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Very short-term probabilistic wind power prediction using sparse machine learning and nonparametric density estimation algorithms

机译:使用稀疏机器学习和非参数密度估计算法非常短期的概率风力预测

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In this paper, a sparse machine learning technique is applied to predict the next-hour wind power. The hourly wind power prediction values within a few future hours can be obtained by meteorological/ physical methods, and such values are often broadcast and available for many wind generators. Our model takes into consideration those available forecast values, together with the real-time observations of the past hours, as well as the values in all the power generators in nearby locations. Such a model is consisted of features of high dimensions, and is solved by the sparse technique. We demonstrate our method using the realistic wind power data that belongs to the IEEE 118-bus test system named NREL118. The modeling result shows that our approach leads to better prediction accuracy comparing to several other competing methods, and our results improves from the broadcast values obtained by meteorological/physical methods. Apart from that, we apply a novel nonparametric density estimation approach to give the probabilistic band of prediction, which is demonstrated by the 25% and 75% confidence interval of the prediction. The coverage rate is compared with that yielded from quantile regression. (c) 2021 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
机译:本文采用了一种稀疏的机器学习技术来预测下一小时风力。几小时内的每小时风电预测值可以通过气象/物理方法获得,并且这些价值通常是广播和可用于许多风力发电机的。我们的模型考虑了那些可用的预测值,以及过去几小时的实时观察,以及附近地点的所有发电机中的值。这种模型由高尺寸的特征组成,并且通过稀疏技术解决。我们使用属于IEEE 118-Bus测试系统的现实风电数据展示我们的方法,该方法名为NREL118。建模结果表明,我们的方法导致与其他几种竞争方法相比的更好的预测准确性,并且我们的结果改善了气象/物理方法获得的广播值。除此之外,我们应用了一种新的非参数密度估计方法来提供预测的概率频带,其通过预测的25%和75%的置信区间证明。将覆盖率与量级回归产生的覆盖率进行比较。 (c)2021作者。由elsevier有限公司出版。这是CC By-NC-ND许可下的开放式访问文章(http://creativecommons.org/licenses/by-nc-nd/4.0/)。

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