Disaggregation Model: A Novel Methodology to Estimate Customers’ Profiles in a Low-Voltage Distribution Grid Equipped with Smart Meters

Author:

Milis Guilherme Ramos12,Gay Christophe2,Alvarez-Herault Marie-Cécile1ORCID,Caire Raphaël1ORCID

Affiliation:

1. Grenoble Electrical Engineering Laboratory (G2Elab), CNRS, University Grenoble Alpes, 38000 Grenoble, France

2. Enedis, 92400 Courbevoie, France

Abstract

In the context of increasingly necessary energy transition, the precise modeling of profiles for low-voltage (LV) network consumers is crucial to enhance hosting capacity. Typically, load curves for these consumers are estimated through measurement campaigns conducted by Distribution System Operators (DSOs) for a representative subset of customers or through the aggregation of load curves from household appliances within a residence. With the instrumentation of smart meters becoming more common, a new approach to modeling profiles for residential customers is proposed to make the most of the measurements from these meters. The disaggregation model estimates the load profile of customers on a low-voltage network by disaggregating the load curve measured at the secondary substation level. By utilizing only the maximum power measured by Linky smart meters, along with the load curve of the secondary substation, this model can estimate the daily profile of customers. For 48 secondary substations in our dataset, the model obtained an average symmetric mean average percentage error (SMAPE) error of 4.91% in reconstructing the load curve of the secondary substation from the curves disaggregated by the model. This methodology can allow for an estimation of the daily consumption behaviors of the low-voltage customers. In this way, we can safely envision solutions that enhance the grid hosting capacity.

Funder

Enedis

MIAI Institute: ANRT CIFRE

ANR project 3IA MIAI@Grenoble Alpes

Publisher

MDPI AG

Reference53 articles.

1. European Commission (2021). ‘Fit for 55’: Delivering the EU’s 2030 Climate Target on the Way to Climate Neutrality, European Commission. Communication from the Commission to the European Parliament, the European Council, the Council, the European Economic and Social Committee and the Committee of the Regions.

2. Open Data Enedis (2024, February 04). Enedis. Available online: https://data.enedis.fr/pages/accueil.

3. Consommation d’énergie par Usage du Résidentiel (2024, February 04). Données Et Études Statistiques Pour Le Changement Climatique, L’énergie, L’environnement, Le Logement et Les Transports. Available online: https://www.statistiques.developpement-durable.gouv.fr/consommation-denergie-par-usage-du-residentiel.

4. A comprehensive assessment of PV hosting capacity on Low-Voltage distribution systems;Torquato;IEEE Trans. Power Deliv.,2018

5. Saad, S.N.M., and Van Der Weijde, A.H. (2019). Evaluating the Potential of Hosting Capacity Enhancement Using Integrated Grid Planning modeling Methods. Energies, 12.

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