Litcius/Paper detail

Sensor placement in water distribution networks using centrality-guided multi-objective optimisation

Kegong Diao, Michael Emmerich, Jacob Lan, Iryna Yevseyeva, Robert Sitzenfrei

2023Journal of Hydroinformatics15 citationsDOIOpen Access PDF

Abstract

Abstract This paper introduces a multi-objective optimisation approach for the challenging problem of efficient sensor placement in water distribution networks for contamination detection. An important question is how to identify the minimal number of required sensors without losing the capacity to monitor the system as a whole. In this study, we adapted the NSGA-II multi-objective optimisation method by applying centrality mutation. The approach, with two objectives, namely the minimisation of Expected Time of Detection and maximisation of Detection Network Coverage (which computes the number of detected water contamination events), is tested on a moderate-sized benchmark problem (129 nodes). The resulting Pareto front shows that detection network coverage can improve dramatically by deploying only a few sensors (e.g. increase from one sensor to three sensors). However, after reaching a certain number of sensors (e.g. 20 sensors), the effectiveness of further increasing the number of sensors is not apparent. Further, the results confirm that 40–45 sensors (i.e. 31 − 35% of the total number of nodes) will be sufficient for fully monitoring the benchmark network, i.e. for detection of any contaminant intrusion event no matter where it appears in the network.

Topics & Concepts

Benchmark (surveying)Wireless sensor networkCentralityComputer scienceMulti-objective optimizationPareto principleIntrusion detection systemIntrusionReal-time computingData miningMathematical optimizationMathematicsMachine learningStatisticsComputer networkGeologyGeodesyGeographyGeochemistryWater Systems and OptimizationWater Quality Monitoring TechnologiesAdvanced Multi-Objective Optimization Algorithms