Modeling of longitudinal unsteady aerodynamics at high angle-of-attack based on support vector machines

Yongliang Chen
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引用次数: 7

Abstract

Accurately modeling nonlinear and unsteady aerodynamics at high attitude flight plays an important role in design of future high performance fighters. In the meanwhile, it also can improve the prediction of high angle of attack dynamics of normal aircraft configurations. Support vector machines (SVMs), known as a novel type of learning machines based on statistical learning theory and structural risk minimization (SRM) principle, can be used for handle regression problems. By denoting a set of nonlinear transformations from the complex input space to a high-dimensional feature space, SVMs can approximate the regression function by a linear regression in the feature space. Such implementation is so simple that it can be analyzed mathematically. By employing SVMs, the present work models the unsteady pitching oscillation aerodynamic data of a 1/10 scaled aircraft model. Here, the input data are established from the wind tunnel experiments at different frequencies and amplitudes. To make comparison, the artificial neural networks (ANNs) technique is also used. It turned out that SVMs can overcome the ANNs's inherent drawback of slow training convergence speed. Consequently, SVMs demonstrate high potentials for dealing with the chosen modeling of unsteady aerodynamics.
基于支持向量机的大迎角纵向非定常空气动力学建模
高姿态飞行非线性非定常空气动力学的精确建模对未来高性能战斗机的设计具有重要意义。同时,该方法还可以提高飞机正常构型大攻角动力学的预测精度。支持向量机(svm)是一种基于统计学习理论和结构风险最小化(SRM)原理的新型学习机,可用于处理回归问题。通过表示从复杂输入空间到高维特征空间的一组非线性变换,支持向量机可以通过特征空间的线性回归来近似回归函数。这样的实现非常简单,可以用数学方法进行分析。本文采用支持向量机对1/10飞机模型的非定常俯仰振荡气动数据进行建模。在这里,输入的数据来自不同频率和幅值的风洞实验。为了进行比较,还使用了人工神经网络(ANNs)技术。事实证明,支持向量机可以克服人工神经网络固有的训练收敛速度慢的缺点。因此,支持向量机在处理所选择的非定常空气动力学建模方面显示出很高的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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