Day-ahead scheduling of 100% isolated communities under uncertainties through a novel stochastic-robust model
Fecha
2022-01
Título de la revista
ISSN de la revista
Título del volumen
Editor
Elsevier
Resumen
Energy communities enable effective coordination among prosumers on pursuing collective targets. This paper focuses on isolated 100% renewable communities, involving individual (controllable appliances and small generators) and collective (wind generators and battery banks) assets. To effectively coordinate the agents involved in these structures, advanced energy management strategies are necessary. This work develops a three-stage day-ahead scheduling strategy for isolated 100% energy communities, involving peer-to-peer transactions among prosumers. The different uncertainties involved are incorporated through a novel stochastic-robust formulation, that results in a computationally tractable optimization framework. To validate the new model, a case study on a six-prosumer benchmark community is analysed. Results reveal the importance of collective assets and peer-to-peer exchanges among prosumers as well as the effectiveness of the developed formulation. The role of batteries is also discussed, helping to reduce the total unserved energy and operating cost by 20% and 19%, respectively, as well as enabling a more efficient use of wind energy. The impact of robustness is also studied, incrementing the expected importable energy by 28% compared to the deterministic case, while the exportable energy from prosumers is notably reduced by 40%. However, uncertainty-aware strategies have a direct impact on operational costs, incrementing the expenditures by 37% when uncertainties are considered.
Descripción
Palabras clave
Energy community, Energy storage, Peer-to-peer, Renewable energy, Robust optimization, Stochastic programming
Citación
Marcos Tostado-Véliz, Ahmad Rezaee Jordehi, Seyed Amir Mansouri, Francisco Jurado, Day-ahead scheduling of 100% isolated communities under uncertainties through a novel stochastic-robust model, Applied Energy, Volume 328, 2022, 120257, ISSN 0306-2619, https://doi.org/10.1016/j.apenergy.2022.120257.