TY - JOUR
T1 - Optimal bidding strategy for virtual power plant in multiple markets considering integrated demand response and energy storage
AU - Feng, Jie
AU - Ran, Lun
AU - Wang, Zhiyuan
AU - Zhang, Mengling
N1 - Publisher Copyright:
© 2025 Elsevier Ltd
PY - 2025/7/15
Y1 - 2025/7/15
N2 - As the energy landscape undergoes a profound transition with the widespread penetration of renewable energy, Virtual Power Plant (VPP) energy dispatching management emerges as a highly effective approach to manage and optimize energy scheduling. In this study, we propose a distributionally robust chance-constrained optimization framework to optimize the day-ahead bidding decisions. To effectively deal with the uncertainty associated with renewable energy generation, we establish a novel interval moment information ambiguity set, which dynamically captures the uncertain characteristics. Furthermore, we design an integrated strategy for energy storage and demand response, incorporating shedding potential contract parameters for controllable loads, thereby remarkably refining the demand-side management. On the market side, we develop a multi-market trading strategy involving both the electricity market and the ancillary service market to synergistically enhance the overall operational profitability. To efficiently tackle the chance constraint of supply–demand power balance, we employ the CVaR approximation transformation to convert the model into a tractable mixed-integer second-order programming (MISOCP) form. The results of numerical experiments prove that the proposed energy scheduling and bidding strategies increase the economic benefits by 28%, significantly reducing the peak load by 25.4% and simultaneously increasing the valley load utilization by 29.3%. Additionally, our solution method exhibits excellent applicability and computational efficiency in large-scale scenarios, which markedly improves energy efficiency and reduces carbon emissions by 44.8%, thus ensuring system reliability and making a profound positive impact on environmental sustainability.
AB - As the energy landscape undergoes a profound transition with the widespread penetration of renewable energy, Virtual Power Plant (VPP) energy dispatching management emerges as a highly effective approach to manage and optimize energy scheduling. In this study, we propose a distributionally robust chance-constrained optimization framework to optimize the day-ahead bidding decisions. To effectively deal with the uncertainty associated with renewable energy generation, we establish a novel interval moment information ambiguity set, which dynamically captures the uncertain characteristics. Furthermore, we design an integrated strategy for energy storage and demand response, incorporating shedding potential contract parameters for controllable loads, thereby remarkably refining the demand-side management. On the market side, we develop a multi-market trading strategy involving both the electricity market and the ancillary service market to synergistically enhance the overall operational profitability. To efficiently tackle the chance constraint of supply–demand power balance, we employ the CVaR approximation transformation to convert the model into a tractable mixed-integer second-order programming (MISOCP) form. The results of numerical experiments prove that the proposed energy scheduling and bidding strategies increase the economic benefits by 28%, significantly reducing the peak load by 25.4% and simultaneously increasing the valley load utilization by 29.3%. Additionally, our solution method exhibits excellent applicability and computational efficiency in large-scale scenarios, which markedly improves energy efficiency and reduces carbon emissions by 44.8%, thus ensuring system reliability and making a profound positive impact on environmental sustainability.
KW - Demand response
KW - Distributionally robust chance constraint
KW - Energy storage
KW - Multiple markets
KW - Optimal bidding strategy
KW - Virtual power plant
UR - http://www.scopus.com/inward/record.url?scp=105003959039&partnerID=8YFLogxK
U2 - 10.1016/j.est.2025.116706
DO - 10.1016/j.est.2025.116706
M3 - Article
AN - SCOPUS:105003959039
SN - 2352-152X
VL - 124
JO - Journal of Energy Storage
JF - Journal of Energy Storage
M1 - 116706
ER -