Leveraging Transfer Learning in LSTM Neural Networks for Data-Efficient Burst Detection in Water Distribution Systems

Journal Article (2023)
Author(s)

K.G. Glynis (Royal HaskoningDHV, TU Delft - Sanitary Engineering)

Zoran Kapelan (TU Delft - Sanitary Engineering)

Martijn Bakker (Royal HaskoningDHV)

Riccardo Taormina (TU Delft - Sanitary Engineering)

Research Group
Sanitary Engineering
Copyright
© 2023 K.G. Glynis, Z. Kapelan, Martijn Bakker, R. Taormina
DOI related publication
https://doi.org/10.1007/s11269-023-03637-3
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 K.G. Glynis, Z. Kapelan, Martijn Bakker, R. Taormina
Research Group
Sanitary Engineering
Issue number
15
Volume number
37
Pages (from-to)
5953-5972
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Abstract

Researchers and engineers employ machine learning (ML) tools to detect pipe bursts and prevent significant non-revenue water losses in water distribution systems (WDS). Nonetheless, many approaches developed so far consider a fixed number of sensors, which requires the ML model redevelopment and collection of sufficient data with the new sensor configuration for training. To overcome these issues, this study presents a novel approach based on Long Short-Term Memory neural networks (NNs) that leverages transfer learning to manage a varying number of sensors and retain good detection performance with limited training data. The proposed detection model first learns to reproduce the normal behavior of the system on a dataset obtained in burst-free conditions. The training process involves predicting flow and pressure one-time step ahead using historical data and time-related features as inputs. During testing, a post-prediction step flags potential bursts based on the comparison between the observations and model predictions using a time-varied error threshold. When adding new sensors, we implement transfer learning by replicating the weights of existing channels and then fine-tune the augmented NN. We evaluate the robustness of the methodology on simulated fire hydrant bursts and real-bursts in 10 district metered areas (DMAs) of the UK. For real bursts, we perform a sensitivity analysis to understand the impact of data resolution and error threshold on burst detection performance. The results obtained demonstrate that this ML-based methodology can achieve Precision of up to 98.1% in real-life settings and can identify bursts, even in data scarce conditions.