基于小波分解、特征选择和局部化预测的风电时空预测

N. Safari, Y. Chen, B. Khorramdel, L. Mao, C. Chung
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引用次数: 6

摘要

风电具有高度的非线性和非平稳性,这是进行准确的风电预测的主要障碍。为此,采用基于离散小波变换的多分辨率小波分解(WD)方法,将风电时间序列(TS)分解为多个分量。然后,在特征选择(FS)阶段,利用风电场之间的时空关系,采用双输入对称相关性(DISR)来寻找最合适的特征来预测各个分量。然后,为了在可承受的计算时间内获得高精度的预测,使用局部预测引擎对每个组件进行预测。将各分量对应的预测值叠加得到最终的WPP值。利用加拿大萨斯喀彻温省风力发电历史数据,对提出的时空WPP进行了评估。将所提出的WPP模型的性能与其他成熟和广泛使用的WPP模型进行了比较。利用各种评价指标进行绩效评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A spatiotemporal wind power prediction based on wavelet decomposition, feature selection, and localized prediction
Wind power possesses a high level of non-linearity and non-stationarity which are the main barriers to developing an accurate wind power prediction (WPP). In this regard, a multiresolution wavelet decomposition (WD), based on discrete wavelet transform, is employed to decompose the wind power time series (TS) into several components. Afterward, in a feature selection (FS) stage, which benefits from the spatiotemporal relation among the wind farms, the double input symmetrical relevance (DISR) has been adopted to find the most suitable features in predicting each component. Then, to have a high-accuracy prediction with an affordable computation time, localized prediction engines have been used to predict each component. The final WPP value is obtained by superposition of all the predicted values corresponding to components. The proposed spatiotemporal WPP is evaluated using the wind power generation historical data in Saskatchewan, Canada. The performance of the proposed WPP is compared with other well-developed and widely-used WPP models. Various evaluation indices have been utilized for conducting the performance evaluation.
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