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Very short-term spatio-temporal wind power prediction using a censored Gaussian field

机译:使用审查高斯场的非常短期的时空风能预测

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Wind power is a renewable energy resource, that has relatively cheap installation costs and it is highly possible that will become the main energy resource in the near future. Wind power needs to be integrated efficiently into electricity grids, and to optimize the power dispatch, techniques to predict the level of wind power and the associated variability are critical. Ideally, one would like to obtain reliable probability density forecasts for the wind power distributions. We aim at contributing to the literature of wind power prediction by developing and analysing a spatio-temporal methodology for wind power production, that is tested on wind power data from Denmark. We use anisotropic spatio-temporal correlation models to account for the propagation of weather fronts, and a transformed latent Gaussian field model to accommodate the probability masses that occur in wind power distribution due to chains of zeros. We apply the model to generate multi-step ahead probability predictions for wind power generated at both locations where wind farms already exist but also to nearby locations.
机译:风能是一种可再生能源,其安装成本相对较低,在不久的将来很有可能成为主要能源。必须将风能有效地集成到电网中,并且要优化功率分配,预测风能水平和相关可变性的技术至关重要。理想情况下,人们希望获得有关风能分布的可靠概率密度预测。我们旨在通过开发和分析风电生产的时空方法,为风电预测的文献做出贡献,该方法已通过丹麦的风电数据进行了测试。我们使用各向异性的时空相关性模型来解释天气前沿的传播,并使用变换后的潜在高斯场模型来适应由于零链而在风电分布中出现的概率质量。我们应用该模型为已经存在风电场的地点以及附近地点的风力发电生成多步提前概率预测。

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