Litcius/Paper detail

Leakage detection in water distribution networks using machine-learning strategies

Diego P. Sousa, Rong Du, José Mairton B. da Silva, Charles C. Cavalcante, Carlo Fischione

2023Water Science & Technology Water Supply24 citationsDOIOpen Access PDF

Abstract

Abstract This work proposes a reliable leakage detection methodology for water distribution networks (WDNs) using machine-learning strategies. Our solution aims at detecting leakage in WDNs using efficient machine-learning strategies. We analyze pressure measurements from pumps in district metered areas (DMAs) in Stockholm, Sweden, where we consider a residential DMA of the water distribution network. Our proposed methodology uses learning strategies from unsupervised learning (K-means and cluster validation techniques), and supervised learning (learning vector quantization algorithms). The learning strategies we propose have low complexity, and the numerical experiments show the potential of using machine-learning strategies in leakage detection for monitored WDNs. Specifically, our experiments show that the proposed learning strategies are able to obtain correct classification rates up to 93.98%.

Topics & Concepts

Learning vector quantizationArtificial intelligenceMachine learningUnsupervised learningComputer scienceSupervised learningLeakage (economics)Quantization (signal processing)Vector quantizationArtificial neural networkAlgorithmMacroeconomicsEconomicsWater Systems and OptimizationAnomaly Detection Techniques and ApplicationsInfrastructure Maintenance and Monitoring