Detecting anomalies in water distribution networks using EPR modelling paradigm
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- @Article{Laucelli:2016:JoH,
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author = "Daniele Laucelli and Michele Romano and
Dragan Savic and Orazio Giustolisi",
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title = "Detecting anomalies in water distribution networks
using {EPR} modelling paradigm",
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journal = "Journal of Hydroinformatics",
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year = "2016",
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volume = "18",
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number = "3",
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month = "11 " # may,
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keywords = "genetic algorithms, genetic programming, data mining,
evolutionary polynomial regression, timely burst
detection, unreported bursts, water distribution
networks",
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ISSN = "1464-7141",
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DOI = "doi:10.2166/hydro.2015.113",
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abstract = "Sustainable management of water distribution networks
(WDNs) requires effective exploitation of available
data from pressure/flow devices. Water companies
collect a large amount of such data, which need to be
managed correctly and analysed effectively using
appropriate techniques. Furthermore, water companies
need to balance the data gathering and handling costs
with the benefits of extracting useful information.
Recent approaches implementing data mining techniques
for analysing pressure/flow data appear very promising,
because they can automate mundane tasks involved in
data analysis process and efficiently deal with sensor
data collected. Furthermore, they rely on empirical
observations of a WDN behaviour over time, allowing
reproducing/predicting possible future behaviour of the
network. This paper investigates the effectiveness of
the evolutionary polynomial regression (EPR) paradigm
to reproduce the behaviour of a WDN using on-line data
recorded by low-cost pressure/flow devices. Using data
from a real district metered area, the case study
presented shows that by using the EPR paradigm a model
can be built which enables the accurate reproduction
and prediction of the WDN behaviour over time and
detection of flow anomalies due to possible unreported
bursts or unknown increase of water withdrawal. Such an
EPR model might be integrated into an early warning
system to raise alarms when anomalies are detected.",
- }
Genetic Programming entries for
Daniele B Laucelli
Michele Romano
Dragan Savic
Orazio Giustolisi
Citations