Prediction of Water Utility Performance: The Case of the Water Efficiency Rate

This paper deals with the development of a decision-aiding model for predicting, in an ex-ante way, the effects of a mix of actions on an asset and on its operation. The objective is then to define a compromised policy between costs and performance improvements. We investigate the use of multiple re...

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Main Authors: Amir Nafi, Jonathan Brans
Format: Article
Language:English
Published: MDPI AG 2018-10-01
Series:Water
Subjects:
ANN
Online Access:http://www.mdpi.com/2073-4441/10/10/1443
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spelling doaj-2d9e3461ca5e4903886486a389644f682020-11-25T00:46:48ZengMDPI AGWater2073-44412018-10-011010144310.3390/w10101443w10101443Prediction of Water Utility Performance: The Case of the Water Efficiency RateAmir Nafi0Jonathan Brans1Unité Mixte de Recherche GEStion territoriale de l’Eau et de l’Environnement (GESTE) IRSTEA-ENGEES, 1 quai Koch, 67070 Strasbourg CEDEX, FranceUnité Mixte de Recherche GEStion territoriale de l’Eau et de l’Environnement (GESTE) IRSTEA-ENGEES, 1 quai Koch, 67070 Strasbourg CEDEX, FranceThis paper deals with the development of a decision-aiding model for predicting, in an ex-ante way, the effects of a mix of actions on an asset and on its operation. The objective is then to define a compromised policy between costs and performance improvements. We investigate the use of multiple regression analysis (MRA) and an artificial neural network (ANN) to establish causal relationships between the network efficiency rate, and a set of explanatory variables on one hand, and potential water loss management actions such as leak detection, maintenance and asset renewal, on the other hand. The originality of our approach is in developing a two-step ex-ante model for predicting the efficiency rate involving low and high level explanatory variables in a context of unavailability of data at the scale of the water utility. The first step exploits a national French database «SISPEA» (Système d’Information d’information sur les Services Publics d’Eau et d’Assainissement) to calibrate a general prediction model that establishes a correlation between efficiency (output) and other performance indicators (inputs). The second step involves the utility manager to build a causal model between endogenous and exogenous variables of a specific water network (low level) and performance indicators considered as inputs for the previous step (high level). Uncertainty is taken into account by Monte Carlo simulations. An application of our decision model on a water utility in the southeast of France is provided as a case study.http://www.mdpi.com/2073-4441/10/10/1443ANNMonte Carlopredictionperformanceregressionratioscenariowater utility
collection DOAJ
language English
format Article
sources DOAJ
author Amir Nafi
Jonathan Brans
spellingShingle Amir Nafi
Jonathan Brans
Prediction of Water Utility Performance: The Case of the Water Efficiency Rate
Water
ANN
Monte Carlo
prediction
performance
regression
ratio
scenario
water utility
author_facet Amir Nafi
Jonathan Brans
author_sort Amir Nafi
title Prediction of Water Utility Performance: The Case of the Water Efficiency Rate
title_short Prediction of Water Utility Performance: The Case of the Water Efficiency Rate
title_full Prediction of Water Utility Performance: The Case of the Water Efficiency Rate
title_fullStr Prediction of Water Utility Performance: The Case of the Water Efficiency Rate
title_full_unstemmed Prediction of Water Utility Performance: The Case of the Water Efficiency Rate
title_sort prediction of water utility performance: the case of the water efficiency rate
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2018-10-01
description This paper deals with the development of a decision-aiding model for predicting, in an ex-ante way, the effects of a mix of actions on an asset and on its operation. The objective is then to define a compromised policy between costs and performance improvements. We investigate the use of multiple regression analysis (MRA) and an artificial neural network (ANN) to establish causal relationships between the network efficiency rate, and a set of explanatory variables on one hand, and potential water loss management actions such as leak detection, maintenance and asset renewal, on the other hand. The originality of our approach is in developing a two-step ex-ante model for predicting the efficiency rate involving low and high level explanatory variables in a context of unavailability of data at the scale of the water utility. The first step exploits a national French database «SISPEA» (Système d’Information d’information sur les Services Publics d’Eau et d’Assainissement) to calibrate a general prediction model that establishes a correlation between efficiency (output) and other performance indicators (inputs). The second step involves the utility manager to build a causal model between endogenous and exogenous variables of a specific water network (low level) and performance indicators considered as inputs for the previous step (high level). Uncertainty is taken into account by Monte Carlo simulations. An application of our decision model on a water utility in the southeast of France is provided as a case study.
topic ANN
Monte Carlo
prediction
performance
regression
ratio
scenario
water utility
url http://www.mdpi.com/2073-4441/10/10/1443
work_keys_str_mv AT amirnafi predictionofwaterutilityperformancethecaseofthewaterefficiencyrate
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