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Data-Driven Energy Storage Scheduling to Minimise Peak Demand on Distribution Systems with PV Generation
Energies, Volume: 14, Issue: 12, Start page: 3453
Swansea University Authors: Eugenio Borghini, Cinzia Giannetti , James Flynn, Grazia Todeschini
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DOI (Published version): 10.3390/en14123453
Abstract
The growing adoption of decentralised renewable energy generation (such as solar photovoltaic panels and wind turbines) and low-carbon technologies will increase the strain experienced by the distribution networks in the near future. In such a scenario, energy storage is becoming a key alternative t...
Published in: | Energies |
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ISSN: | 1996-1073 |
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2021
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URI: | https://cronfa.swan.ac.uk/Record/cronfa57063 |
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2022-01-04T17:30:33.5696721 v2 57063 2021-06-08 Data-Driven Energy Storage Scheduling to Minimise Peak Demand on Distribution Systems with PV Generation f4f3adbe64cb98a2d80004d570ad786c Eugenio Borghini Eugenio Borghini true false a8d947a38cb58a8d2dfe6f50cb7eb1c6 0000-0003-0339-5872 Cinzia Giannetti Cinzia Giannetti true false 90788c8b9c1334834ba9cc37403ea471 James Flynn James Flynn true false c4ff9050b31bdec0e560b19bfb3b56d3 Grazia Todeschini Grazia Todeschini true false 2021-06-08 MECH The growing adoption of decentralised renewable energy generation (such as solar photovoltaic panels and wind turbines) and low-carbon technologies will increase the strain experienced by the distribution networks in the near future. In such a scenario, energy storage is becoming a key alternative to traditional expensive reinforcements to network infrastructure, due to its flexibility, decreasing costs and fast deployment capabilities. In this work, an end-to-end data-driven solution to optimally design the control of a battery unit with the aim of reducing the peak electricity demand is presented. The proposed solution uses state-of-the-art machine learning methods for forecasting electricity demand and PV generation, combined with an optimisation strategy to maximise the use of photovoltaic energy to charge the energy storage unit. To this end, historical demand, weather, and solar energy generation data collected at the Stentaway Primary substation near Plymouth, UK, and at other six locations were employed. Journal Article Energies 14 12 3453 MDPI AG 1996-1073 short-term electrical load forecasting; distribution systems; photovoltaic power generation; constrained optimisation under uncertainty; battery energy storage system; machine learning 10 6 2021 2021-06-10 10.3390/en14123453 COLLEGE NANME Mechanical Engineering COLLEGE CODE MECH Swansea University External research funder(s) paid the OA fee (includes OA grants disbursed by the Library) UK Engineering and Physical Sciences Research Council (EPSRC) EP/S001387/1; EP/T013206/1; EP/L015099/1 2022-01-04T17:30:33.5696721 2021-06-08T15:31:30.6594269 Faculty of Science and Engineering School of Aerospace, Civil, Electrical, General and Mechanical Engineering - Mechanical Engineering Eugenio Borghini 1 Cinzia Giannetti 0000-0003-0339-5872 2 James Flynn 3 Grazia Todeschini 4 57063__20322__e4b1e326eccd452b84bd38fece177ccf.pdf 57063.pdf 2021-07-02T10:01:42.3904188 Output 4341167 application/pdf Version of Record true ©2021 by the authors. This is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license true eng http://creativecommons.org/licenses/by/4.0/ |
title |
Data-Driven Energy Storage Scheduling to Minimise Peak Demand on Distribution Systems with PV Generation |
spellingShingle |
Data-Driven Energy Storage Scheduling to Minimise Peak Demand on Distribution Systems with PV Generation Eugenio Borghini Cinzia Giannetti James Flynn Grazia Todeschini |
title_short |
Data-Driven Energy Storage Scheduling to Minimise Peak Demand on Distribution Systems with PV Generation |
title_full |
Data-Driven Energy Storage Scheduling to Minimise Peak Demand on Distribution Systems with PV Generation |
title_fullStr |
Data-Driven Energy Storage Scheduling to Minimise Peak Demand on Distribution Systems with PV Generation |
title_full_unstemmed |
Data-Driven Energy Storage Scheduling to Minimise Peak Demand on Distribution Systems with PV Generation |
title_sort |
Data-Driven Energy Storage Scheduling to Minimise Peak Demand on Distribution Systems with PV Generation |
author_id_str_mv |
f4f3adbe64cb98a2d80004d570ad786c a8d947a38cb58a8d2dfe6f50cb7eb1c6 90788c8b9c1334834ba9cc37403ea471 c4ff9050b31bdec0e560b19bfb3b56d3 |
author_id_fullname_str_mv |
f4f3adbe64cb98a2d80004d570ad786c_***_Eugenio Borghini a8d947a38cb58a8d2dfe6f50cb7eb1c6_***_Cinzia Giannetti 90788c8b9c1334834ba9cc37403ea471_***_James Flynn c4ff9050b31bdec0e560b19bfb3b56d3_***_Grazia Todeschini |
author |
Eugenio Borghini Cinzia Giannetti James Flynn Grazia Todeschini |
author2 |
Eugenio Borghini Cinzia Giannetti James Flynn Grazia Todeschini |
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Journal article |
container_title |
Energies |
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14 |
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12 |
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3453 |
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2021 |
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Swansea University |
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1996-1073 |
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10.3390/en14123453 |
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MDPI AG |
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Faculty of Science and Engineering |
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Faculty of Science and Engineering |
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facultyofscienceandengineering |
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Faculty of Science and Engineering |
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School of Aerospace, Civil, Electrical, General and Mechanical Engineering - Mechanical Engineering{{{_:::_}}}Faculty of Science and Engineering{{{_:::_}}}School of Aerospace, Civil, Electrical, General and Mechanical Engineering - Mechanical Engineering |
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description |
The growing adoption of decentralised renewable energy generation (such as solar photovoltaic panels and wind turbines) and low-carbon technologies will increase the strain experienced by the distribution networks in the near future. In such a scenario, energy storage is becoming a key alternative to traditional expensive reinforcements to network infrastructure, due to its flexibility, decreasing costs and fast deployment capabilities. In this work, an end-to-end data-driven solution to optimally design the control of a battery unit with the aim of reducing the peak electricity demand is presented. The proposed solution uses state-of-the-art machine learning methods for forecasting electricity demand and PV generation, combined with an optimisation strategy to maximise the use of photovoltaic energy to charge the energy storage unit. To this end, historical demand, weather, and solar energy generation data collected at the Stentaway Primary substation near Plymouth, UK, and at other six locations were employed. |
published_date |
2021-06-10T04:12:31Z |
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1763753854106599424 |
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11.037166 |