Uncertainty of real-time prediction for pluvial urban floods: A case study

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschungPeer-Review

Autoren

  • Simon Berkhahn
  • Robert Sämann
  • Bora Shehu
  • Insa Neuweiler
  • Uwe Haberlandt
Forschungs-netzwerk anzeigen

Details

OriginalspracheEnglisch
Titel des SammelwerksProceedings of the 29th European Safety and Reliability Conference
UntertitelESREL 2019
Herausgeber/-innenMichael Beer, Enrico Zio
Seiten3738-3743
Seitenumfang6
ISBN (elektronisch)9789811127243
PublikationsstatusVeröffentlicht - 2019
Veranstaltung29th European Safety and Reliability Conference, ESREL 2019 - Leibniz University Hannover, Hannover, Deutschland
Dauer: 22 Sept. 201926 Sept. 2019

Abstract

The prediction of pluvial flooding in urban catchment needs fast prediction methods due to short lead-times in rain prediction. As physically based models including pipe networks and surface flow are usually too slow for a real-time prediction, machine learning approaches could be used as a substitute. Such a machine learning approach based on artificial neural networks (ANN) was developed and tested in a prior study. The prediction model reads in time series of rainfall predictions and gives spatially distributed maximum water levels for this rain events within seconds. The database for the ANN training is generated with the physically based 1D/2D hydrodynamic pipe flow and surface model HYSTEM EXTRAN 2D (HE2D). To account for a variety of cases, a rainfall event catalog was built from the rainfall stations within 128 km radius from the study location, which served as an input for both HE2D and the ANN model. These events are of different durations, intensities and return periods, and their transferability to the study location is ensured by a regional frequency analysis. The aim of the present study is to investigate the uncertainty of pluvial flood prediction using an anonymous urban sub-catchment in the city of Hanover as test case. The underlying assumption of the study is that the most important source of uncertainty is due to the forecast of the storm events. An ensemble approach is used to account for uncertainty. The ANN is used for flood predictions, as the fast computation time makes an ensemble approach feasible. A K-Nearest Neighbour (KNN) model is used to select an ensemble of equivalent rain events from the database. Different metrics to quantify the rain events are compared. The ensemble of rain events generated with the KNN model is used as input for the ANN model. For testing the reliability of the ANN, the ensemble of dynamic water heights is compared to the reference results of the HE2D model. The spread of the maximum water level is investigated as a measure for prediction for the uncertainty of the forecast model.

ASJC Scopus Sachgebiete

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Uncertainty of real-time prediction for pluvial urban floods: A case study. / Berkhahn, Simon; Sämann, Robert; Shehu, Bora et al.
Proceedings of the 29th European Safety and Reliability Conference: ESREL 2019. Hrsg. / Michael Beer; Enrico Zio. 2019. S. 3738-3743.

Publikation: Beitrag in Buch/Bericht/Sammelwerk/KonferenzbandAufsatz in KonferenzbandForschungPeer-Review

Berkhahn, S, Sämann, R, Shehu, B, Neuweiler, I & Haberlandt, U 2019, Uncertainty of real-time prediction for pluvial urban floods: A case study. in M Beer & E Zio (Hrsg.), Proceedings of the 29th European Safety and Reliability Conference: ESREL 2019. S. 3738-3743, 29th European Safety and Reliability Conference, ESREL 2019, Hannover, Deutschland, 22 Sept. 2019. https://doi.org/10.3850/978-981-11-2724-3_1040-cd
Berkhahn, S., Sämann, R., Shehu, B., Neuweiler, I., & Haberlandt, U. (2019). Uncertainty of real-time prediction for pluvial urban floods: A case study. In M. Beer, & E. Zio (Hrsg.), Proceedings of the 29th European Safety and Reliability Conference: ESREL 2019 (S. 3738-3743) https://doi.org/10.3850/978-981-11-2724-3_1040-cd
Berkhahn S, Sämann R, Shehu B, Neuweiler I, Haberlandt U. Uncertainty of real-time prediction for pluvial urban floods: A case study. in Beer M, Zio E, Hrsg., Proceedings of the 29th European Safety and Reliability Conference: ESREL 2019. 2019. S. 3738-3743 doi: 10.3850/978-981-11-2724-3_1040-cd
Berkhahn, Simon ; Sämann, Robert ; Shehu, Bora et al. / Uncertainty of real-time prediction for pluvial urban floods : A case study. Proceedings of the 29th European Safety and Reliability Conference: ESREL 2019. Hrsg. / Michael Beer ; Enrico Zio. 2019. S. 3738-3743
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abstract = "The prediction of pluvial flooding in urban catchment needs fast prediction methods due to short lead-times in rain prediction. As physically based models including pipe networks and surface flow are usually too slow for a real-time prediction, machine learning approaches could be used as a substitute. Such a machine learning approach based on artificial neural networks (ANN) was developed and tested in a prior study. The prediction model reads in time series of rainfall predictions and gives spatially distributed maximum water levels for this rain events within seconds. The database for the ANN training is generated with the physically based 1D/2D hydrodynamic pipe flow and surface model HYSTEM EXTRAN 2D (HE2D). To account for a variety of cases, a rainfall event catalog was built from the rainfall stations within 128 km radius from the study location, which served as an input for both HE2D and the ANN model. These events are of different durations, intensities and return periods, and their transferability to the study location is ensured by a regional frequency analysis. The aim of the present study is to investigate the uncertainty of pluvial flood prediction using an anonymous urban sub-catchment in the city of Hanover as test case. The underlying assumption of the study is that the most important source of uncertainty is due to the forecast of the storm events. An ensemble approach is used to account for uncertainty. The ANN is used for flood predictions, as the fast computation time makes an ensemble approach feasible. A K-Nearest Neighbour (KNN) model is used to select an ensemble of equivalent rain events from the database. Different metrics to quantify the rain events are compared. The ensemble of rain events generated with the KNN model is used as input for the ANN model. For testing the reliability of the ANN, the ensemble of dynamic water heights is compared to the reference results of the HE2D model. The spread of the maximum water level is investigated as a measure for prediction for the uncertainty of the forecast model.",
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T2 - 29th European Safety and Reliability Conference, ESREL 2019

AU - Berkhahn, Simon

AU - Sämann, Robert

AU - Shehu, Bora

AU - Neuweiler, Insa

AU - Haberlandt, Uwe

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