Robust Control Architecture for Wind Rejection in Quadrotors

J. Verberne, H. Moncayo
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引用次数: 4

Abstract

Current efforts at the Advanced Dynamics and Control Laboratory (ADCL) at Embry-Riddle Aeronautical University (ERAU) are focusing on the implementation of robust control laws for disturbance rejection in quadrotors. This paper describes the development of two types of control architectures in an effort to reject or minimize wind effects in quadrotor UAVs. The design of a novel extension of the classic Non-Linear Dynamic Inversion (NLDI) control architecture for wind disturbance rejection is presented. This is followed by the application of adaptive artificial neural networks (ANN) to augment the classic NLDI control law designed to correct inversion errors caused by wind disturbance. Models are presented along with a simulation environment for various wind generated forces and moments. Monte Carlo numerical simulations are performed to analyze the performance of the classic NLDI, extended NLDI and NLDI with ANN augmentation under wind conditions. Results show that the NLDI with ANN augmentation outperforms the classic and extended NLDI controllers.
四旋翼飞行器抗风鲁棒控制体系
目前,Embry-Riddle航空大学(ERAU)的高级动力学和控制实验室(ADCL)的工作重点是实现四旋翼飞行器抗干扰的鲁棒控制律。本文描述了两种类型的控制体系结构的发展,以努力拒绝或最小化风对四旋翼无人机的影响。提出了一种对经典的非线性动态反演(NLDI)控制体系结构进行扩展的抗风控制设计。随后,应用自适应人工神经网络(ANN)来增强经典的NLDI控制律,以纠正风扰动引起的反演误差。模型连同各种风产生的力和力矩的仿真环境一起提出。通过蒙特卡罗数值模拟,分析了经典NLDI、扩展NLDI和人工神经网络增强NLDI在风条件下的性能。结果表明,经人工神经网络增强的NLDI控制器优于经典的和扩展的NLDI控制器。
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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