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  4. Digital-twin-based management of sewer systems: research strategy for the KaSyTwin project
 
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Digital-twin-based management of sewer systems: research strategy for the KaSyTwin project

Citation Link: https://doi.org/10.15480/882.14594
Publikationstyp
Journal Article
Date Issued
2025-01-22
Sprache
English
Author(s)
Hartmann, Sabine  
Valles, Raquel  
Schmitt, Annette  
Al-Zuriqat, Thamer 
Digitales und autonomes Bauen B-1  
Dragos, Kosmas  
Digitales und autonomes Bauen B-1  
Gölzhäuser, Peter
Jung, Jan Thomas
Villinger, Georg  
Varela Rojas, Diana
Bergmann, Matthias  
Pullmann, Torben  
Heimer, Dirk
Stahl, Christoph  
Stollewerk, Axel
Hilgers, Michael
Jansen, Eva
Schoenebeck, Brigitte
Buchholz, Oliver
Papadakis, Ioannis
Merkle, Dominik  
Jäkel Jan-Iwo  
Mackenbach, Sven  
Klemt-Albert, Katharina  
Reiterer, Alexander  
Smarsly, Kay  
Digitales und autonomes Bauen B-1  
TORE-DOI
10.15480/882.14594
TORE-URI
https://hdl.handle.net/11420/54214
Journal
Water  
Volume
17
Issue
3
Article Number
299
Citation
Water 17 (3): 299 (2025)
Publisher DOI
10.3390/w17030299
Scopus ID
2-s2.0-85217659903
Publisher
Multidisciplinary Digital Publishing Institute
Sewer infrastructure is vital for flood prevention, environmental protection, and public health. As part of sewer infrastructure, sewer systems are prone to degradation. Traditional maintenance methods for sewer systems are largely manual and reactive and rely on inconsistent data, leading to inefficient maintenance. The KaSyTwin research project addresses the urgent need for efficient and resilient sewer system management methods in Germany, aiming to develop a methodology for the semi-automated development and utilization of digital twins of sewer systems to enhance data availability and operational resilience. Using advanced multi-sensor robotic platforms equipped with scanning and imaging systems, i.e., laser scanners and cameras, as well as artificial intelligence (AI), the KaSyTwin research project focuses on generating digital twin-enabled representations of sewer systems in real time. As a project report, this work outlines the research framework and proposed methodologies in the KaSyTwin research project. Digital twins of sewer systems integrated with AI technologies are expected to facilitate proactive maintenance, resilience forecasting against extreme weather events, and real-time damage detection. Furthermore, the KaSyTwin research project aspires to advance the digital management of sewer systems, ensuring long-term functionality and public welfare via on-demand structural health monitoring and non-destructive testing.
Subjects
sewer infrastructure | sewer systems | proactivemaintenance | resilience forecasting | damage detection | linked data | digital twin | digital model | building information modeling (BIM) | multi-sensor platforms
DDC Class
628: Sanitary; Municipal
624: Civil Engineering, Environmental Engineering
620: Engineering
006: Special computer methods
363.7: Environmental Problems
Publication version
publishedVersion
Lizenz
https://creativecommons.org/licenses/by/4.0/
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water-17-00299-v2.pdf

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