无系统知识配电网的最小干扰在线电压调节

IF 3.3 Q3 ENERGY & FUELS IEEE Open Access Journal of Power and Energy Pub Date : 2024-06-11 DOI:10.1109/OAJPE.2024.3412120
Hamad Alduaij;Yang Weng
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引用次数: 0

摘要

配电系统的可观测性有限,因为它们是被动消耗电力的电网。如今,越来越多的分布式能源资源将个人用户变成了 "发电机",用户之间的双向电力流动使电网很容易发生断电。这就需要新的控制方法,在系统信息有限的情况下保证性能。然而,由于系统信息有限,很难采用基于模型的控制方法,从而难以保证性能。为了获得有关模型的信息,主动学习方法建议持续干扰系统以学习非线性。探索过程也会带来进一步中断的不确定性。为了解决频繁扰动的问题,我们建议通过最小化探索来降低扰动系统的频率。在此基础上,我们将设计与物理内核叠加,从功率流方程中嵌入系统非线性。这些设计产生了一种高度鲁棒的自适应在线策略,它能在最优控制保证的基础上逐步单调地减少扰动。为了进行广泛验证,我们在各种 IEEE 测试系统上测试了我们的控制器,包括 4 总线、13 总线、30 总线和 123 总线电网,以及不同的可再生能源渗透率、不同的电表设置和多样化的调节器。数值结果表明,与最先进的数据驱动方法相比,在有限扰动条件下的电压控制有了明显改善。
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Online Voltage Regulation With Minimum Disturbance for Distribution Grid Without System Knowledge
Distribution systems have limited observability, as they were a passive grid to consume power. Nowadays, increasing distributed energy resources turns individual customers into “generators,” and two-way power flow between customers makes the grid prone to power outages. This calls for new control methods with performance guarantees in the presence of limited system information. However, limited system information makes it difficult to employ model-based control, making performance guarantees difficult. To gain information about the model, active learning methods propose to disturb the system consistently to learn the nonlinearity. The exploration process also introduces uncertainty for further outages. To address the issue of frequent perturbation, we propose to disturb the system with decreasing frequency by minimizing exploration. Based on such a proposal, we superposed the design with a physical kernel to embed system non-linearity from power flow equations. These designs lead to a highly robust adaptive online policy, which reduces the perturbation gradually but monotonically based on the optimal control guarantee. For extensive validation, we test our controller on various IEEE test systems, including the 4-bus, 13-bus, 30-bus, and 123-bus grids, with different penetrations of renewables, various set-ups of meters, and diversified regulators. Numerical results show significantly improved voltage control with limited perturbation compared to those of the state-of-the-art data-driven methods.
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来源期刊
CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
期刊最新文献
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