论文标题
基于可变的惯性参数建模
Adaptive Neural Network Backstepping Control Method for Aerial Manipulator Based on Variable Inertia Parameter Modeling
论文作者
论文摘要
对于执行航空工作任务的空中操纵器,它面临的实际操作环境非常复杂,并且受内部和外部多源骚扰的影响。在本文中,提出了基于可变的惯性参数建模的自适应神经网络后替换方法的有效改善空中操纵器的抗扰动控制性能。首先,对于强烈的内部耦合干扰,我们从耦合干扰的发电机理的角度进行分析和建模,并基于可变惯用参数来得出空中操纵器系统的动力学模型和耦合干扰模型。通过提出的耦合干扰模型,我们可以以进料的方式补偿强耦合干扰。然后,提出了自适应神经网络并应用于估计和补偿其他干扰,并且闭环控制器的设计基于后退控制方法。最后,我们通过物理实验在操纵器的大范围运动下验证了提出的耦合干扰模型的正确性。两组比较模拟结果还证明了对拟议的自适应神经网络的准确估计,以进行其他干扰以及所提出的控制方法的有效性和优势。
For the aerial manipulator that performs aerial work tasks, the actual operating environment it faces is very complex, and it is affected by internal and external multi-source disturbances. In this paper, to effectively improve the anti-disturbance control performance of the aerial manipulator, an adaptive neural network backstepping control method based on variable inertia parameter modeling is proposed. Firstly, for the intense internal coupling disturbance, we analyze and model it from the perspective of the generation mechanism of the coupling disturbance, and derive the dynamics model of the aerial manipulator system and the coupling disturbance model based on the variable inertia parameters. Through the proposed coupling disturbance model, we can compensate the strong coupling disturbance in a way of feedforward. Then, the adaptive neural network is proposed and applid to estimate and compensate the additional disturbances, and the closed-loop controller is designed based on the backstepping control method. Finally, we verify the correctness of the proposed coupling disturbance model through physical experiment under a large range motion of the manipulator. Two sets of comparative simulation results also prove the accurate estimation of the proposed adaptive neural network for additional disturbances and the effectiveness and superiority of the proposed control method.