Litcius/Paper detail

Ensemble-based machine learning approach for improved leak detection in water mains

T. Ravichandran, Keyhan Gavahi, K. Ponnambalam, Valentin Burtea, S. Jamshid Mousavi

2021Journal of Hydroinformatics84 citationsDOIOpen Access PDF

Abstract

Abstract This paper presents an acoustic leak detection system for distribution water mains using machine learning methods. The problem is formulated as a binary classifier to identify leak and no-leak cases using acoustic signals. A supervised learning methodology has been employed using several detection features extracted from acoustic signals, such as power spectral density and time-series data. The training and validation data sets have been collected over several months from multiple cities across North America. The proposed solution includes a multi-strategy ensemble learning (MEL) using a gradient boosting tree (GBT) classification model, which has performed better in maximizing detection rate and minimizing false positives as compared with other classification models such as KNN, ANN, and rule-based techniques. Further improvements have been achieved using a multitude of GBT classifiers combined in a parallel ensemble method called bagging algorithm. The proposed MEL approach demonstrates a significant improvement in performance, resulting in a reduction of false positives reports by an order of magnitude.

Topics & Concepts

False positive paradoxGradient boostingEnsemble learningBoosting (machine learning)Computer scienceArtificial intelligenceLeakClassifier (UML)Binary classificationDecision treeMachine learningPattern recognition (psychology)Leak detectionSupport vector machineRandom forestEngineeringEnvironmental engineeringWater Systems and OptimizationWater Quality Monitoring TechnologiesHigh voltage insulation and dielectric phenomena