Implications of Experiment Set-Ups for Residential Water End-Use Classification

With an increasing need for secured water supply, a better understanding of the water consumption behavior is beneficial. This can be achieved through end-use classification, i.e., identifying end-uses such as toilets, showers or dishwashers from water consumption data. Previously, both supervised a...

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Main Authors: Nora Gourmelon, Siming Bayer, Michael Mayle, Guy Bach, Christian Bebber, Christophe Munck, Christoph Sosna, Andreas Maier
Format: Article
Language:English
Published: MDPI AG 2021-01-01
Series:Water
Subjects:
Online Access:https://www.mdpi.com/2073-4441/13/2/236
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spelling doaj-2c3b763e1f6a471ca49d7c085f8c93e12021-01-20T00:04:26ZengMDPI AGWater2073-44412021-01-011323623610.3390/w13020236Implications of Experiment Set-Ups for Residential Water End-Use ClassificationNora Gourmelon0Siming Bayer1Michael Mayle2Guy Bach3Christian Bebber4Christophe Munck5Christoph Sosna6Andreas Maier7Pattern Recognition Lab, Friedrich-Alexander-Universität Erlangen-Nürnberg, Martensstraße 3, 91058 Erlangen, GermanyPattern Recognition Lab, Friedrich-Alexander-Universität Erlangen-Nürnberg, Martensstraße 3, 91058 Erlangen, GermanyDiehl Metering GmbH, Industriestraße 13, 91522 Ansbach, GermanyDiehl Metering SAS, 67 Rue du Rhone, 68300 Saint-Louis, FranceDiehl Metering SAS, 67 Rue du Rhone, 68300 Saint-Louis, FranceDiehl Metering SAS, 67 Rue du Rhone, 68300 Saint-Louis, FranceDiehl Metering GmbH, Donaustraße 120, 90451 Nuremberg, GermanyPattern Recognition Lab, Friedrich-Alexander-Universität Erlangen-Nürnberg, Martensstraße 3, 91058 Erlangen, GermanyWith an increasing need for secured water supply, a better understanding of the water consumption behavior is beneficial. This can be achieved through end-use classification, i.e., identifying end-uses such as toilets, showers or dishwashers from water consumption data. Previously, both supervised and unsupervised machine learning (ML) techniques are employed, demonstrating accurate classification results on particular datasets. However, a comprehensive comparison of ML techniques on a common dataset is still missing. Hence, in this study, we are aiming at a quantitative evaluation of various ML techniques on a common dataset. For this purpose, a stochastic water consumption simulation tool with high capability to model the real-world water consumption pattern is applied to generate residential data. Subsequently, unsupervised clustering methods, such as dynamic time warping, k-means, DBSCAN, OPTICS and Hough transform, are compared to supervised methods based on SVM. The quantitative results demonstrate that supervised approaches are capable to classify common residential end-uses (toilet, shower, faucet, dishwasher, washing machine, bathtub and mixed water-uses) with accuracies up to 0.99, whereas unsupervised methods fail to detect those consumption categories. In conclusion, clustering techniques alone are not suitable to separate end-use categories fully automatically. Hence, accurate labels are essential for the end-use classification of water events, where crowdsourcing and citizen science approaches pose feasible solutions for this purpose.https://www.mdpi.com/2073-4441/13/2/236end-use classificationsmart water metermachine learningresidential water
collection DOAJ
language English
format Article
sources DOAJ
author Nora Gourmelon
Siming Bayer
Michael Mayle
Guy Bach
Christian Bebber
Christophe Munck
Christoph Sosna
Andreas Maier
spellingShingle Nora Gourmelon
Siming Bayer
Michael Mayle
Guy Bach
Christian Bebber
Christophe Munck
Christoph Sosna
Andreas Maier
Implications of Experiment Set-Ups for Residential Water End-Use Classification
Water
end-use classification
smart water meter
machine learning
residential water
author_facet Nora Gourmelon
Siming Bayer
Michael Mayle
Guy Bach
Christian Bebber
Christophe Munck
Christoph Sosna
Andreas Maier
author_sort Nora Gourmelon
title Implications of Experiment Set-Ups for Residential Water End-Use Classification
title_short Implications of Experiment Set-Ups for Residential Water End-Use Classification
title_full Implications of Experiment Set-Ups for Residential Water End-Use Classification
title_fullStr Implications of Experiment Set-Ups for Residential Water End-Use Classification
title_full_unstemmed Implications of Experiment Set-Ups for Residential Water End-Use Classification
title_sort implications of experiment set-ups for residential water end-use classification
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2021-01-01
description With an increasing need for secured water supply, a better understanding of the water consumption behavior is beneficial. This can be achieved through end-use classification, i.e., identifying end-uses such as toilets, showers or dishwashers from water consumption data. Previously, both supervised and unsupervised machine learning (ML) techniques are employed, demonstrating accurate classification results on particular datasets. However, a comprehensive comparison of ML techniques on a common dataset is still missing. Hence, in this study, we are aiming at a quantitative evaluation of various ML techniques on a common dataset. For this purpose, a stochastic water consumption simulation tool with high capability to model the real-world water consumption pattern is applied to generate residential data. Subsequently, unsupervised clustering methods, such as dynamic time warping, k-means, DBSCAN, OPTICS and Hough transform, are compared to supervised methods based on SVM. The quantitative results demonstrate that supervised approaches are capable to classify common residential end-uses (toilet, shower, faucet, dishwasher, washing machine, bathtub and mixed water-uses) with accuracies up to 0.99, whereas unsupervised methods fail to detect those consumption categories. In conclusion, clustering techniques alone are not suitable to separate end-use categories fully automatically. Hence, accurate labels are essential for the end-use classification of water events, where crowdsourcing and citizen science approaches pose feasible solutions for this purpose.
topic end-use classification
smart water meter
machine learning
residential water
url https://www.mdpi.com/2073-4441/13/2/236
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