Optimal operations for hydrogen-based energy storage systems in wind farms via model predictive control

Efficient energy production and consumption are fundamental points for reducing carbon emissions that influence climate change. Alternative resources, such as renewable energy sources (RESs), used in electricity grids, could reduce the environmental impact. Since RESs are inherently unreliable, duri...

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Published in:International Journal of Hydrogen Energy
Main Authors: Abdelghany M. B., Shehzad M. F., Liuzza D., Mariani V., Glielmo L.
Other Authors: Abdelghany, M. B., Shehzad, M. F., Liuzza, D., Mariani, V., Glielmo, L.
Format: Article in Journal/Newspaper
Language:English
Published: 2021
Subjects:
Online Access:https://hdl.handle.net/20.500.12079/62541
https://doi.org/10.1016/j.ijhydene.2021.01.064
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spelling ftenea:oai:iris.enea.it:20.500.12079/62541 2024-04-21T08:08:19+00:00 Optimal operations for hydrogen-based energy storage systems in wind farms via model predictive control Abdelghany M. B. Shehzad M. F. Liuzza D. Mariani V. Glielmo L. Abdelghany, M. B. Shehzad, M. F. Liuzza, D. Mariani, V. Glielmo, L. 2021 https://hdl.handle.net/20.500.12079/62541 https://doi.org/10.1016/j.ijhydene.2021.01.064 eng eng volume:46 issue:57 firstpage:29297 lastpage:29313 numberofpages:17 journal:INTERNATIONAL JOURNAL OF HYDROGEN ENERGY info:eu-repo/grantAgreement/EC/H2020/779469 http://hdl.handle.net/20.500.12079/62541 doi:10.1016/j.ijhydene.2021.01.064 info:eu-repo/semantics/altIdentifier/scopus/2-s2.0-85101525977 Energy management Energy storage systems Grid-connected wind farms Hydrogen conversion Mixed logic dynamic Model predictive control info:eu-repo/semantics/article 2021 ftenea https://doi.org/20.500.12079/6254110.1016/j.ijhydene.2021.01.064 2024-03-27T15:08:03Z Efficient energy production and consumption are fundamental points for reducing carbon emissions that influence climate change. Alternative resources, such as renewable energy sources (RESs), used in electricity grids, could reduce the environmental impact. Since RESs are inherently unreliable, during the last decades the scientific community addressed research efforts to their integration with the main grid by means of properly designed energy storage systems (ESSs). In order to highlight the best performance from these hybrid systems, proper design and operations are essential. The purpose of this paper is to present a so-called model predictive controller (MPC) for the optimal operations of grid-connected wind farms with hydrogen-based ESSs and local loads. Such MPC has been designed to take into account the operating and economical costs of the ESS, the local load demand and the participation to the electricity market, and further it enforces the fulfillment of the physical and the system's dynamics constraints. The dynamics of the hydrogen-based ESS have been modeled by means of the mixed-logic dynamic (MLD) framework in order to capture different behaviors according to the possible operating modes. The purpose is to provide a controller able to cope both with all the main physical and operating constraints of a hydrogen-based storage system, including the switching among different modes such as ON, OFF, STAND-BY and, at the same time, reduce the management costs and increase the equipment lifesaving. The case study for this paper is a plant under development in the north Norway. Numerical analysis on the related plant data shows the effectiveness of the proposed strategy, which manages the plant and commits the equipment so as to preserve the given constraints and save them from unnecessary commutation cycles. Article in Journal/Newspaper North Norway ENEA-IRIS Open Archive (Agenzia nazionale per le nuove tecnologie, l'energia e lo sviluppo economico sostenibile) International Journal of Hydrogen Energy 46 57 29297 29313
institution Open Polar
collection ENEA-IRIS Open Archive (Agenzia nazionale per le nuove tecnologie, l'energia e lo sviluppo economico sostenibile)
op_collection_id ftenea
language English
topic Energy management
Energy storage systems
Grid-connected wind farms
Hydrogen conversion
Mixed logic dynamic
Model predictive control
spellingShingle Energy management
Energy storage systems
Grid-connected wind farms
Hydrogen conversion
Mixed logic dynamic
Model predictive control
Abdelghany M. B.
Shehzad M. F.
Liuzza D.
Mariani V.
Glielmo L.
Optimal operations for hydrogen-based energy storage systems in wind farms via model predictive control
topic_facet Energy management
Energy storage systems
Grid-connected wind farms
Hydrogen conversion
Mixed logic dynamic
Model predictive control
description Efficient energy production and consumption are fundamental points for reducing carbon emissions that influence climate change. Alternative resources, such as renewable energy sources (RESs), used in electricity grids, could reduce the environmental impact. Since RESs are inherently unreliable, during the last decades the scientific community addressed research efforts to their integration with the main grid by means of properly designed energy storage systems (ESSs). In order to highlight the best performance from these hybrid systems, proper design and operations are essential. The purpose of this paper is to present a so-called model predictive controller (MPC) for the optimal operations of grid-connected wind farms with hydrogen-based ESSs and local loads. Such MPC has been designed to take into account the operating and economical costs of the ESS, the local load demand and the participation to the electricity market, and further it enforces the fulfillment of the physical and the system's dynamics constraints. The dynamics of the hydrogen-based ESS have been modeled by means of the mixed-logic dynamic (MLD) framework in order to capture different behaviors according to the possible operating modes. The purpose is to provide a controller able to cope both with all the main physical and operating constraints of a hydrogen-based storage system, including the switching among different modes such as ON, OFF, STAND-BY and, at the same time, reduce the management costs and increase the equipment lifesaving. The case study for this paper is a plant under development in the north Norway. Numerical analysis on the related plant data shows the effectiveness of the proposed strategy, which manages the plant and commits the equipment so as to preserve the given constraints and save them from unnecessary commutation cycles.
author2 Abdelghany, M. B.
Shehzad, M. F.
Liuzza, D.
Mariani, V.
Glielmo, L.
format Article in Journal/Newspaper
author Abdelghany M. B.
Shehzad M. F.
Liuzza D.
Mariani V.
Glielmo L.
author_facet Abdelghany M. B.
Shehzad M. F.
Liuzza D.
Mariani V.
Glielmo L.
author_sort Abdelghany M. B.
title Optimal operations for hydrogen-based energy storage systems in wind farms via model predictive control
title_short Optimal operations for hydrogen-based energy storage systems in wind farms via model predictive control
title_full Optimal operations for hydrogen-based energy storage systems in wind farms via model predictive control
title_fullStr Optimal operations for hydrogen-based energy storage systems in wind farms via model predictive control
title_full_unstemmed Optimal operations for hydrogen-based energy storage systems in wind farms via model predictive control
title_sort optimal operations for hydrogen-based energy storage systems in wind farms via model predictive control
publishDate 2021
url https://hdl.handle.net/20.500.12079/62541
https://doi.org/10.1016/j.ijhydene.2021.01.064
genre North Norway
genre_facet North Norway
op_relation volume:46
issue:57
firstpage:29297
lastpage:29313
numberofpages:17
journal:INTERNATIONAL JOURNAL OF HYDROGEN ENERGY
info:eu-repo/grantAgreement/EC/H2020/779469
http://hdl.handle.net/20.500.12079/62541
doi:10.1016/j.ijhydene.2021.01.064
info:eu-repo/semantics/altIdentifier/scopus/2-s2.0-85101525977
op_doi https://doi.org/20.500.12079/6254110.1016/j.ijhydene.2021.01.064
container_title International Journal of Hydrogen Energy
container_volume 46
container_issue 57
container_start_page 29297
op_container_end_page 29313
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