Leak Detection Physics-Informed Synthetic Dataset
收藏Zenodo2026-03-24 更新2026-05-26 收录
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https://zenodo.org/doi/10.5281/zenodo.19207702
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Associated Publication: Cross-Dataset Generalization for Water Leak Detection: A Three-Dataset Transfer Learning Benchmark (DOI pending)
Overview:2,000-record synthetic dataset for cross-domain transfer learning evaluation in water distribution networks. Complements two Kaggle datasets (DS1, DS2) to enable first-ever 3×3 transfer matrix benchmarking.
Dataset Characteristics:
Records: 2,000
Leak Prevalence: 13.8% (276 positives)
Features: Pressure(PSI), FlowRate(gal/min), Temperature(F°), PipeAge(years), PipeDiameter(mm), SensorLocationID
Leak Generation: Physics-informed logistic function:P(leak) = sigmoid(-pressure + flow_deviation + age + (1/diameter) + noise)
Key Design Choices:
Unit mismatch: PSI/gal-min/F° (vs. bar/L-min/C° in DS1/DS2) tests scale robustness
Rich positives: 276 events (vs. DS2's 19) enables stable target-only baselines
Controlled complexity: Parametric physics model ensures separability while testing transfer
Usage:
Within-dataset baseline: ROC-AUC 0.972-0.980
Cross-dataset transfer: DS1↔DS3 bidirectional 0.946
Full analysis code: Included (reproduce Tables 2-5)
License: CC0 1.0 (public domain dedication)
Keywords: water leak detection, transfer learning, domain adaptation, tabular data, synthetic benchmark, cold-start learning, sensor data
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Zenodo创建时间:
2026-03-24



