The increasing penetration of distributed energy resources in low-voltage networks is turning end-users from consumers to prosumers. However, the incomplete smart meter rollout and paucity of smart meter data due to the regulatory separation between retail and network service provision make active distribution network management difficult. Furthermore, distribution network operators oftentimes do not have access to real-time smart meter data, which creates an additional challenge. For the lack of better solutions, they use blanket rooftop solar export limits, leading to suboptimal outcomes. To address this, we designed a conditional generative adversarial network (CGAN)-based model to forecast household solar generation and electricity demand, which serves as an input to chance-constrained optimal power flow used to compute fair operating envelopes under uncertainty.
翻译:低压网络中分配的能源资源日益渗透,使终端用户从消费者转向消费人,然而,由于零售和网络服务提供之间的监管分化,智能计量数据不全,智能计量数据缺乏,导致难以进行积极的分销网络管理;此外,分销网络运营商往往无法获取实时智能计量数据,这带来了额外的挑战;由于缺乏更好的解决方案,他们使用全套天顶太阳能出口限制,导致不理想的结果;为此,我们设计了一个基于有条件的基因对抗网络(CGAN)模型,用于预测家庭太阳能发电和电力需求,这是用于在不确定性下计算公平经营信封的受风险限制的最佳电力流动的一种投入。