Efficient Water Quality Prediction Using Supervised Machine Learning
National University of Sciences and Technology · Universidad de Málaga
Abstract
Water makes up about 70% of the earth’s surface and is one of the most important sources vital to sustaining life. Rapid urbanization and industrialization have led to a deterioration of water quality at an alarming rate, resulting in harrowing diseases. Water quality has been conventionally estimated through expensive and time-consuming lab and statistical analyses, which render the contemporary notion of real-time monitoring moot. The alarming consequences of poor water quality necessitate an alternative method, which is quicker and inexpensive. With this motivation, this research explores a series of supervised machine learning algorithms to estimate the water quality index (WQI), which is a singular index…
Citation impact
- FWCI
- 14.80
- Percentile
- 100%
- References
- 36
Authors
6- UAUmair Ahmed
National University of Sciences and Technology
- RMRafia MumtazCorresponding
National University of Sciences and Technology
- HAHirra Anwar
National University of Sciences and Technology
- AAAsad Ali Shah
National University of Sciences and Technology
- RIRabia Irfan
National University of Sciences and Technology
Topics & keywords
- Water quality
- Perceptron
- Machine learning
- Turbidity
- Computer science
- Multilayer perceptron
- Artificial intelligence
- Supervised learning
- Sustainable cities and communities