Short-Term Electric Power and Energy Balance Optimization Scheduling
Based on Low-Carbon Bilateral Demand Response Mechanism from Multiple
Perspectives
Abstract
Carbon emissions limit the output demand of traditional fuel-generating
units, significantly affecting the electric power and energy balance
scheduling mechanisms of modern power systems. To address this, we first
analyzed the short-term electric power and energy balance from a dual
perspective, along with the electro-carbon coupling mechanism of dynamic
dispatching on the source-load side. Based on this analysis, we
constructed a framework for low-carbon bilateral demand response
(LCBDR). Subsequently, based on the carbon emission flow theory, the
carbon emission index information of the demand response system was
obtained. Therefore, the short-term electric power and energy balance
optimal scheduling model for LCBDR is established to achieve a
low-carbon economy. In this study, the enhanced decision tree classifier
(EDTC) algorithm is used to predict the electricity consumption behavior
of transfer load (TL) user load, and an improved ‘ ε-greedy’ strategy
particle swarm optimization (PSO) algorithm is proposed to realize the
coordinated optimization of daily operational cost and daily carbon
emission of the regional power grid. Finally, by setting up three
different perspectives of the simulation examples, the proposed method
can effectively realize the regional power grid’s low-carbon,
economical, and efficient operation. The feasibility of the model can be
verified via the IEEE-30 bus system.