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首页> 外文期刊>IEEE Transactions on Power Systems >Point Estimate Method Addressing Correlated Wind Power for Probabilistic Optimal Power Flow
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Point Estimate Method Addressing Correlated Wind Power for Probabilistic Optimal Power Flow

机译:概率最优潮流下解决相关风电的点估计方法

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摘要

Increasing levels of wind power integration pose a challenge in system operation, owing to the uncertainty and non-dispatchability of wind generation. The probabilistic nature of wind speed inputs dictates that in an optimization of the system, all output variables will themselves be probabilistic. In order to determine the distributions resulting from system optimization, a probabilistic optimal power flow (POPF) method may be applied. While Monte Carlo (MC) techniques are a traditional approach, recent research into point estimate methods (PEMs) has displayed their capabilities to obtain output distributions while reducing computational burden. Unfortunately both spatial and temporal correlation amongst the input wind speed random variables complicates the application of PEM for solving the POPF. Further complications may arise due to the large number of random input variables present when performing a multi-period POPF. In this paper, a solution is proposed which addresses the correlation amongst input random variables, as well as an input variable truncation approach for addressing the large number of random input variables, such that a PEM can be effectively used to obtain POPF output distributions.
机译:由于风力发电的不确定性和不可调度性,不断提高的风电集成水平对系统运行提出了挑战。风速输入的概率性质决定了在系统优化中,所有输出变量本身都是概率性的。为了确定由系统优化产生的分布,可以应用概率最优功率流(POPF)方法。尽管蒙特卡洛(MC)技术是一种传统方法,但最近对点估计方法(PEM)的研究显示了其在减少计算负担的同时获得输出分布的能力。不幸的是,输入风速随机变量之间的时空相关性都使PEM在求解POPF方面的应用变得复杂。由于在执行多周期POPF时存在大量随机输入变量,因此可能会导致进一步的复杂性。在本文中,提出了一种解决输入随机变量之间的相关性的解决方案,以及一种用于解决大量随机输入变量的输入变量截断方法,从而可以有效地利用PEM来获得POPF输出分布。

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