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Detection of District Heating Pipe Network Leakage Fault Using UCB Arm Selection Method

Yachen Shen, Jianping Chen, Qiming Fu, Hongjie Wu, Yunzhe Wang, You Lü

2021Buildings16 citationsDOIOpen Access PDF

Abstract

District heating networks make up an important public energy service, in which leakage is the main problem affecting the safety of pipeline network operation. This paper proposes a Leakage Fault Detection (LFD) method based on the Linear Upper Confidence Bound (LinUCB) which is used for arm selection in the Contextual Bandit (CB) algorithm. With data collected from end-users’ pressure and flow information in the simulation model, the LinUCB method is adopted to locate the leakage faults. Firstly, we use a hydraulic simulation model to simulate all failure conditions that can occur in the network, and these change rate vectors of observed data form a dataset. Secondly, the LinUCB method is used to train an agent for the arm selection, and the outcome of arm selection is the leaking pipe label. Thirdly, the experiment results show that this method can detect the leaking pipe accurately and effectively. Furthermore, it allows operators to evaluate the system performance, supports troubleshooting of decision mechanisms, and provides guidance in the arrangement of maintenance.

Topics & Concepts

TroubleshootingLeakage (economics)EngineeringReliability engineeringPipeline (software)Pipeline transportComputer scienceReal-time computingMechanical engineeringEconomicsMacroeconomicsSmart Grid Energy ManagementEnergy Load and Power ForecastingWater Systems and Optimization