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Parameter estimation of aircraft using extreme learning machine and Gauss-Newton algorithm

机译:利用极端学习机和高斯 - 牛顿算法的飞机参数估计

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摘要

The research paper addresses the problem of estimating aerodynamic parameters using a Gauss-Newton-based optimisation method. The process of the optimisation method lies on the principle of minimising the residual error between the measured and simulated responses of the system. Usually, the simulated response is obtained by integrating the dynamic equations of the system, which is found to be susceptible to the initial values, and the integration method. With the advent of the feedforward neural network, the data-driven regression methods have been widely used for identification of the system. Among them, a variant of feedforward neural network, extreme learning machine, which has proven the performance in terms of computational cost, generalisation, and so forth, has been addressed to predict the responses in the present study. The real flight data of longitudinal and lateral-directional motion have been considered to estimate their respective aerodynamic parameters. Furthermore, the estimates have been validated with the values of the classical estimation methods, such as the equation-error and filter-error methods. The sample standard deviations of the estimates demonstrate the effectiveness of the proposed method. Lastly, the proof-of-match exercise has been conducted with the other set of flight data to validate the estimated parameters.
机译:研究论文解决了使用基于Gauss-Newton的优化方法估算空气动力学参数的问题。优化方法的过程在于最小化系统的测量和模拟响应之间的残余误差的原理。通常,通过积分系统的动态方程来获得模拟响应,该动态方程被发现易受初始值和集成方法。随着前馈神经网络的出现,数据驱动的回归方法已被广泛用于识别系统。其中,已经解决了在计算成本,泛化等方面证明了性能的前馈神经网络的变种,以预测本研究中的反应。已经考虑了纵向和横向运动的真实飞行数据来估计它们各自的空气动力学参数。此外,估计已经用经典估计方法的值验证,例如等式误差和滤波器错误方法。估计的样本标准偏差证明了所提出的方法的有效性。最后,已经使用另一组飞行数据进行了匹配验证练习以验证估计的参数。

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