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Assessing Supervised Machine Learning Practice in Urban Water Networks: A Critical Review of Methodological Transparency, Reproducibility and Reporting

Lookup NU author(s): Dr Manuel HerreraORCiD

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This work is licensed under a Creative Commons Attribution 4.0 International License (CC BY 4.0).


Abstract

In recent years, the advantages of machine learning (ML) have been clearly demonstrated in research on urban water infrastructure (UWI) and has been applied in a wide range of applications. This review critically assesses the current quality of ML implementations in UWI by examining more than 100 articles from the recent literature, with a particular focus on common pitfalls throughout the development process. Most reviewed articles placed strong emphasis on performance benchmarking but provided limited reporting on key ML methodology implementation and deployment. Only around one third of the reviewed articles documented essential tasks such as feature scaling or automatic hyperparameter optimisation, despite their importance for performance and generalisation. Additionally, fewer than 25% reported explainability and uncertainty quantification techniques, making reported performance gains difficult to explain or operationalise. Furthermore, the lack of standardised documentation makes the extraction of relevant information about the methods, workflows, and steps needed for reproducibility difficult. Together, these issues negatively affect the reproducibility and reduce comparison and trust in the developed approaches. This is particularly important, as trust and confidence in ML-based decisions are key requirements for successful transformation of research into practice. To address these issues, a methodological and reporting checklist is provided to guide the design and integration of ML applications in UWI throughout the development process and to highlight common pitfalls. The review and the checklist can support developers, technicians, and operators in future ML applications, helping to raise awareness on reproducible ML implementations in UWI applications.


Publication metadata

Author(s): Oberascher M, Brentan BM, Menapace A, Herrera M, Fu G, Taormina R, Sitzenfei R

Publication type: Article

Publication status: Published

Journal: Water Research X

Year: 2026

Pages: Epub ahead of print

Online publication date: 11/06/2026

Acceptance date: 10/06/2026

Date deposited: 11/06/2026

ISSN (print): 2589-9147

ISSN (electronic): 2590-1451

Publisher: Elsevier BV

URL: https://doi.org/10.1016/j.wroa.2026.100569

DOI: 10.1016/j.wroa.2026.100569

Data Access Statement: The data that has been used is confidential


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Funding

Funder referenceFunder name
DECIRE-WATER project that has received funding from the European Union’s Horizon Europe research and innovation programme under grant agreement No. 101182154
Federal Ministry of Agriculture and Forestry, Climate and Environmental Protection, Regions and Water Management (BMLUK) (Austria) under project number C300198

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