A Low-cost Neuroadaptive Control Approach for Unmanned Aerial Vehicle under Time-Varying Asymmetric Motion Constraints

Shiguo Yang, Zhirong Zhang, Yaping Ma, Liu He
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Abstract

This paper presents a neuroadaptive tracking control scheme for uncertain Unmanned Aerial Vehicle (UAV) subject to asymmetric yet time-varying (ATV) full-state constraints without involving feasibility conditions. By blending a nonlinear state-dependent transformation into each step of backstepping design, a neural network-based adaptive control scheme is developed, which, as compared with most existing methods, exhibits several attractive features: 1) it is robust and adaptive to parametric/non-parametric uncertainties; 2) it not only directly accommodates ATV motion (position and velocity) constraints but also removes the feasibility conditions on virtual controllers; and 3) it only involves one lumped-parameter adaptation, thus is structurally simpler, computationally less expensive, and easier in implementation. Neural network (NN) unit accounting for system uncertainties is included in the loop during the entire system operational envelope in which the precondition on the NN training inputs is always ensured. The effectiveness of the proposed control strategy for UAV is confirmed by systematic stability analysis and numerical simulation.
时变非对称运动约束下无人机低成本神经自适应控制方法
针对不对称时变(ATV)全状态约束的不确定无人机,提出了一种不涉及可行性条件的神经自适应跟踪控制方案。通过将非线性状态相关变换融合到退步设计的每一步中,提出了一种基于神经网络的自适应控制方案,与大多数现有方法相比,该方案具有以下几个吸引人的特点:1)鲁棒性和对参数/非参数不确定性的自适应;2)既直接适应了ATV运动(位置和速度)约束,又消除了虚拟控制器的可行性条件;3)它只涉及一个集总参数自适应,因此结构更简单,计算成本更低,更容易实现。考虑系统不确定性的神经网络单元在整个系统运行包络期间都包含在环路中,其中神经网络训练输入的前提条件始终得到保证。通过系统稳定性分析和数值仿真验证了所提控制策略的有效性。
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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