Accelerating hydrodynamic simulations of urban drainage systems with
physics-guided machine learning
- URL: http://arxiv.org/abs/2206.01538v1
- Date: Tue, 24 May 2022 19:44:46 GMT
- Title: Accelerating hydrodynamic simulations of urban drainage systems with
physics-guided machine learning
- Authors: Rocco Palmitessa, Morten Grum, Allan Peter Engsig-Karup, Roland L\"owe
- Abstract summary: We propose and demonstrate a new approach for fast and accurate surrogate modelling of urban drainage system hydraulics based on physics-guided machine learning.
Our approach reduces simulation times by one to two orders of magnitude compared to a HiFi model.
It is thus slower than e.g. conceptual hydrological models, but it enables simulations of water levels, flows and surcharges in all nodes and links of a drainage network.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: We propose and demonstrate a new approach for fast and accurate surrogate
modelling of urban drainage system hydraulics based on physics-guided machine
learning. The surrogates are trained against a limited set of simulation
results from a hydrodynamic (HiFi) model. Our approach reduces simulation times
by one to two orders of magnitude compared to a HiFi model. It is thus slower
than e.g. conceptual hydrological models, but it enables simulations of water
levels, flows and surcharges in all nodes and links of a drainage network and
thus largely preserves the level of detail provided by HiFi models. Comparing
time series simulated by the surrogate and the HiFi model, R2 values in the
order of 0.9 are achieved. Surrogate training times are currently in the order
of one hour. However, they can likely be reduced through the application of
transfer learning and graph neural networks. Our surrogate approach will be
useful for interactive workshops in initial design phases of urban drainage
systems, as well as for real time applications. In addition, our model
formulation is generic and future research should investigate its application
for simulating other water systems.
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