Next Publication In:
Days: 00
Hours: 00
Minutes: 00
Seconds: 00

WATER QUALITY PREDICTION WITH MACHINE LEARNING ALGORITHMS

📘 Volume 10 📄 Issue 4 📅 april 2024

👤 Authors

Oliver North Rogers III, Ambili P S 1
1. School of CSA, REVA University, Computer Science and Applications, Bangalore, Karnataka,India

📄 Abstract

Water quality prediction plays a significant role in safeguarding human health, preserving aquatic ecosystems, supporting sustainable water management practices, and ensuring regulatory compliance in aquatic environments. This study explores the use of machine learning (ML) models to predict water quality in various aquatic environments. By analyzing a comprehensive dataset of water quality indicators like pH, dissolved oxygen, and turbidity, the research employs several ML algorithms including Random Forest, Support Vector Machines, and Gradient Boosting Machines. Through rigorous training, validation, and optimization, the models are evaluated for their accuracy, sensitivity, and error rate. Additionally, the study identifies key factors impacting water quality variations through feature importance analysis. The study provides valuable insights for environmental monitoring, resource management, and regulatory compliance. Integrating advanced ML techniques with water quality assessment, this research aims to contribute to the development of effective early warning systems and decision-support tools that promote sustainable water management practices.

🏷️ Keywords

Machine Learning Water quality prediction pH Dissolved oxygen Random Forest Support Vector Machines (SVM) Gradient Boosting Machines.

🔗 DOI

View DOI - (https://doi.org/10.36713/epra16318)

📚 How to Cite:

Oliver North Rogers III, Ambili P S , WATER QUALITY PREDICTION WITH MACHINE LEARNING ALGORITHMS , Volume 10 , Issue 4, april 2024, EPRA International Journal of Multidisciplinary Research (IJMR) , DOI: https://doi.org/10.36713/epra16318

🔗 PDF URL

https://cdn.eprapublishing.org/article/111pm_12.EPRA JOURNALS 16318.pdf

📄 PDF Preview

Click the button above to load the PDF.