Electric vehicles (EVs) have great potential for implementing demand response and regulating power loads. However
existing methods mainly rely on price control and load baselines
with single response objectives
and do not fully consider user-specific needs and system uncertainties
making it difficult to achieve desired user incentives. To address this
an EV demand response optimization method based on electricity-carbon load baselines is proposed. First
an EV node electricity-carbon coupling demand response model is developed
considering parking demand variations
charging randomness
and dynamic carbon emission factors. Then
a customer directrix load dual-objective game rolling optimization framework is introduced
incorporating a day-ahead and intra-day rolling optimization model and a dual-objective leader-follower game between the distribution network and EV users to set more precise customer directrix load. A joint game optimization algorithm is proposed to reduce computational complexity and iteration time while ensuring global optimality and overall solution effectiveness. Case studies show that the method optimizes electricity-carbon balance in the distribution network
effectively reduces EV user response difficulty
ensures mutual benefits
and provide a reference for accurate baseline setting.