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Wind Power Density Forecasting Using Wind Ensemble Predictions and Time Series Models

机译:利用风能集合预测和时间序列模型进行风能密度预测

摘要

Wind power is an increasingly used form of renewable energy. The uncertainty in wind generation is very large due to the inherent variability in wind speed, and this needs to be understood by operators of power systems and wind farms. To assist with the management of this risk, this paper investigates methods for predicting the probability density function of generated wind power from one to ten days ahead at five U.K. wind farm locations. These density forecasts provide a description of the expected future value and the associated uncertainty. We construct density forecasts from weather ensemble predictions, which are a relatively new type of weather forecast generated from atmospheric models. We also consider density forecasting from statistical time series models. The best results for wind power density prediction and point forecasting were produced by an approach that involves calibration and smoothing of the ensemble-based wind power density.
机译:风力是可再生能源的一种越来越多的使用形式。由于风速的固有可变性,风力发电的不确定性非常大,电力系统和风力发电场的运营商需要理解这一点。为了帮助管理这种风险,本文研究了预测英国五个风电场位置提前一到十天产生的风力发电的概率密度函数的方法。这些密度预测提供了对预期未来价值和相关不确定性的描述。我们从天气集合预报中构建密度预报,这是从大气模型生成的相对较新的天气预报类型。我们还考虑根据统计时间序列模型进行密度预测。风能密度预测和点预测的最佳结果是通过涉及基于集合的风能密度的校准和平滑的方法产生的。

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