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Communication Dans Un Congrès Année : 2018

Mixture of Non-homogeneous Hidden Markov Models for Clustering and Prediction of Water Consumption Time Series

Résumé

In the domain of water, companies are deploying innovative infrastructures to instrument buildings with smart meters that collect in particular consumption readings with a fine granularity. Advanced analytics are investigated on these massive and complex data to address different objectives e.g., water consumption forecasting, water leak detection and consumption behavior analysis. This paper is an extension of a previous study aiming to model the dynamics of water consumption time series issued from smart meters in order to predict the future consumption behaviors. We propose a mixture of non-homogeneous hidden Markov models (MixNHMM) to cluster the Consumption behavior series in appropriate groups, which share the same transition dynamics, and to forecast the future behaviors in each group of consumers separately. The proposed methodology is applied on a real data gathered during one year and provided by a water utility in France. The experimentation results demonstrate the effectiveness of the proposed approach for the forecasting task. In addition, the clustering capability of the proposed method is confirmed using numeric metrics and visualization.

Domaines

Autre
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Dates et versions

hal-01891349 , version 1 (09-10-2018)

Identifiants

  • HAL Id : hal-01891349 , version 1

Citer

Milad Leyli-Abadi, Allou Same, Latifa Oukhellou, Nicolas Cheifetz, Pierre Mandel, et al.. Mixture of Non-homogeneous Hidden Markov Models for Clustering and Prediction of Water Consumption Time Series. IEEE IJCNN'18, IEEE International Joint Conference on Neural Networks, Jul 2018, Rio de Janeiro, France. 8p. ⟨hal-01891349⟩
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