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Machine Learning-Based PV Reserve Determination Strategy for Frequency Control on the WECC System

机译:WECC系统上基于机器学习的PV储备频率确定控制策略

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摘要

Frequency control from photovoltaic (PV) power plants has great potential to address the frequency response challenge of the power system with high penetrations of renewable generation. Using model-based approaches to determine the optimal PV headroom reserve, however, requires significant online computation and is intractable for an interconnection level system. This paper proposes a machine learning based strategy, that is suitable for real-time operation, to determine the optimal PV reserve for frequency control. The proposed machine learning algorithm is trained and tested on 1,987 offline simulations of a 60% renewable penetration Western Electricity Coordinating Council (WECC) system. Furthermore, the proposed reserve determination strategy is applied on a realistic 1-day operation profile of the WECC system and demonstrates a savings of more than 40% PV headroom compared to a conservative approach. It is evident that the proposed strategy can efficiently and effectively determine the optimal PV frequency control reserve for realistic interconnection systems.
机译:光伏(PV)发电厂的频率控制具有巨大的潜力,可解决可再生能源的高渗透率对电力系统的频率响应带来的挑战。但是,使用基于模型的方法来确定最佳PV净空余量时,需要进行大量的在线计算,并且对于互连级系统而言是棘手的。本文提出了一种适合实时操作的基于机器学习的策略,以确定用于频率控制的最佳PV储备。拟议的机器学习算法在60%可再生能源渗透率西部电力协调委员会(WECC)系统的1,987个离线模拟中进行了培训和测试。此外,将提议的储量确定策略应用于WECC系统的实际1天运行状况,与保守方法相比,表明节省了40%的PV余量。显然,所提出的策略可以有效地确定实际互连系统的最佳PV频率控制储备。

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