Multi-Sensor Time-Series Dataset for Leakage Detection in Stockholm's Water Distribution Network
Authors/Creators
Description
This dataset contains time-series measurements collected from a real-world water distribution network located in Stockholm, Sweden, and was used in the study “Leakage detection in water distribution networks using machine-learning strategies” (https://doi.org/10.2166/ws.2023.054) published in Water Science & Technology (IWA Publishing, 2023).
The dataset includes operational and hydraulic variables acquired from multiple sensing points in the network, such as flow and pressure measurements, recorded at regular time intervals. The data represent both normal operating conditions and leakage scenarios, enabling the development, validation, and benchmarking of data-driven methods for leakage detection in water distribution systems.
The dataset is particularly suited for research on:
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Leakage and anomaly detection in water distribution networks
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Time-series analysis and pattern recognition
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Machine learning and data-driven modeling for smart water systems
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Evaluation of centralized and distributed detection approaches
All data are provided in their processed form as used in the referenced publication, ensuring reproducibility of the reported results. The dataset may also serve as a benchmark for future studies addressing reliability, robustness, and explainability of leakage detection methods under real operational conditions.
Users of this dataset are kindly requested to cite the associated journal article when using the data in academic publications.
Files
Files
(29.8 MB)
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Additional details
Related works
- Is described by
- Journal article: 10.2166/ws.2023.054 (DOI)
References
- Diego Perdigão Sousa, Rong Du, José Mairton Barros da Silva Jr, Charles Casimiro Cavalcante, Carlo Fischione; Leakage detection in water distribution networks using machine-learning strategies. Water Supply 1 March 2023; 23 (3): 1115–1126. doi: https://doi.org/10.2166/ws.2023.054
- Diego P. Sousa, José M. B. da Silva Jr, Charles C. Cavalcante, and Carlo Fischione. "A Federated Prototype-Based Model for IoT Systems: A Study Case for Leakage Detection in a Real Water Distribution Network". In Wireless Sensor Networks in Smart Environments (eds. D. Ciuonzo and P. Salvo Rossi), Chapter 12, pages 273-298, 2025.
- Diego Perdigão Sousa, Polycarpo Souza Neto, José Mairton Barros da Silva Júnior, Charles Casimiro Cavalcante, and Carlo Fischione, "Interpretable Water Leakage Detection Using Federated Prototype-Based Learning", XVII Congresso Brasileiro de Inteligência Computacional, Belo Horizonte, Brazil, 2025.
- Diego Perdigao Sousa, José Mairton Barros da Silva Junior, Charles Casimiro Cavalcante, and Carlo Fischione, "Federated Learning for Water Leakage Detection Using Prototype-based Models", Innovations for the Blue Planet 2024, Stockholm, Sweden, 23 - 25 April, 2024.