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Multistep Wind Speed and Wind Power Prediction Based on a Predictive Deep Belief Network and an Optimized Random Forest

机译:基于预测深信度网络和优化随机森林的多步风速和风能预测

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摘要

A variety of supervised learning methods using numerical weather prediction (NWP) data have been exploited for short-term wind power forecasting (WPF). However, the NWP data may not be available enough due to its uncertainties on initial atmospheric conditions. Thus, this study proposes a novel hybrid intelligent method to improve existing forecasting models such as random forest (RF) and artificial neural networks, for higher accuracy. First, the proposed method develops the predictive deep belief network (I)BN) to perform short-term wind speed prediction (WSP). Then, the WSP data are transformed into supplementary input features in the prediction process of WPF. Second, owing to its ensemble learning and parallelization, the random forest is used as supervised forecasting model. In addition, a data driven dimension reduction procedure and a weighted voting method are utilized to optimize the random forest algorithm in the training process and the prediction process, respectively. The increasing number of training samples would cause the overfitting problem. Therefore, the k-fold cross validation (CV) technique is adopted to address this issue. Numerical experiments are performed at 15-min, 30-min, 45-min, and 24-h to indicate the superiority and signal advantages compared with existing methods in terms of forecasting accuracy and scalability.
机译:使用数字天气预报(NWP)数据的各种监督学习方法已被开发用于短期风电预测(WPF)。但是,由于NWP数据在初始大气条件方面存在不确定性,因此可能无法获得足够的数据。因此,本研究提出了一种新颖的混合智能方法,以改善现有的预测模型,例如随机森林(RF)和人工神经网络,以获得更高的准确性。首先,所提出的方法开发了预测深度置信网络(I)BN)以执行短期风速预测(WSP)。然后,在WPF的预测过程中将WSP数据转换为补充输入特征。其次,由于其整体学习和并行化,随机森林被用作监督预测模型。另外,在训练过程和预测过程中,分别采用数据驱动的降维过程和加权投票方法来优化随机森林算法。训练样本数量的增加将导致过度拟合的问题。因此,采用了k倍交叉验证(CV)技术来解决此问题。在15分钟,30分钟,45分钟和24小时内进行了数值实验,以表明与现有方法相比,在预测准确性和可伸缩性方面的优越性和信号优势。

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  • 来源
    《Mathematical Problems in Engineering》 |2018年第9期|6231745.1-6231745.15|共15页
  • 作者单位

    Hebei Univ Technol, Sch Artificial Intelligence, Tianjin, Peoples R China;

    North China Univ Sci & Technol, Coll Elect Engn, Tangshan, Hebei, Peoples R China;

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