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引用次数: 3
摘要
在这项工作中,我们研究了一种应用于阿尔及利亚风速预测的多块通用回归神经网络的新设计。我们提出的方法的思想是通过最小化训练样本的数量来最小化风速预测的误差,从而减少与训练样本收集相关的成本。为此,我们提出使用多块广义回归神经网络(multiblock general regression neural network, MBGRNN)从大量训练样本中选择最显著的样本。本文介绍了阿尔及利亚Alger、Djelfa、Bechar、Oran、ssamtif和in amsamims六个不同实际风速测量站的实验结果。风速数据涵盖了从2001年到2010年的十年间。
Design of a multiblock general regression neural network for wind speed prediction in Algeria
In this work, we investigate a new design of a multiblock general regression neural network applied to wind speed prediction in Algeria. The idea in our proposed method is to minimize the error of the prediction for wind speed in such a way as to minimize the quantity of training samples used, and thus to reduce the costs related to the training sample collection. For this reason, we propose to select the most significant sample among a large number of training samples by using multiblock general regression neural network (MBGRNN). This paper presents experimental results on six different real wind speed measurement stations in Algeria namely, Alger, Djelfa, Bechar, Oran, Sétif and In Aménas. The wind speed data covers a period of ten years between 2001 and 2010.