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Application of neural networks based method for estimation of aerodynamic derivatives

机译:基于神经网络的气动导数估计方法的应用

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A Feed Forward Neural Networks (FFNNs) based modified delta (MD) method is recommended for estimating aerodynamic derivatives of an aero-elastic aircraft. The FFNNs is trained using differential variation of aircraft motion and control variables and coefficients, as the network inputs and outputs respectively. The FFNNs training is carried out using Lavenberg-Marquardt Back Propagation algorithm. The trained neural network is then presented with a suitably modified input file and the corresponding predicted output file of aerodynamic coefficients is obtained. An appropriate interpretation and manipulation of such input-output files yields the estimates of the aerodynamic derivatives. The method is applied on the simulated flight data of two configurations of an aero-elastic aircraft for the parameter estimation. The FFNN based technique is also applied to validate the estimated aerodynamic derivatives. The results suggest that the FFNN based MD method can advantageous be used for estimation of the aero-elastic aircraft derivatives.
机译:建议使用基于前馈神经网络(FFNN)的改进的增量(MD)方法估算航空弹性飞机的空气动力学导数。使用飞机运动的微分变化以及控制变量和系数分别作为网络的输入和输出来训练FFNN。使用Lavenberg-Marquardt反向传播算法进行FFNN训练。然后为训练后的神经网络提供经过适当修改的输入文件,并获得相应的空气动力学系数预测输出文件。对此类输入输出文件进行适当的解释和处理,即可得出空气动力学导数的估计值。该方法应用于航空弹性飞机的两种配置的模拟飞行数据以进行参数估计。基于FFNN的技术也可用于验证估计的空气动力学导数。结果表明,基于FFNN的MD方法可以有利地用于估算航空弹性飞机的导数。

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