首页> 外文期刊>Journal of Wind Engineering and Industrial Aerodynamics: The Journal of the International Association for Wind Engineering >Data mining-assisted short-term wind speed forecasting by wavelet packet decomposition and Elman neural network
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Data mining-assisted short-term wind speed forecasting by wavelet packet decomposition and Elman neural network

机译:小波包分解和ELMAN神经网络的数据挖掘辅助短期风速预测

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摘要

On the basis of data mining technology, a hybrid method of short-term wind speed forecast is proposed by the wavelet packet decomposition, density based spatial clustering of applications with noise, and the Elman neural network (WPD-DBSCAN-ENN). First, the WPD Is applied to decompose a raw wind speed series into several subseries. The gradient boosted regression trees (GBRT) algorithm is then applied to determine the structure of the ENNs for each sub-wind series. Next, the training dataset is clustered by the DBSCAN to select the representative data for the ENNs. A key parameter in the DBSCAN is chosen through a new method. Finally, the wind speed forecast is conducted by the ENNs. Case studies are adopted to validate the accuracy of the hybrid methods. The results are compared with those obtained using the WPD-ENN hybrid method and a single ENN via four general error criteria. The performance of the WPD-DBSCAN-ENN hybrid method outperformed those of the other methods indicated above.
机译:在数据挖掘技术的基础上,通过小波分组分解,基于噪声的应用的密度的空间聚类和ELMAN神经网络(WPD-DBSCAN-enn)提出了一种短期风速预测的混合方法。首先,应用WPD以将原始风速系列分解为几个子系列。然后应用梯度提升回归树(GBRT)算法以确定每个子风系列的enn的结构。接下来,DBSCAN群集训练数据集以选择ENN的代表性数据。通过新方法选择DBSCAN中的一个关键参数。最后,风速预测由恩斯进行。采用案例研究来验证混合方法的准确性。将结果与使用WPD-ENN混合方法和单个enn获得的那些通过四个一般误差标准进行比较。 WPD-DBSCAN-ENN混合方法的性能优于上述其他方法的性能。

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