Anomaly Detection and Inlet Pressure Prediction in Water Distribution Systems Using Machine Learning
Tran Dang Khoa

TL;DR
This paper introduces machine learning models, including CNN-EMD and LSTM, to improve anomaly detection and inlet pressure prediction in water distribution systems, enhancing system reliability and resource efficiency.
Contribution
The study develops novel CNN-EMD and CNN-EMD-LSTM models that significantly improve pressure anomaly detection and inlet pressure forecasting in water networks.
Findings
Anomaly detection accuracy of 85% to 95%.
Inlet pressure prediction accuracy of 93%.
Models enable early issue detection and system optimization.
Abstract
This study presents two models to optimize pressure management in water distribution networks. The first model forecasts pressure at distribution points and compares predictions with actual data to detect anomalies such as leaks and blockages. Early detection allows for timely interventions, minimizing economic losses and ensuring system sustainability. The second model estimates the necessary inlet pressure based on the influence of various distribution points, ensuring consistent water supply while reducing waste and optimizing resource management. Both models utilize modern machine learning algorithms to enhance the prediction process. The methodology includes the CNN-EMD model, which analyzes historical data collected every 15 minutes over two months to predict future pressures. The Empirical Mode Decomposition (EMD) method identifies fluctuations and anomalies, improving prediction…
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Taxonomy
TopicsWater Systems and Optimization · Electricity Theft Detection Techniques · Smart Grid Energy Management
MethodsSigmoid Activation · Tanh Activation · Long Short-Term Memory
