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Probabilistic forecasting of wind power ramp events using autoregressive logit models

机译:自动评级Logit模型的风电斜坡事件的概率预测

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摘要

A challenge for the efficient operation of power systems and wind farms is the occurrence of wind power ramps, which are sudden large changes in the power output from a wind farm. This paper considers the probabilistic forecasting of a ramp event, defined as exceedance beyond a specified threshold. We directly model the exceedance probability using autoregressive logit models fitted to the change in wind power. These models can be estimated by maximising a Bernoulli likelihood. We introduce a model that simultaneously estimates the ramp event probabilities for different thresholds using a multinomial logit structure and categorical distribution. To model jointly the probability of ramp events at more than one wind farm, we develop a multinomial logit formulation, with parameters estimated using a bivariate Bernoulli distribution. We use a similar approach in a model for jointly predicting one and two steps ahead. We evaluate post-sample probability forecast accuracy using hourly wind power data from four wind farms. (C) 2016 Elsevier B.V. All rights reserved.
机译:电力系统和风电场有效运行的挑战是风力坡道的发生,这是风电场的电源输出的突然变化。本文考虑了斜坡事件的概率预测,定义为超出指定阈值的超出。我们使用适合风电变化的自回归Logit模型直接模拟超标概率。这些模型可以通过最大化伯努利可能性来估算。我们介绍了一种模型,它同时使用多项式Lo​​yit结构和分类分布来估计不同阈值的斜坡事件概率。为了将斜坡事件的概率联合,我们开发了多项式Lo​​git配方,使用了一分匹配Bernoulli分布估计的参数。我们在模型中使用类似的方法,以共同预测前方的一个和两个步骤。我们使用来自四个风电场的每小时风电数据评估样本后概率预测精度。 (c)2016 Elsevier B.v.保留所有权利。

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