| Issue |
ITM Web Conf.
Volume 81, 2026
International Conference on Emerging Technologies for Multidisciplinary Innovation and Sustainability (ETMIS 2025)
|
|
|---|---|---|
| Article Number | 01027 | |
| Number of page(s) | 15 | |
| DOI | https://doi.org/10.1051/itmconf/20268101027 | |
| Published online | 23 January 2026 | |
A Comprehensive Review of Machine Learning Techniques for Optimized Urban Water Systems (UWSs)
1 The Sadhu Vaswani Institute of Management Studies (SVIMS) for Girls, Pune
2 JSPM's Rajarshi Shahu College of Engineering Pune
3 Symbiosis Institute of Management Studies, Symbiosis International University, Pune
* Corresponding author: This email address is being protected from spambots. You need JavaScript enabled to view it.
Urban Water Systems (UWSs) across the world are under mounting pressure as cities continue to expand, infrastructures age, and climate change introduces new levels of uncertainty into water availability and distribution. The traditional tools and hydraulic models that once guided urban water management are increasingly unable to cope with the highly dynamic, non-linear behavior of today's networks. These limitations have prompted a shift toward more adaptive and intelligent approaches capable of handling complex data environments. This review explores how Machine Learning (ML) is emerging as a powerful instrument for addressing these modern challenges. By examining research published largely in the past five years, the paper provides a structured overview of how ML has been applied to major UWS functions— such as forecasting future water demand, identifying leaks and pipe failures, monitoring water quality, and optimizing day-to-day system operations. A diverse range of techniques is discussed, from established learning models like Random Forests (RF) and Support Vector Machines (SVM), to more sophisticated deep learning methods including Long Short-Term Memory (LSTM) networks and Convolutional Neural Networks (CNNs). Across multiple studies, ML consistently surpasses traditional modelling approaches by learning intricate spatial and temporal relationships that conventional tools fail to capture. Certain algorithms have demonstrated notable advantages—for example, LSTM networks excel in predicting time-dependent water usage, while CNNs show strong performance in analyzing acoustic signals for leak detection. Beyond summarizing existing applications, the review highlights emerging themes and persistent gaps. Key concerns include the uneven availability and reliability of operational datasets, growing demands for data privacy and cybersecurity, and the ongoing challenge of interpreting decisions made by complex deep learning models. Additionally, hybrid frameworks, which combine the strengths of data-driven ML models with physically-based hydraulic models, are gaining interest as a promising direction for future research. Ultimately, the paper emphasizes the need for UWSs to evolve towards intelligent, autonomous, and sustainable systems. By integrating ML into standard practice—supported by robust data collection, careful preprocessing, and informed model selection—urban areas can significantly improve resource allocation, reduce water loss, and enhance overall resilience. This study demonstrates how data-driven strategies, when aligned with the realities of urban infrastructure, can play a pivotal role in shaping the next generation of efficient and sustainable urban water management.
Key words: Urban water management / Machine learning algorithms / Optimization / Resource utilization / Sustainability
© The Authors, published by EDP Sciences, 2026
This is an Open Access article distributed under the terms of the Creative Commons Attribution License 4.0, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
Current usage metrics show cumulative count of Article Views (full-text article views including HTML views, PDF and ePub downloads, according to the available data) and Abstracts Views on Vision4Press platform.
Data correspond to usage on the plateform after 2015. The current usage metrics is available 48-96 hours after online publication and is updated daily on week days.
Initial download of the metrics may take a while.

