Predictive Framework for Water Quality Using Machine Learning
1Mr.F.Richard Singh Samuel, 2M.Dhana Sakthi
1Assistant Professor, 2Student
Department of Information Technology,
Francis Xavier Engineering College, Tirunelveli, India
1richardf@francisxavier.ac.in, 2dhanasakthim.ug.21.it@francisxavier.ac.in
Abstract - Water quality is essential for human health and ecosystem stability, as pollution can cause serious health issues and harm wildlife. Large-scale and on-going monitoring is difficult using traditional methods of water quality assessment since they are frequently costly, time-consuming, and labour-intensive. This paper suggests a prediction framework that uses machine learning approaches to effectively assess water potability in order to get beyond these restrictions. To assess whether water is safe to drink, the system looks at important water quality factors such pH, organic carbon, chloramines, hardness, sulphate, tri-halo-methane, particulates, conductivity, and turbidity. For classification, a Random Forest classifier is used, which is renowned for its excellent accuracy, resilience, and capacity to manage intricate datasets. The program can more accurately forecast the potability of water because it was trained on a large amount of water quality data. Furthermore, a web-based interface is created to offer real-time forecasts,
allowing users to enter water quality criteria and get prompt feedback on the water's safety. Because of this, the system is very useful for government organizations, businesses, and rural communities with restricted access to laboratory testing. In addition to improving the effectiveness of current water testing techniques, the suggested framework provides a quick and affordable substitute for extensive water quality monitoring. This strategy can assist reduce health risks, enhance water resource management, and promote sustainable environmental policies by facilitating on-going assessment and early detection of contaminants. The findings of this study show that by offering an automated and scalable solution for real-time water assessment, machine learning-based water quality prediction can greatly improve ecological conservation and public health.
Keywords – Water Quality Prediction, Machine Learning, Random Forest, Water potability, Environmental Monitoring