Volt/VAR control rules facilitate the autonomous operation of distributed energy resources (DER) to regulate voltage in power distribution grids. According to non-incremental control rules, such as the one mandated by the IEEE Standard 1547, the reactive power setpoint of each DER is computed as a piecewise-linear curve of the local voltage. However, the slopes of such curves are upper-bounded to ensure stability. On the other hand, incremental rules add a memory term into the setpoint update, rendering them universally stable. They can thus attain enhanced steady-state voltage profiles. Optimal rule design (ORD) for incremental rules can be formulated as a bilevel program. We put forth a scalable solution by reformulating ORD as training a deep neural network (DNN). This DNN emulates the Volt/VAR dynamics for incremental rules derived as iterations of proximal gradient descent (PGD). Analytical findings and numerical tests corroborate that the proposed ORD solution can be neatly adapted to single/multi-phase feeders.
翻译:Volt/VAR控制规则有助于分配的能源资源(DER)的自主运行,以管理电源分配网的电压。根据非强化控制规则,例如IEEE标准1547规定的规则,每个DER的被动电源设置点作为局部电压的细线曲线计算。然而,这种曲线的斜度是上方的,以确保稳定性。另一方面,增量规则在设置点更新中增加一个记忆术语,使其普遍稳定。它们因此可以达到强化的稳定电压剖面。增量规则的优化设计(ORD)可以作为双级程序拟订。我们提出一个可扩展的解决方案,将ORD作为深层线性网络的培训(DNN)来重新配置。这个DNN可以效仿Volt/VAR的增量规则的动态,作为纯度梯度梯度梯度下降的结果(PGD)。分析结论和数字测试证实,拟议的ORD解决办法可以精确地适应单一/多级的电源。