CUI Jingqi, JI Haoran, LI Peng, et al. 考虑数据隐私保护的分布式电源集群自适应可信协同决策方法[J]. Power System Protection and Control, 2025, (24). DOI: 10.19783/j.cnki.pspc.250113.
Rapid fluctuations of large-scale distributed generation (DG) can easily cause issues such as voltage violation in distribution networks
affecting their safe and stable operation. Additionally
distribution clusters may belong to different stakeholders
making inter-cluster data privacy increasingly important. To address the problem of DG cluster control under multiple stakeholders
an adaptive and trustworthy collaborative decision-making method that considers data privacy protection is proposed. First
a multi-cluster trusted collaborative framework for distribution networks is constructed based on split federated learning approach
and a deep learning model is established for voltage decision-making. This framework enables data fusion and collaboration among multiple clusters with privacy protection between stakeholders. Then
a reward mechanism is incorporated into the deep learning model to evaluate the quality of measurement data
allowing for adaptive model updates. Finally
the feasibility and effectiveness of the proposed method are verified using a case study of the Jiaomen distribution network in Guangzhou. The results demonstrate that the proposed method offers strong privacy protection capabilities
improves voltage quality
and effectively mitigates voltage violation issues in the distribution network.