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Wind Power Ramp Event Forecasting Using a Stochastic Scenario Generation Method

机译:基于随机情景生成方法的风电匝道事件预测

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摘要

Wind power ramp events (WPREs) have received increasing attention in recent years as they have the potential to impact the reliability of power grid operations. In this paper, a novel WPRE forecasting method is proposed which is able to estimate the probability distributions of three important properties of the WPREs. To do so, a neural network (NN) is first proposed to model the wind power generation (WPG) as a stochastic process so that a number of scenarios of the future WPG can be generated (or predicted). Each possible scenario of the future WPG generated in this manner contains the ramping information, and the distributions of the designated WPRE properties can be stochastically derived based on the possible scenarios. Actual wind power data from a wind power plant in the Bonneville Power Administration (BPA) were selected for testing the proposed ramp forecasting method. Results showed that the proposed method effectively forecasted the probability of ramp events.
机译:近年来,风电斜坡事件(WPRE)受到越来越多的关注,因为它们有可能影响电网运行的可靠性。本文提出了一种新颖的WPRE预测方法,该方法能够估计WPRE的三个重要属性的概率分布。为此,首先提出了一个神经网络(NN),将风力发电(WPG)建模为随机过程,以便可以生成(或预测)未来WPG的多种情况。以这种方式生成的未来WPG的每个可能方案都包含渐变信息,并且可以根据可能的方案随机地得出指定WPRE属性的分布。选择了来自邦纳维尔电力局(BPA)一家风力发电厂的实际风力数据,以测试建议的斜率预测方法。结果表明,该方法有效地预测了斜坡事件的概率。

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