风能应用的长期风速预报

N. Aghbalou, A. Charki, S. R. ElAZZOUZI, K. Reklaoui
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引用次数: 2

摘要

提出了一种基于训练神经网络的风速分布长期预测方法。采用相空间重构方法跟踪动态系统中风速分布函数参数的演变。然后,利用神经网络训练和预测特征学习历史数据与下一次观测之间的非线性模型。此外,在应用本文提出的方法之前,已经应用并比较了不同的估计方法来拟合研究站点的年风速分布。该方法具有良好的性能,可成功应用于风力发电。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Long Term Forecasting of Wind Speed for Wind Energy Application
A novel method for long term forecasting of wind speed distribution is proposed based on the concept of training neural network. A phase space reconstruction method is used to track the evolution of the wind speed distribution function parameters in a dynamic system. Then, the neural network training and forecasting features are used to learn nonlinear model between historical data and next observation. Moreover, different estimators have been applied and compared to fit the annual distribution of the wind speed in the studied sites before applying the proposed approach. The proposed method shows a good performance and could be successfully applied in wind energy yield.
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