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Finding representative wind power scenarios and their probabilities for stochastic models

机译:寻找代表性的风电影和他们对随机模型的概率

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This paper analyzes the application of clustering techniques for wind power scenario reduction. The results have shown the unimodal structure of the scenario generated under a Monte Carlo process. The unimodal structure has been confirmed by the modes found by the information theoretic learning mean shift algorithm. The paper also presents a new technique able to represent the wind power forecasting uncertainty by a set of representative scenarios capable of characterizing the probability density function of the wind power forecast. From an initial large set of sampled scenarios, a reduced discrete set of representative scenarios associated with a probability of occurrence can be created finding the areas of high probability density. This will allow the reduction of the computational burden in stochastic models that require scenario representation.
机译:本文分析了对风电情景减少的集群技术应用。结果表明了蒙特卡罗过程下产生的情景的单峰结构。通过信息理论学习均值换档算法发现的模式已经确认了单峰结构。本文还提出了一种能够通过能够表征风力预测的概率密度函数的一组代表性的表征来代表风力预测不确定性的新技术。根据初始大量的采样场景,可以创建一种与发生概率相关的分立的离散代表场景集,找到高概率密度的区域。这将允许减少需要场景表示的随机模型中的计算负担。

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