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Reinforcement Learning-Based Distributed BESS Management for Mitigating Overvoltage Issues in Systems With High PV Penetration

机译:基于强化学习的分布式BESS管理,用于减轻高光伏渗透系统的过压问题

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摘要

High levels of penetration of distributed photovoltaic generators can cause serious overvoltage issues, especially during periods of high power generation and light loads. There have been many solutions proposed to mitigate the voltage problems, some of them using battery energy storage systems (BESS) at the PV generation sites. In addition to their ability to absorb extra power during the light load periods, BESS can also supply additional power under high load conditions. However, their capacity may not be sufficient to allow charging every time when power absorption is desired. Therefore, typical PV/BESS may not fully prevent over-voltage problems in power distribution grids. This work develops a cooperative state of charge control scheme to alleviate the BESS capacity problem through Monte Carlo tree search based reinforcement learning (MCTS-RL). The proposed intelligent method coordinates the distributed batteries from other regions to provide voltage regulation in a distribution network. Furthermore, the energy optimization process during the day hours and the simultaneous state of charge control are achieved using model predictive control (MPC). The proposed approach is demonstrated on two test cases, the IEEE 33 bus system and a practical medium size distribution system in Alberta Canada.
机译:分布式光伏发电机的高水平渗透可能会导致严重的过压问题,尤其是在高发电和光负荷期间。已经提出了许多解决方案来减轻电压问题,其中一些在PV生成网站上使用电池储能系统(BESS)。除了在光负荷期间吸收额外功率的能力之外,BESS还可以在高负载条件下提供额外的功率。然而,每当需要功率吸收时,它们的容量可能不足以允许每次充电。因此,典型的PV / BES可能无法完全防止配电网格中的过电压问题。这项工作开发了一种合作的充电控制方案状态,通过基于蒙特卡罗树搜索的强化学习(MCTS-RL)来缓解BESS容量问题。所提出的智能方法将来自其他区域的分布式电池坐标坐标,以提供分配网络中的电压调节。此外,使用模型预测控制(MPC)实现了日间时间和同时充电控制的能量优化过程。在两个测试用例,IEEE 33总线系统和Alberta Canada的实用中等大小分布系统中展示了所提出的方法。

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