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Artificial Neural Network-Based Adaptive Voltage Regulation in Distribution Systems using Data-Driven Stochastic Optimization

机译:使用数据驱动随机优化的分配系统中基于人工神经网络的自适应电压调节

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Modern distribution networks have a high integration level of distributed energy resources (DERs). Due to the stochastic nature of renewable energy production and user load consumption, it is challenging for distribution system operators (DSOs) to maintain the voltages within safe bounds. Centralized, decentralized, and distributed operational schemes have been used to tackle these challenges, however centralized and distributed methods require extensive communication infrastructure. This paper utilizes an offline, centralized data-driven conservative convex approximation of chance constrained optimal power flow to compute PV inverter reactive power set-points with consideration of PV and load uncertainties. Then, an artificial neural network (ANN) controller is developed for each PV inverter in order to mimic the centralized PV inverter control set-points, in a decentralized fashion. Numerical tests using real-world data on a benchmark feeder demonstrate that ANN controllers can attain near-optimal performance in voltage regulation and loss improvements while satisfying the probabilistic constraints.
机译:现代流通网络具有分布式能源(分布式能源)的高集成度。由于可再生能源的生产和用户负载消耗的随机性,它是具有挑战性的配电系统运营商(的DSO)保持安全范围内的电压。集中式,分散式和分布式操作方案已被用来应对这些挑战,但集中式和分布式方法需要大量的通信基础设施。本文利用脱机,机会的集中数据驱动保守凸近似约束优化功率流计算的PV逆变器考虑PV和负荷不确定性的无功功率设定点。然后,人工神经网络(ANN)控制器被用于在顺序中的每个光伏逆变器以模仿逆变器控制设定点集中PV开发的,以分散的方式。使用上的基准真实世界的数据数值试验馈线证明,ANN控制器可以实现在电压调节和改善亏损接近最优的性能,同时满足概率约束。

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