DOU Jiaming, WANG Xiaojun, SI Fangyuan, et al. 基于深度强化学习的区域综合能源系统主动调节灵活性规则提取及可解释优化调度[J]. Power System Protection and Control, 2025, (23).
DOI:
DOU Jiaming, WANG Xiaojun, SI Fangyuan, et al. 基于深度强化学习的区域综合能源系统主动调节灵活性规则提取及可解释优化调度[J]. Power System Protection and Control, 2025, (23). DOI: 10.19783/j.cnki.pspc.250196.
The scheduling of regional integrated energy systems must fully exploit active regulation capability to cope with new energy fluctuation and diverse load conditions. Traditional methods rely heavily on precise modeling
struggle with high uncertainty
and lack dynamic analysis of active regulation as well as interpretability of scheduling strategies. To address these challenges
this paper proposes an active flexibility regulation rule extraction and explainable reinforcement learning method. First
based on the equipment regulation boundaries
response rates
and coupling relationships
flexibility metrics such as power regulation capacities of electrical and thermal subsystem components
are quantitatively analyzed. Second
a reward function integrating the physical rules of active regulation flexibility is designed and embedded into an improved deep deterministic policy gradient (DDPG) framework. During policy updates
device operation constraints and flexibility incentives are incorporated. Dynamic constraint construction
adaptive learning rate adjustment
and policy visualization are adopted to enhance physical consistency and interpretability of the learning process. Simulation results show that the proposed method improves the regulation capability by 11.08% and 15.86% compared with quadratic programming and particle swarm optimization
respectively. Moreover
the extracted flexibility rules enable interpretable day-ahead regulation capability analysis
providing traceable physical insights and supporting human-AI collaborative decision-making in scheduling strategies.