Real active distribution networks with associated smart meter (SM) data are critical for power researchers. However, it is practically difficult for researchers to obtain such comprehensive datasets from utilities due to privacy concerns. To bridge this gap, an implicit generative model with Wasserstein GAN objectives, namely unbalanced graph generative adversarial network (UG-GAN), is designed to generate synthetic three-phase unbalanced active distribution system connectivity. The basic idea is to learn the distribution of random walks both over a real-world system and across each phase of line segments, capturing the underlying local properties of an individual real-world distribution network and generating specific synthetic networks accordingly. Then, to create a comprehensive synthetic test case, a network correction and extension process is proposed to obtain time-series nodal demands and standard distribution grid components with realistic parameters, including distributed energy resources (DERs) and capacity banks. A Midwest distribution system with 1-year SM data has been utilized to validate the performance of our method. Case studies with several power applications demonstrate that synthetic active networks generated by the proposed framework can mimic almost all features of real-world networks while avoiding the disclosure of confidential information.
翻译:然而,由于隐私问题,研究人员实际上很难从公用事业获得这种全面的数据集。为了弥合这一差距,提议了一个与瓦森斯坦GAN目标(即分布式能源资源分布式和能力库等分布式能源资源分布式网络)相关的隐含基因模型和标准分布网组件。一个拥有1年期的中西部分配系统,利用了1年的SM数据来验证我们的方法的性能。一些应用力量的案例研究表明,拟议框架产生的合成活跃网络可以模仿现实世界网络的几乎所有特征,同时避免披露机密信息。