主动配电网中数据驱动控制设计方案:能力与挑战

Stavros Karagiannopoulos, Roel Dobbe, P. Aristidou, Duncan S. Callaway, G. Hug
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引用次数: 12

摘要

如今,系统运营商依赖于分布式能源(DERs)的本地控制,如光伏发电单元、风力涡轮机和电池,以增加操作的灵活性。这些方案提供了一种无通信、健壮、廉价但不是最优的解决方案,并且没有充分利用DER功能。通过对有源配电网进行最优控制,可以大大提高有源配电网的运行灵活性。然而,它通常需要远程监控和通信基础设施,而目前的配电网由于成本高和复杂性而缺乏这些基础设施。在本文中,我们研究了数据驱动的控制算法,该算法使用历史数据、先进的离线优化技术和机器学习方法来设计局部控制,在不使用任何通信的情况下模拟最佳行为。我们详细阐述了基于不同局部特征的各种方案的适用性,我们研究了数据驱动控制方案带来的安全挑战,我们展示了优化的局部控制在三相,不平衡,低压配电网络上的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven Control Design Schemes in Active Distribution Grids: Capabilities and Challenges
Today, system operators rely on local control of distributed energy resources (DERs), such as photovoltaic units, wind turbines and batteries, to increase operational flexibility. These schemes offer a communication-free, robust, cheap, but rather sub-optimal solution and do not fully exploit the DER capabilities. The operational flexibility of active distribution networks can be greatly enhanced by the optimal control of DERs. However, it usually requires remote monitoring and communication infrastructure, which current distribution networks lack due to the high cost and complexity. In this paper, we investigate data-driven control algorithms that use historical data, advanced off-line optimization techniques, and machine learning methods, to design local controls that emulate the optimal behavior without the use of any communication. We elaborate on the suitability of various schemes based on different local features, we investigate safety challenges arising from data-driven control schemes, and we show the performance of the optimized local controls on a three-phase, unbalanced, low-voltage, distribution network.
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