Published on February 2024 | Machine Learning

Drinking water quality detection using genetic neural network
Authors: R. Isaac Sajan, V. Bibin Christopher, T.S. Akhila and M. Joselin Kavitha
View Author: Dr. Isaac Sajan R
Journal Name: International Journal of Global Warming
Volume: 32 Issue: 3 Page No: 267-281
Indexing: SCI/SCIE
Abstract:

Physical, chemical, and biological properties influence water quality. It assesses water treatment compliance versus standards. Most water quality standards assess ecosystem health, human safety, water pollution, and drinking water. Water quality affects supply. Microbial, chemical, and radioactive pollutants may damage drinking water. Drinking water pollution may affect babies, young children, pregnant women, the elderly, and those with impaired immune systems. Before consuming water, its purity is checked. Monitoring ensures water quality and identifies issues. Real-time ML algorithms may identify drinking water quality issues. Water quality may be checked continually and issues rectified immediately. This safeguards public health and drinking water. They may thereby improve water quality assessments. The MinMaxScaler class pre-processes data for our evolutionary neural network drinking water quality method. Also label encoding was used. The experiment yielded the best answer and 93% fitness function.

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