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

被引:0
|
作者
Konstantinos Glynis
Zoran Kapelan
Martijn Bakker
Riccardo Taormina
机构
[1] Delft University of Technology,Faculty of Civil Engineering and Geosciences
[2] Royal HaskoningDHV,Aquasuite® Research Department
来源
关键词
Deep learning; LSTM; Transfer learning; Burst detection; District metered areas;
D O I
暂无
中图分类号
学科分类号
摘要
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.
引用
收藏
页码:5953 / 5972
页数:19
相关论文
共 50 条
  • [1] Leveraging Transfer Learning in LSTM Neural Networks for Data-Efficient Burst Detection in Water Distribution Systems
    Glynis, Konstantinos
    Kapelan, Zoran
    Bakker, Martijn
    Taormina, Riccardo
    WATER RESOURCES MANAGEMENT, 2023, 37 (15) : 5953 - 5972
  • [2] Transfer learning for data-efficient abdominal muscle segmentation with convolutional neural networks
    McSweeney, Donal M.
    Henderson, Edward G.
    van Herk, Marcel
    Weaver, Jamie
    Bromiley, Paul A.
    Green, Andrew
    McWilliam, Alan
    MEDICAL PHYSICS, 2022, 49 (05) : 3107 - 3120
  • [3] Data-Efficient Classification of Birdcall Through Convolutional Neural Networks Transfer Learning
    Efremova, Dina B.
    Sankupellay, Mangalam
    Konovalov, Dmitry A.
    2019 DIGITAL IMAGE COMPUTING: TECHNIQUES AND APPLICATIONS (DICTA), 2019, : 294 - 301
  • [4] Burst detection using hydraulic data from water distribution systems with artificial neural networks
    Mounce, Stephen R.
    Machell, John
    URBAN WATER JOURNAL, 2006, 3 (01) : 21 - 31
  • [5] Novel approach for burst detection in water distribution systems based on neural networks
    Zanfei, Ariele
    Menapace, Andrea
    Brentan, Bruno M.
    Righetti, Maurizio
    Herrera, Manuel
    SUSTAINABLE CITIES AND SOCIETY, 2022, 86
  • [6] Data Based Optimal Control with Neural Networks and Data-Efficient Reinforcement Learning
    Runkler, Thomas A.
    Udluft, Steffen
    Duell, Siegmund
    AT-AUTOMATISIERUNGSTECHNIK, 2012, 60 (10) : 641 - 647
  • [7] Data-Efficient Augmentation for Training Neural Networks
    Liu, Tian Yu
    Mirzasoleiman, Baharan
    Advances in Neural Information Processing Systems, 2022, 35
  • [8] Data-Efficient Augmentation for Training Neural Networks
    Liu, Tian Yu
    Mirzasoleiman, Baharan
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35, NEURIPS 2022, 2022,
  • [9] Novel approach for burst detection in water distribution systems based on graph neural networks
    Zanfei, Ariele
    Menapace, Andrea
    Brentan, Bruno M.
    Righetti, Maurizio
    Herrera, Manuel
    Sustainable Cities and Society, 2022, 86
  • [10] Data-efficient performance learning for configurable systems
    Jianmei Guo
    Dingyu Yang
    Norbert Siegmund
    Sven Apel
    Atrisha Sarkar
    Pavel Valov
    Krzysztof Czarnecki
    Andrzej Wasowski
    Huiqun Yu
    Empirical Software Engineering, 2018, 23 : 1826 - 1867