Trajectory control of unmanned aerial vehicle using neural nets with a stable learning algorithm

A. Topalov, N. Shakev, Severina Nikolova, D. Seyzinski, O. Kaynak
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引用次数: 6

Abstract

A neuro-adaptive trajectory control approach for unmanned aerial vehicles is proposed. The aerial robot's altitude and latitude-longitude is controlled by three neuro-adaptive controllers that are used to track the desired altitude, airspeed and roll angle of the vehicle. Each intelligent control module consists of a conventional and a neural network feedback controller. The former is provided both to guarantee global asymptotic stability in compact space and as an inverse reference model of the response of the controlled system. Its output is used as an error signal by a stable on-line learning algorithm to update the parameters of the neurocontroller. In this way the latter is able to eliminate gradually the conventional controller from the control of the system. The proposed learning algorithm makes direct use of the variable structure systems theory and establishes a sliding motion in term of the neurocontroller parameters, leading the learning error toward zero. The performance of the proposed trajectory control scheme is evaluated with time based diagrams under MATLAB's standard configuration and the Aeronautical Simulation Block Set.
基于稳定学习算法的神经网络无人机轨迹控制
提出了一种无人机神经自适应轨迹控制方法。空中机器人的高度和经纬度由三个神经自适应控制器控制,用于跟踪飞行器的期望高度、空速和滚转角。每个智能控制模块由一个常规控制器和一个神经网络反馈控制器组成。前者既能保证系统在紧空间中的全局渐近稳定,又能作为被控系统响应的逆参考模型。它的输出作为误差信号被稳定的在线学习算法用来更新神经控制器的参数。通过这种方式,后者能够逐渐消除传统控制器对系统的控制。该学习算法直接利用变结构系统理论,根据神经控制器参数建立滑动运动,使学习误差趋于零。在MATLAB标准配置和航空仿真块集下,用基于时间的图对所提出的弹道控制方案的性能进行了评估。
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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