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Hybrid Lateral Aerodynamic Modeling Based on WNN and Kernel Principal Components Feature Extraction

机译:基于WNN和核主体组件特征提取的混合横向空气动力学建模

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In order to better describe the dynamic characteristics of aircraft through aerodynamic modeling, a Wavelet Neural Network (WNN) aerodynamic modeling method based on Kernel Principal Components Analysis (KPCA) is proposed. Firstly, the training samples are used to execute KPCA for extracting basic features of samples, and then using the extracted basic features, WNN aerodynamic model was established. The simulation result shows that, the modeling ability of the method proposed is better than that of another 3 methods. It can easily determine of model parameters. This enables it to be effective and feasible to establish the aerodynamic modeling for aircraft.
机译:为了通过空气动力学建模更好地描述飞机的动态特性,提出了一种基于核主成分分析(KPCA)的小波神经网络(WNN)空气动力学建模方法。 首先,训练样本用于执行KPCA以提取样品的基本特征,然后使用提取的基本特征,建立了WNN空气动力学模型。 仿真结果表明,所提出的方法的建模能力优于另一种方法。 它可以轻松确定模型参数。 这使得它能够有效和可行,以建立飞机的空气动力学建模。

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