Leakage Prediction in Real-World Water Distribution Networks Using Multi-Objective Multi-Gene Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8729
- @Article{Hayslep:2025:TELO,
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author = "Matthew Hayslep and Edward Keedwell and
Raziyeh Farmani",
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title = "Leakage Prediction in Real-World Water Distribution
Networks Using Multi-Objective Multi-Gene Genetic
Programming",
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journal = "ACM Transactions on Evolutionary Learning and
Optimization",
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year = "2025",
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volume = "5",
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number = "4",
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articleno = "29",
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month = dec,
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keywords = "genetic algorithms, genetic programming,
strongly-typed, STGP, minimum night flow,
multi-objective optimization, MOGP, multiple-instance
regression",
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ISSN = "2688-299X",
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URL = "
https://doi.org/10.1145/3729431",
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DOI = "
10.1145/3729431",
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size = "32 pages",
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abstract = "Understanding leakage is an important challenge within
the water sector to minimise waste, energy use and
carbon emissions in water distribution networks.
Leakage is usually approximated as minimum night flow
for each District Metred Area (DMA). However, not all
DMAs have instruments to monitor leakage directly or
the main dynamic factors that contribute to it.
Therefore, here the leakage is estimated by using the
recorded features of its pipes, making use of readily
available asset data collected routinely by water
companies. The problem is interpreted as a feature
construction task for multiple-instance regression and
uses a multi-objective multi-gene strongly typed
genetic programming approach to create a set of
features that are used by a linear regression model to
estimate the average leakage in DMAs. The methodology
is applied to a dataset of a large supply area for a
water company with 790 DMAs, and the results are
compared to a previous work which used
human-constructed features. A non-dominated analysis is
conducted on the appearance of particular features
across multiple runs, and Shapley values are used to
understand the impact and importance of each feature.
The results show better performance with significantly
fewer and less complex features. In addition, novel
features are found that were not part of the
human-constructed features. This article contributes to
the wide body of application-focused literature that
continues to demonstrate the effectiveness and
creativity of digital evolution for real-world
problems.",
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notes = "https://dlnext.acm.org/journal/telo",
- }
Genetic Programming entries for
Matthew Hayslep
Ed Keedwell
Raziyeh Farmani
Citations