Wei Hu, Shuo Wang, Puliang Du. An Optimized Distribution Model for Energy System in Virtual Power Plants Integrating Electric Vehicles Based on TD3 and DQN[J]. Protection and Control of Modern Power Systems, 2025, (6): 31-48.
DOI:
Wei Hu, Shuo Wang, Puliang Du. An Optimized Distribution Model for Energy System in Virtual Power Plants Integrating Electric Vehicles Based on TD3 and DQN[J]. Protection and Control of Modern Power Systems, 2025, (6): 31-48. DOI: 10.23919/PCMP.2025.000017.
An Optimized Distribution Model for Energy System in Virtual Power Plants Integrating Electric Vehicles Based on TD3 and DQN
摘要
Abstract
To enhance the deployment capability and low-carbon degree of virtual power plants (VPPs)
a novel optimized scheduling model is proposed in this paper for a multi-energy VPP. To explore the distribution potential of the VPP and bolster its multi-energy complementarity
an architecture integrated with electric vehicle (EV) charging stations is introduced
and a battery health degradation mechanism is constructed. To address the uncertainty exhibited by EV behaviors
a feature extraction method based on deep Q-network and maximum relevance-minimum redundancy (mRMR) is then proposed. This method optimizes the applicability of mRMR in large datasets
thereby improving the accuracy of charge behavior prediction. Next
to achieve a complex optimization dispatch
a twin delayed deep deterministic policy gradient algorithm is employed. The twin Q-value truncation mechanism and smooth regularization effectively suppress the issue of policy overestimation biases. Further-more
to validate the performance of the proposed model and algorithm
four different cases are designed
and the scheduling effects achieved for EVs are compared with those of the traditional battery energy storage system framework. The simulation results show that the proposed model significantly reduces both the operational cost and carbon emission level while slowing the battery health degradation process.