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Prediction of aerodynamic coefficients for wind tunnel data using a genetic algorithm optimized neural network

机译:使用遗传算法优化的神经网络预测风洞数据的空气动力学系数

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A fast, reliable way of predicting aerodynamic coefficients is produced using a neural network optimized by a genetic algorithm. Basic aerodynamic coefficients (e.g. lift, drag, pitching moment) are modelled as functions of angle of attack and Mach number. The neural network is first trained on a relatively rich set of data from wind tunnel tests or numerical simulations to learn an overall model. Most of the aerodynamic parameters can be well-fitted using polynomial functions. A new set of data, which can be relatively sparse, is then supplied to the network to produce a new model consistent with the previous model and the new data. Because the new model interpolates realistically between the sparse test data points, it is suitable for use in piloted simulations. The genetic algorithm is used to choose a neural network architecture to give best results, avoiding over- and under-fitting of the test data.
机译:使用通过遗传算法优化的神经网络,可以快速,可靠地预测空气动力学系数。基本的空气动力学系数(例如升力,阻力,俯仰力矩)被建模为迎角和马赫数的函数。首先在来自风洞测试或数值模拟的相对丰富的数据集上训练神经网络,以学习整体模型。大多数空气动力学参数可以使用多项式函数很好地拟合。然后可以将相对稀疏的一组新数据提供给网络,以产生与先前模型和新数据一致的新模型。由于新模型可以在稀疏测试数据点之间进行逼真的插值,因此适合在先导仿真中使用。遗传算法用于选择神经网络架构以提供最佳结果,从而避免了测试数据的过拟合和过拟合。

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