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Modelling and optimal management of renewable energy communities using reversible solid oxide cells
•Renewable energy community consisting of residential customers with photovoltaic power plant and energy storage system.•Stochastic model predictive control to maximize renewable energy community economic savings.•Control algorithm for reversible solid oxide cells and hydrogen storage optimal manage...
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Published in: | Applied energy 2023-03, Vol.334, p.120657, Article 120657 |
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Main Authors: | , , , , , , |
Format: | Article |
Language: | English |
Subjects: | |
Citations: | Items that this one cites Items that cite this one |
Online Access: | Get full text |
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Summary: | •Renewable energy community consisting of residential customers with photovoltaic power plant and energy storage system.•Stochastic model predictive control to maximize renewable energy community economic savings.•Control algorithm for reversible solid oxide cells and hydrogen storage optimal management.•Physically based local model to predict reversible solid oxide cell performance.•Effective management of uncertainties correlated to users’ demand and renewable energy production.
The use of reversible solid oxide cells within a renewable energy community results a promising application which permits to balance the temporal mismatch between renewable energy production and users’ demand through hydrogen as energy vector. Differently from batteries and supercapacitors, this technology is characterized by a high stored energy density and a negligible daily self-discharge. Nevertheless, the system management is more complex requiring cell behaviour optimization and hydrogen storage control. Here this work proposes a control algorithm for reversible solid oxide cell operation coupled to renewable energy sources within a renewable energy community formed by an aggregation of fifteen residential customers. Based on forecasts of loads and renewable energy production, the proposed algorithm, a stochastic model predictive control, can optimize system operation aiming at economic benefit maximization. The transition between the fuel cell mode for power generation and the electrolysis mode for energy storage through hydrogen production was set considering the available renewable energy, the power demand of community members and the energy sell-back price in order to increase the auto-consumed amount as well as to favour the electricity exchange within the renewable energy community. Since the reversible solid oxide cell is the key-point in such a system, SIMFC-SIMEC (SIMulation of Fuel Cells and Electrolysis Cells), a physically based 2D model, allowed an effective prediction of cell behaviour deriving the efficiency of electricity and hydrogen production from local physicochemical feature and working parameter gradients on each stacked cell plane. |
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ISSN: | 0306-2619 |
DOI: | 10.1016/j.apenergy.2023.120657 |