无人机纵向动力学的时域系统辨识:灰盒法

M. Jamil, M. Ahsan, M. Ahsan, M. Choudhry
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引用次数: 2

摘要

系统识别对于飞机建模是非常有效的,因为许多飞机的运动不能用分析方法精确地复制。所确定的模型可以代表飞机在所有飞行状态,因此可以用于开发飞行模拟器和自动飞行控制器。针对小型固定翼无人机的时域系统辨识问题,提出了一种独特的三阶段辨识方法。为了识别无人机的纵向动力学特性,进行了专门设计的机动飞行实验。在DATCOM中利用无人机的几何信息建立初始参考模型。在MATLAB系统识别工具箱中对飞行试验记录数据进行处理,应用预测误差法估计灰盒飞机模型。采用自适应高斯牛顿优化算法对模型进行迭代改进。进行了模型验证和误差分析,确定了无人机的气动系数。验证结果表明,所建立的模型可用于自动驾驶仪高度控制器和空速控制器的设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time domain system identification of longitudinal dynamics of a UAV: A grey box approach
System identification is very effective for aircraft modeling because many aircraft motions cannot be duplicated accurately using analytical methods. The identified model can represent an aircraft in all flight regimes and thus can be used for the development of flight simulators and automatic flight controllers. In this research, a unique three stage procedure is presented for time domain system identification of small scale fixed wing UAV. Flight experiment was conducted with specifically designed maneuvers for identification of the UAV's longitudinal dynamics. Initial reference model was developed using UAV's geometrical information in DATCOM. Recorded data, from flight tests, was processed in MATLAB system identification toolbox for estimating grey box aircraft models by applying Prediction Error Method. The model was iteratively improved through Adaptive Gauss Newton optimization. Model validation and error analysis were performed and the UAV's aerodynamic coefficients were determined. Excellent validation results show that the identified model can be used for various applications including the design of altitude and airspeed controllers of autopilot.
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