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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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 |
work_keys_str_mv |
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