Integrating deep learning techniques for effective river water quality monitoring and management.

Journal: Journal of environmental management
Published Date:

Abstract

Effective river water quality monitoring is essential for sustainable water resource management. In this study, we established a comprehensive monitoring system along the Kaveri River, capturing real-time data on multiple critical water quality parameters. The parameters collected encompassed water contamination levels, turbidity, pH measurements, temperature, and total dissolved solids (TDS), providing a holistic view of river water quality. The monitoring system was meticulously set up with strategically positioned sensors at various river locations, ensuring data collection at regular 5-min intervals. This data was then transmitted to a cloud-based web portal, facilitating storage and analysis. To assess water quality, we introduced a novel hybrid approach, combining Convolutional Neural Networks (CNN) and Long Short-Term Memory (LSTM) networks. The proposed CNN-LSTM model achieved a validation accuracy of 98.40%, surpassing the performance of other state-of-the-art methods. Notably, the practical application of this system includes real-time alerts, promptly notifying stakeholders when water quality parameters exceed predefined thresholds. This feature aids in making informed decisions in water resource management. The study's contributions lie in its effective river water quality monitoring system, which encompassing various parameters, and its potential to positively impact environmental conservation efforts by providing a valuable tool for informed decision-making and timely interventions.

Authors

  • Chellaswamy Chellaiah
    Department of Electronics and Communication Engineering, SRM TRP Engineering College, Tiruchirappalli, 621105, India.
  • Sriram Anbalagan
    Department of Electronics and Communication Engineering, SRM TRP Engineering College, Tiruchirappalli, 621105, India.
  • Dilipkumar Swaminathan
    Department of Analytics, SCOPE,VIT Vellore, Tamil Nadu, 632014, India.
  • Subrata Chowdhury
    Department of Masters of Computer Application, Sri Venkateswara College of Engineering and Technology (A), Chittoor 517127, Andhra Pradesh, India.
  • Timoteus Kadhila
    School of Education, Department of Higher Education and Lifelong Learning, University of Namibia, Private Bag 13301, Windhoek, Namibia.
  • Abner Kukeyinge Shopati
    Namibia Business School(NBS), Faculty of Commerce, Management and Law, University of Namibia, Private Bag 13301, Main Campus, Windhoek, Namibia.
  • Sumarlin Shangdiar
    Institute of Environmental Engineering, National Sun Yat-Sen University, Kaohsiung, 804, Taiwan; Center for Emerging Contaminants Research, National Sun Yat-Sen University, Kaohsiung, 804, Taiwan.
  • Bhisham Sharma
    Chitkara University School of Engineering and Technology, Chitkara University, Himachal Pradesh, India.
  • Kassian T T Amesho
    Institute of Environmental Engineering, National Sun Yat-Sen University, Kaohsiung, 804, Taiwan; Center for Emerging Contaminants Research, National Sun Yat-Sen University, Kaohsiung, 804, Taiwan; The International University of Management, Centre for Environmental Studies, Main Campus, Dorado Park Ext 1, Windhoek, Namibia; Destinies Biomass Energy and Farming Pty Ltd, P.O. Box 7387, Swakopmund, Namibia. Electronic address: kassian.amesho@gmail.com.