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Onboard System Identification for Improved Flight Control of UAS

机译:机载系统识别,以改善无人机系统的飞行控制

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摘要

A new technique is proposed to select and estimate the significant aerodynamic parameters of micro unmanned aerial systems from ight data to improve the dynamical qualities of an indirect adaptive ight control system. The aerodynamic variables are estimated in the frequency domain using the angle of attack and sideslip air-ow angles which in turn are estimated using an extended Kalman filter. Parameter estimation and selection procedures of significant aerodynamic parameters are based on linear regression model structures with forward orthogonal least square (OLS) and error reduction ratio (ERR) methods. When combined, the methods can be applied to create an indirect adaptive ight control system. This new approach is verified by comparing the results with those obtained from conventional sensor data, including air ow angle measurements. Performance comparison of the system identification methods show that the proposed technique can obtain the same quality of ight performance as if the airow measurements were available. The new methods are demonstrated in simulation of a benchmark ight performance experiment on an Aerosonde UAV.
机译:提出了一种新的技术,可以从飞行数据中选择和估计微型无人机系统的重要空气动力学参数,以提高间接自适应飞行控制系统的动力学质量。使用迎角和侧滑空气流角在频域中估算空气动力学变量,然后使用扩展卡尔曼滤波器估算。重要的空气动力学参数的参数估计和选择程序基于具有正向正交最小二乘(OLS)和误差减少率(ERR)方法的线性回归模型结构。当结合使用时,这些方法可以用于创建间接自适应权控制系统。通过将结果与从常规传感器数据(包括气流角测量)获得的结果进行比较,从而验证了这种新方法。系统识别方法的性能比较表明,所提出的技术可以获得与空中测量相同的飞行性能。这些新方法在Aerosonde无人机的基准飞行性能实验仿真中得到了证明。

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