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Forecast-Based Energy Management for Domestic PV-Battery Systems: A U.K. Case Study
IEEE Access, Volume: 9, Pages: 58953 - 58965
Swansea University Authors: Meghdad Fazeli , Mohammad Monfared , Ashraf Fahmy Abdo , Justin Searle , Richard Lewis
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DOI (Published version): 10.1109/access.2021.3072961
Abstract
This paper presents a predictive Energy Management System (EMS), aimed to improve the per-formance of a domestic PV-battery system and maximize self-consumption by minimizing energy exchange with the utility grid. The proposed algorithm facilitates a self-consumption approach, which reduces electric...
Published in: | IEEE Access |
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ISSN: | 2169-3536 2169-3536 |
Published: |
Institute of Electrical and Electronics Engineers (IEEE)
2021
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Online Access: |
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URI: | https://cronfa.swan.ac.uk/Record/cronfa56658 |
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Abstract: |
This paper presents a predictive Energy Management System (EMS), aimed to improve the per-formance of a domestic PV-battery system and maximize self-consumption by minimizing energy exchange with the utility grid. The proposed algorithm facilitates a self-consumption approach, which reduces electricity bills, transmission losses, and the required central generation/storage systems. The proposed EMS uses a com-bination of Fuzzy Logic (FL) and a rule based-algorithm to optimally control the PV-battery system while con-sidering the day-ahead energy forecast including forecast error and the battery State of Health (SOH). The FL maximizes the lifetime of the battery by using SOH and State of Charge (SOC) in decision making algorithm to charge/discharge the battery. The proposed Battery Management System (BMS) has been tested using Active Office Building (AOB) located in Swansea University, UK. Furthermore, it is compared with three recently published methods and with the current BMS utilized in the AOB to show the effectiveness of the proposed technique. The results show that the proposed BMS achieves a saving of 18% in the total energy cost over six months compared to a similar day-ahead forecast-based work. It also achieves a saving up to 95% compared to other methods (with a similar structure) but without a day-ahead forecast-based management. The proposed BMS enhances the battery's lifetime by reducing the average SOC up to 47% compared to the previous methods through avoiding unnecessary charge and discharge cycles. The impact of the PV system size and the battery capacity on the net exchanged energy with the utility grid is also investigated in this study. |
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College: |
Faculty of Science and Engineering |
Funders: |
The authors would like to thank SPECIFIC-IKC for providing
the data from ‘‘Active Buildings’’ demonstrators, which made
this project possible. The authors would like to acknowledge
QRLP10-G-19022034 from Qatar National Fund (a member
of Qatar Foundation) for their financial support. |
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