Deep Learning for Modelling of Urban Drainage Networks: A Physics-informed Surrogate Model Using Measured and Simulated Data

Salar Haghighatafshar, Alexander Bergman, Mikael Yamanee-Nolin

Research output: Chapter in Book/Report/Conference proceedingPaper in conference proceedingpeer-review

Abstract

City-wide climate adaptation for pluvial flood mitigation requires fast and reliable simulation tools. Considering the limitations of hydrodynamic models at city-scale simulations, data driven models have high potential in the development of surrogate tools. This study explores the Google DeepMind WaveNet™ model architecture to map hydrological response of catchments onto hydraulic parameters of the pipe network in a physically informed approach to deep learning. The WaveNet-based surrogate model successfully predicted hydraulic head and pipe flow in the network at average Normalized Nash-Sutcliffe Model Efficiency Indices of above 0.8, while boosting simulation speed by a factor of 1000. The developed AI model can be used for different assessment and optimization studies on the drainage network, thanks to its physics-informed structure.
Original languageEnglish
Title of host publicationProceedings of IWA World Water Congress & Exhibition, Copenhagen 2022
PublisherIWA Publishing
Publication statusPublished - 2022
EventIWA World Water Congress and Exhibition, 2022: Water for smart liveable cities - Bella Center, Copenhagen, Denmark
Duration: 2022 Sept 112022 Sept 15
https://worldwatercongress.org/

Conference

ConferenceIWA World Water Congress and Exhibition, 2022
Abbreviated titleIWA WWCE
Country/TerritoryDenmark
CityCopenhagen
Period2022/09/112022/09/15
Internet address

Subject classification (UKÄ)

  • Infrastructure Engineering
  • Water Engineering

Free keywords

  • Artificial Intelligence
  • Machine Learning
  • Urban Drainage
  • surrogate models

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