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Lift coefficient prediction at high angle of attack using recurrent neural network

机译:基于递归神经网络的高攻角升力系数预测

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In this paper, identification of dynamic stall effect of rotor blade is considered. Recurrent Neural Networks have the ability to identify the nonlinear dynamical systems from training data. This paper describes the use of recurrent neural networks for predicting the coefficient of lift (C_Z) at high angle of attack. In our approach, the coefficient of lift (C_Z) obtained from the experimental results (wind tunnel data) at different mean angle of attack θ_(mean) is used to train the recurrent neural network. Then the recurrent neural network prediction is compared with experimental ONERA OA212 airfoil data. The time and space complexity required to predict C_Z in the proposed method is less and it is easy to incorporate in any commercially available rotor code.
机译:本文考虑了转子叶片动态失速效应的辨识。递归神经网络具有从训练数据中识别非线性动力学系统的能力。本文介绍了使用递归神经网络预测高攻角下的升力系数(C_Z)。在我们的方法中,将从实验结果(风洞数据)在不同平均攻角θ_(平均值)下获得的升力系数(C_Z)用于训练递归神经网络。然后将递归神经网络预测与实验性ONERA OA212机翼数据进行比较。在提出的方法中预测C_Z所需的时间和空间复杂度较小,并且很容易将其包含在任何商用转子代码中。

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