非线性非定常气动载荷识别的时滞神经网络Volterra核评估。

N. C. G. de Paula, F. Marques, W. Silva
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引用次数: 16

摘要

在过去的几十年中,使用Volterra级数方法的降阶建模已经成功地应用于弱非线性气动和气动弹性系统。然而,与Volterra级数的卷积积分相关的核的识别方面可以深刻地影响所得到的降阶模型(ROM)的质量。在这项工作中,评估了一种基于人工神经网络的替代方法。探讨了时滞神经网络的Volterra核与内部参数之间的关系,并将其应用于非线性非定常气动载荷的降阶建模。脉冲型volterra ROM也正在考虑进行比较。所有用于构建降阶模型的空气动力学数据都是从使用欧拉方程的NACA 0012翼型的计算流体动力学(CFD)模拟中获得的。在不同的自由流马赫数下,用规定的俯仰和俯冲自由度输入来评价所得模型的适用范围。对于弱非线性测试用例,神经网络Volterra ROM的建模性能与脉冲型ROM相当。然而,只有在Volterra ROM中包含高阶神经网络核,才能获得额外的精度和对更强非线性的充分建模。从时滞神经网络的内部参数中导出了p阶核函数的通用表达式。
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Volterra Kernels Assessment via Time-Delay Neural Networks for Nonlinear Unsteady Aerodynamic Loading Identification.
Reduced-order modeling using the Volterra series approach has been successfully applied in the past decades to weakly nonlinear aerodynamic and aeroelastic systems. However, aspects regarding the identification of the kernels associated with the convolution integrals of Volterra series can profoundly affect the quality of the resulting reduced-order model (ROM). An alternative method for their identification based on artificial neural networks is evaluated in this work. This relation between the Volterra kernels and the internal parameters of a time-delay neural network is explored for the application in the reduced-order modeling of nonlinear unsteady aerodynamic loads. An impulse-type Volterra-based ROM is also under consideration for comparison. All aerodynamic data used for the construction of the reduced-order models are obtained from computational fluid dynamics (CFD) simulations of the NACA 0012 airfoil using the Euler equations. Prescribed inputs in pitch and in plunge degrees of freedom at different free-stream Mach numbers are used to evaluate the range of applicability of the obtained models. For weakly nonlinear test cases, the modeling performance of the neural network Volterra ROM was comparable to the impulse-type ROM. Additional accuracy and adequate modeling of stronger nonlinearities, however, could only be attained with the inclusion of the neural network kernels of higher-order in the Volterra ROM. A generic expression is derived for the kernel function of p th -order from the internal parameters of a time-delay neural network.
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