A Short-Term Data Based Water Consumption Prediction Approach

A smart water network consists of a large number of devices that measure a wide range of parameters present in distribution networks in an automatic and continuous way. Among these data, you can find the flow, pressure, or totalizer measurements that, when processed with appropriate algorithms, allo...

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Main Authors: Rafael Benítez, Carmen Ortiz-Caraballo, Juan Carlos Preciado, José M. Conejero, Fernando Sánchez Figueroa, Alvaro Rubio-Largo
Format: Article
Language:English
Published: MDPI AG 2019-06-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/12/12/2359
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spelling doaj-2b5f28cde68040568b4fc48dd9c4b56e2020-11-25T00:25:38ZengMDPI AGEnergies1996-10732019-06-011212235910.3390/en12122359en12122359A Short-Term Data Based Water Consumption Prediction ApproachRafael Benítez0Carmen Ortiz-Caraballo1Juan Carlos Preciado2José M. Conejero3Fernando Sánchez Figueroa4Alvaro Rubio-Largo5Departamento Matemáticas para la economía y la empresa, Universidad de Valencia, 46022 Valencia, SpainDepartamento de Matemáticas, Universidad de Extremadura, 10071 Cáceres, SpainDepartamento Ingeniería Sistemas Informáticos y Telemáticos, Universidad de Extremadura, 10071 Cáceres, SpainDepartamento Ingeniería Sistemas Informáticos y Telemáticos, Universidad de Extremadura, 10071 Cáceres, SpainHomeria Open Solutions, Cáceres, 10071 Cáceres, SpainNOVA Information Management School, Universidade Nova de Lisboa, 1070-312 Lisbon, PortugalA smart water network consists of a large number of devices that measure a wide range of parameters present in distribution networks in an automatic and continuous way. Among these data, you can find the flow, pressure, or totalizer measurements that, when processed with appropriate algorithms, allow for leakage detection at an early stage. These algorithms are mainly based on water demand forecasting. Different approaches for the prediction of water demand are available in the literature. Although they present successful results at different levels, they have two main drawbacks: the inclusion of several seasonalities is quite cumbersome, and the fitting horizons are not very large. With the aim of solving these problems, we present the application of pattern similarity-based techniques to the water demand forecasting problem. The use of these techniques removes the need to determine the annual seasonality and, at the same time, extends the horizon of prediction to 24 h. The algorithm has been tested in the context of a real project for the detection and location of leaks at an early stage by means of demand forecasting, and good results were obtained, which are also presented in this paper.https://www.mdpi.com/1996-1073/12/12/2359waterforecastingpattern-basedmachine-learning
collection DOAJ
language English
format Article
sources DOAJ
author Rafael Benítez
Carmen Ortiz-Caraballo
Juan Carlos Preciado
José M. Conejero
Fernando Sánchez Figueroa
Alvaro Rubio-Largo
spellingShingle Rafael Benítez
Carmen Ortiz-Caraballo
Juan Carlos Preciado
José M. Conejero
Fernando Sánchez Figueroa
Alvaro Rubio-Largo
A Short-Term Data Based Water Consumption Prediction Approach
Energies
water
forecasting
pattern-based
machine-learning
author_facet Rafael Benítez
Carmen Ortiz-Caraballo
Juan Carlos Preciado
José M. Conejero
Fernando Sánchez Figueroa
Alvaro Rubio-Largo
author_sort Rafael Benítez
title A Short-Term Data Based Water Consumption Prediction Approach
title_short A Short-Term Data Based Water Consumption Prediction Approach
title_full A Short-Term Data Based Water Consumption Prediction Approach
title_fullStr A Short-Term Data Based Water Consumption Prediction Approach
title_full_unstemmed A Short-Term Data Based Water Consumption Prediction Approach
title_sort short-term data based water consumption prediction approach
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2019-06-01
description A smart water network consists of a large number of devices that measure a wide range of parameters present in distribution networks in an automatic and continuous way. Among these data, you can find the flow, pressure, or totalizer measurements that, when processed with appropriate algorithms, allow for leakage detection at an early stage. These algorithms are mainly based on water demand forecasting. Different approaches for the prediction of water demand are available in the literature. Although they present successful results at different levels, they have two main drawbacks: the inclusion of several seasonalities is quite cumbersome, and the fitting horizons are not very large. With the aim of solving these problems, we present the application of pattern similarity-based techniques to the water demand forecasting problem. The use of these techniques removes the need to determine the annual seasonality and, at the same time, extends the horizon of prediction to 24 h. The algorithm has been tested in the context of a real project for the detection and location of leaks at an early stage by means of demand forecasting, and good results were obtained, which are also presented in this paper.
topic water
forecasting
pattern-based
machine-learning
url https://www.mdpi.com/1996-1073/12/12/2359
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