Machine Learning Algorithms for Water Quality Prediction in Smart Utilities
Key Takeaways Machine learning models achieve 88-95% accuracy in predicting water quality parameters 24-72 hours in advance, enabling proactive treatment optimization Random Forest and Gradient Boosting algorithms consistently outperform alternative approaches for water quality prediction, achieving 12-18% better accuracy than neural networks in benchmark studies Hybrid models combining physics-based understanding with data-driven learning reduce prediction…

