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Short-term wind speed forecasting in Germany

机译:德国的短期风速预测

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The importance of renewable power production is a set goal in terms of the energy turnaround. Developing short-term wind speed forecasting improvements might increase the profitability of wind power. This article compares two novel approaches to model and predict wind speed. Both approaches incorporate periodic interactions, whereas the first model uses Fourier series to model the periodicity. The second model takes l(2.)p generalised trigonometric functions into consideration. The aforementioned Fourier series are special types of the p-generalised trigonometrical function and therefore model 1 is nested in model 2. The two models use an autoregressive fractionally integrated moving average-asymmetric power generalised autoregressive conditional heteroscedasticity process to cover the autocorrelation and the heteroscedasticity. A data set which consist of 10min data collected at four stations at the German-Polish border from August 2007 to December 2012 is analysed. The most important finding is an enhancement of the forecasting accuracy up to three hours that is directly related to our new short-term forecasting model.
机译:就能源周转而言,可再生能源生产的重要性是既定目标。开发短期风速预测改进措施可能会增加风电的盈利能力。本文比较了两种用于建模和预测风速的新颖方法。两种方法都包含周期性相互作用,而第一个模型使用傅里叶级数对周期性进行建模。第二个模型考虑了l(2.)p广义三角函数。前述傅里叶级数是p广义三角函数的特殊类型,因此模型1嵌套在模型2中。这两个模型使用自回归分数积分移动平均-不对称幂广义自回归条件异方差过程覆盖自相关和异方差。分析了一个数据集,该数据集是从2007年8月至2012年12月在德波边境的四个站点收集的10分钟数据组成的。最重要的发现是将预测准确性提高了多达三个小时,这与我们的新短期预测模型直接相关。

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