacks
- There are currently no refbacks.