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2022
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Improved flood predictions by combining satellite observations, topographic information and rainfall spatial data using deep learning

Palmitessa, Rocco ; Hjermitslev, Oliver Gyldenberg ; Johansen, Heidi Egeberg ; Arnbjerg-Nielsen, Karsten ; Bauer-Gottwein, Peter ; Mikkelsen, Peter Steen ; Löwe, Roland
Presented at:
EGU General Assembly 2022

Type: Conference abstract for conference (Peer reviewed)

Status: Published     |    Year: 2022     |    DOI: https://doi.org/10.5194/egusphere-egu22-8823

 

Using deep learning to combine satellite observations, topographic information and rainfall spatial data for large-scale flood predictions

Palmitessa, R. ; Hjermitslev, O. G. ; Johansen, H. E. ; Arnbjerg-Nielsen, K. ; Bauer-Gottwein, P. ; Mikkelsen, P. S. ; Löwe, R.
Presented at:
IWA World Water Congress & Exhibition 2022

Type: Conference abstract for conference (Peer reviewed)

Status: Published     |    Year: 2022

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Using multi-event hydrologic and hydraulic signatures from water level sensors to diagnose locations of uncertainty in integrated urban drainage models used in living digital twins

Pedersen, A. N. ; Pedersen, J. W. ; Borup, M. ; Brink-Kjær, A. ; Christiansen, L. E. ; Mikkelsen, P. S.
in: Water Science and Technology, vol: 85, issue: 6, pages: 1981-1998

Type: Journal article (Peer reviewed)

Status: Published     |    Year: 2022     |    DOI: https://doi.org/10.2166/wst.2022.059

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Using weather radar to improve the prediction accuracy of LSTM neural networks for anomaly detection of water level measurements in UDS

Aarestrup, P. ; Mikkelsen, P. S.
Presented at:
12th Urban Drainage Modeling conference

Type: Conference abstract for conference (Peer reviewed)

Status: Published     |    Year: 2022

 

Water Sector Governance & Operations – the Danish Model

Mikkelsen, P.S. ; Hansen, S.F. ; Jacobsen, B.H. ; Holm, P.E.
Presented at:
IWA World Water Congress & Exhibition 2022

Type: Conference abstract for conference (Peer reviewed)

Status: Published     |    Year: 2022

2021
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A data-driven analysis of trace contaminants in wet-weather discharges

Mutzner, Lena ; Furrer, Viviane ; Castebrunet, Hélène ; Gernjak, Wolfgang ; Gromaire, Marie-Christine ; Matzinger, Andreas ; Mikkelsen, Peter Steen ; R. Selbig, William ; Vezzaro, Luca
Presented at:
15th International Conference on Urban Drainage

Type: Conference abstract for conference (Peer reviewed)

Status: Published     |    Year: 2021

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Approaches for unsupervised identification of data-driven models for flow forecasting in urban drainage systems

Jóhannesson, Ari ; Vezzaro, Luca ; Mikkelsen, Peter Steen ; Löwe, Roland
in: Journal of Hydroinformatics, vol: 23, issue: 6, pages: 1368–1381

Type: Journal article (Peer reviewed)

Status: Published     |    Year: 2021     |    DOI: https://doi.org/10.2166/hydro.2021.020

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Data assimilation in hydrodynamic models for system-wide soft sensing and sensor validation for urban drainage tunnels

Palmitessa, Rocco ; Mikkelsen, Peter Steen ; Law, Adrian W. K. ; Borup, Morten
in: Journal of Hydroinformatics, vol: 23, issue: 3, pages: 438–452

Type: Journal article (Peer reviewed)

Status: Published     |    Year: 2021     |    DOI: https://doi.org/10.2166/hydro.2020.074

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Feasibility of using smart meter water consumption data and in-sewer flow observations for sewer system analysis: a case study

Lund, Nadia Schou Vorndran ; Kirstein, Jonas Kjeld ; Madsen, H. ; Mark, O. ; Mikkelsen, Peter Steen ; Borup, Morten
in: Journal of Hydroinformatics, vol: 23, issue: 4

Type: Journal article (Peer reviewed)

Status: Published     |    Year: 2021     |    DOI: https://doi.org/10.2166/hydro.2021.166

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Improved transparency with digital twins of urban drainage systems

Pedersen, A. N. ; Borup, M. ; Brink-Kjær, A. ; Christiansen, L. E. ; Mikkelsen, P. S.
Presented at:
Singapore International Water Week 2021

Type: Conference abstract for conference (Peer reviewed)

Status: Published     |    Year: 2021


https://www.staff.dtu.dk/psmi/publications?fr=11&id=2718&mr=10&peer=1&ptype=peer&qt=DtuPublicationQuery
27 APRIL 2024