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Water distribution network leak localization with histogram-based gradient boosting

Gabriel Marvin, Luka Grbčić, Siniša Družeta, Lado Kranjčević

2023Journal of Hydroinformatics32 citationsDOIOpen Access PDF

Abstract

Abstract Accurate and rapid leak localization in water distribution networks is extremely important as it prevents further loss of water and reduces water scarcity. A framework for identifying relevant leak event parameters such as the leak location, leakage area, and start time is presented in this paper. Firstly, the proposed data-driven methodology consists of acquiring pressure data at nodes in the network through hydraulic simulations by randomly changing the leak event initial conditions (leak location, area, and start time). Pressure uncertainties are added to the sensor measurements in order to make the problem more realistic. Secondly, the acquired data are then used to train, test, and validate a machine learning model in order to predict the relevant parameters. The random forest and the histogram-based gradient boosting machine learning algorithms are investigated and compared for the leak detection problem. The proposed approach with the histogram-based gradient boosting algorithm shows high accuracy in predicting the true leak location.

Topics & Concepts

LeakBoosting (machine learning)HistogramGradient boostingComputer scienceLeak detectionLeakage (economics)Artificial intelligenceData miningMachine learningRandom forestEngineeringImage (mathematics)Environmental engineeringMacroeconomicsEconomicsWater Systems and OptimizationHigh voltage insulation and dielectric phenomenaIntravenous Infusion Technology and Safety
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