The integration of renewable energy sources and participation in demand response requires advanced modelling and control strategies to enhance building-grid interaction. This study presents a comprehensive methodology for selecting typical days and evaluating how controllable building thermal loads influence the design and operation of grid-supportive technologies, specifically photovoltaic (PV) and battery storage systems. Typical days are identified through dynamic time warping (DTW) and hierarchical clustering approaches, supported by six internal validation metrics. Grey-box and regression models are employed to predict building energy consumption, while PV and battery models assess system performance. A two-level Model Predictive Control (MPC) framework is employed to optimize the buildings demand and coordinate the operation of grid-supportive technologies. At the first level, a distributed MPC algorithm manages thermal loads in individual buildings to enable demand response. At the second level, a supervisory MPC optimizes the operation of the hybrid PV-battery storage system to achieve targeted grid flexibility. The case study considers a virtual community in Varennes, Québec, consisting of institutional and residential buildings. Through efficient thermal load management, the methodology shows that community peak demand can be reduced by over 40 % compared to current operational practices, and the required capacity of grid-supportive systems can be reduced by up to 26 % in a worst-case scenario analysis.
Clustering-driven design and predictive control of hybrid PV-battery storage systems for demand response in energy communities / Maturo, Anthony; Vallianos, Charalampos; Buonomano, Annamaria; Athienitis, Andreas; Delcroix, Benoit. - In: RENEWABLE ENERGY. - ISSN 0960-1481. - 253:(2025). [10.1016/j.renene.2025.123390]
Clustering-driven design and predictive control of hybrid PV-battery storage systems for demand response in energy communities
Maturo, Anthony;Buonomano, Annamaria;Athienitis, Andreas;
2025
Abstract
The integration of renewable energy sources and participation in demand response requires advanced modelling and control strategies to enhance building-grid interaction. This study presents a comprehensive methodology for selecting typical days and evaluating how controllable building thermal loads influence the design and operation of grid-supportive technologies, specifically photovoltaic (PV) and battery storage systems. Typical days are identified through dynamic time warping (DTW) and hierarchical clustering approaches, supported by six internal validation metrics. Grey-box and regression models are employed to predict building energy consumption, while PV and battery models assess system performance. A two-level Model Predictive Control (MPC) framework is employed to optimize the buildings demand and coordinate the operation of grid-supportive technologies. At the first level, a distributed MPC algorithm manages thermal loads in individual buildings to enable demand response. At the second level, a supervisory MPC optimizes the operation of the hybrid PV-battery storage system to achieve targeted grid flexibility. The case study considers a virtual community in Varennes, Québec, consisting of institutional and residential buildings. Through efficient thermal load management, the methodology shows that community peak demand can be reduced by over 40 % compared to current operational practices, and the required capacity of grid-supportive systems can be reduced by up to 26 % in a worst-case scenario analysis.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


