Neural Network-Based Monitoring of Critical Parameters in Drinking Water for Enhanced Quality Assurance

Arunbalaji S.*
Department of Electrical Engineering, University of Technology and Applied Sciences, Salalah, Dhofar, Oman.
Periodicity:July - December'2023
DOI : https://doi.org/10.26634/jic.11.2.20276

Abstract

Every nation has its own approved parameters for water quality standards provided by the World Health Organization (WHO). These parameters undergo variations based on geography. The Sultanate of Oman has listed prime important parameters for unbottled drinking water according to Oman Standards. Currently, the utilization of advanced Internet of Things (IoT) technology involves numerous internal measurements through multiple sensors. These sensors continuously monitor water quality indicators such as pH levels, turbidity, and microbial content, ensuring that the drinking water meets the stringent standards set by the Sultanate of Oman. This integration of IoT technology enhances real-time data collection and analysis, facilitating prompt responses to any deviations from the prescribed water quality parameters. However, determining the specific purpose of water usage is not yet defined. Traditionally, water quality is typically examined only for physiochemical properties. However, given that water is a colorless liquid, its suitability for drinking cannot be solely determined based on these properties. By employing Time Series Neural Networks, we can identify the current parameters of water and display or transmit information wirelessly as a report. This report would include a comparison between the actual value and the measured value using recent sensors and instrumentation. Additionally, the Time Series Neural Networks allow for real-time monitoring, enabling swift detection of anomalies or fluctuations in water parameters, contributing to proactive decision-making in water management. The seamless integration of advanced technology not only enhances the accuracy of data analysis but also facilitates timely responses to potential environmental changes or emerging issues.

Keywords

Water Quality Monitoring, Neural Network Applications, Imperative Parameters, Drinking Water Safety, Sensor Integration, Data Analysis, Real-time Monitoring, Machine Learning in Water Management, Environmental Sensors.

How to Cite this Article?

Arunbalaji, S. (2023). Neural Network-Based Monitoring of Critical Parameters in Drinking Water for Enhanced Quality Assurance. i-manager’s Journal on Instrumentation & Control Engineering, 11(2), 1-7. https://doi.org/10.26634/jic.11.2.20276
If you have access to this article please login to view the article or kindly login to purchase the article

Purchase Instant Access

Single Article

North Americas,UK,
Middle East,Europe
India Rest of world
USD EUR INR USD-ROW
Online 200 35 35 200 15
Pdf 35 35 200 20
Pdf & Online 35 35 400 25

Options for accessing this content:
  • If you would like institutional access to this content, please recommend the title to your librarian.
    Library Recommendation Form
  • If you already have i-manager's user account: Login above and proceed to purchase the article.
  • New Users: Please register, then proceed to purchase the article.