This article introduces an unsupervised learning framework for managing distributed energy resources (DERs) within distribution networks. The focus is on developing local controllers that can approximate optimal power flow (OPF) solutions. The methodology integrates fairness-driven components into the cost function to mitigate power curtailment disparities among DERs, promoting equitable power injections. Power flow simulations using the IEEE 37-bus feeder demonstrate system stability and improved overall performance.
Literature review highlights the need for online closed-loop strategies due to renewable generation intermittency and load variability. Local control schemes are suitable for distribution networks without real-time communication networks, focusing on Volt/Var control. Recent advances incorporate data-driven techniques in designing local controllers to reduce optimality gaps compared to centralized solutions.
Smart inverters regulate voltage by adjusting reactive power injections but may resort to active power curtailment, affecting customers' fairness based on electrical distance from the substation. Various approaches have been proposed to address this challenge, including droop-based and optimization-based methods.
The proposed framework aims to devise local power control schemes as equilibrium functions that map local information to active and reactive power setpoints. It introduces an equity-promoting penalty to ensure fair control decisions over time, focusing on multiple protected features of interest.
A otro idioma
del contenido fuente
arxiv.org
Consultas más profundas