Optimizing the self-consumption of residential photovoltaic energy and quantification of the impact of production forecast uncertainties

An energy management system optimizes the self-consumption of a residential photovoltaic installation, and the performance losses due to production uncertainties are evaluated. The specific case under study is an individual home equipped with photovoltaic (PV) panels where only an Electric Water Hea...

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Main Authors: Loris Amabile, Delphine Bresch-Pietri, Gilbert El Hajje, Sébastien Labbé, Nicolas Petit
Format: Article
Language:English
Published: Elsevier 2021-05-01
Series:Advances in Applied Energy
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666792421000135
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spelling doaj-c7de5ebe67e04f8eafff537efd388ff02021-06-10T04:58:45ZengElsevierAdvances in Applied Energy2666-79242021-05-012100020Optimizing the self-consumption of residential photovoltaic energy and quantification of the impact of production forecast uncertaintiesLoris Amabile0Delphine Bresch-Pietri1Gilbert El Hajje2Sébastien Labbé3Nicolas Petit4Corresponding author.; EDF R&D, TREE, Avenue des Renardières - Ecuelles, Moret-Loing-et-Orvanne 77250 France; Centre Automatique et Systèmes, MINES ParisTech, PSL, 60 bd Saint-Michel, Paris 75006 FranceCentre Automatique et Systèmes, MINES ParisTech, PSL, 60 bd Saint-Michel, Paris 75006 FranceEDF R&D, TREE, Avenue des Renardières - Ecuelles, Moret-Loing-et-Orvanne 77250 FranceEDF R&D, TREE, Avenue des Renardières - Ecuelles, Moret-Loing-et-Orvanne 77250 FranceCentre Automatique et Systèmes, MINES ParisTech, PSL, 60 bd Saint-Michel, Paris 75006 FranceAn energy management system optimizes the self-consumption of a residential photovoltaic installation, and the performance losses due to production uncertainties are evaluated. The specific case under study is an individual home equipped with photovoltaic (PV) panels where only an Electric Water Heater (EWH) is manipulated, and the rest of the appliances represent a fixed load. By formulating the problem of maximizing self-consumption as an unconstrained optimization problem, a novel and computationally efficient optimization algorithm has been proposed. The next step was to numerically evaluate the performance of this EWH management strategy under various PV power production scenarios, generated through a presented methodology. The reference baseline is a rule-based controller using a most likely forecast of PV production. Simulations performed in Dymola over 10 months demonstrate that, at a 30-minute timestep, the impact of a “perfect” PV production forecast is negligible compared with the impact of the choice of the control algorithm. Besides, a most likely forecast is good enough for the proposed algorithm to reach high self-consumption levels. Indeed, although the proposed optimization based on a most likely forecast yields an increase of 10 points of self-consumption compared to the baseline, only an additional 2 points of increase can be reached using “perfect” production information.http://www.sciencedirect.com/science/article/pii/S2666792421000135Intelligent control of power systemsOptimal operation and control of power systemsSmart gridsPV power production forecastsMicrogrid optimal controlDemand response
collection DOAJ
language English
format Article
sources DOAJ
author Loris Amabile
Delphine Bresch-Pietri
Gilbert El Hajje
Sébastien Labbé
Nicolas Petit
spellingShingle Loris Amabile
Delphine Bresch-Pietri
Gilbert El Hajje
Sébastien Labbé
Nicolas Petit
Optimizing the self-consumption of residential photovoltaic energy and quantification of the impact of production forecast uncertainties
Advances in Applied Energy
Intelligent control of power systems
Optimal operation and control of power systems
Smart grids
PV power production forecasts
Microgrid optimal control
Demand response
author_facet Loris Amabile
Delphine Bresch-Pietri
Gilbert El Hajje
Sébastien Labbé
Nicolas Petit
author_sort Loris Amabile
title Optimizing the self-consumption of residential photovoltaic energy and quantification of the impact of production forecast uncertainties
title_short Optimizing the self-consumption of residential photovoltaic energy and quantification of the impact of production forecast uncertainties
title_full Optimizing the self-consumption of residential photovoltaic energy and quantification of the impact of production forecast uncertainties
title_fullStr Optimizing the self-consumption of residential photovoltaic energy and quantification of the impact of production forecast uncertainties
title_full_unstemmed Optimizing the self-consumption of residential photovoltaic energy and quantification of the impact of production forecast uncertainties
title_sort optimizing the self-consumption of residential photovoltaic energy and quantification of the impact of production forecast uncertainties
publisher Elsevier
series Advances in Applied Energy
issn 2666-7924
publishDate 2021-05-01
description An energy management system optimizes the self-consumption of a residential photovoltaic installation, and the performance losses due to production uncertainties are evaluated. The specific case under study is an individual home equipped with photovoltaic (PV) panels where only an Electric Water Heater (EWH) is manipulated, and the rest of the appliances represent a fixed load. By formulating the problem of maximizing self-consumption as an unconstrained optimization problem, a novel and computationally efficient optimization algorithm has been proposed. The next step was to numerically evaluate the performance of this EWH management strategy under various PV power production scenarios, generated through a presented methodology. The reference baseline is a rule-based controller using a most likely forecast of PV production. Simulations performed in Dymola over 10 months demonstrate that, at a 30-minute timestep, the impact of a “perfect” PV production forecast is negligible compared with the impact of the choice of the control algorithm. Besides, a most likely forecast is good enough for the proposed algorithm to reach high self-consumption levels. Indeed, although the proposed optimization based on a most likely forecast yields an increase of 10 points of self-consumption compared to the baseline, only an additional 2 points of increase can be reached using “perfect” production information.
topic Intelligent control of power systems
Optimal operation and control of power systems
Smart grids
PV power production forecasts
Microgrid optimal control
Demand response
url http://www.sciencedirect.com/science/article/pii/S2666792421000135
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