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Design of model predictive control via learning automata for a single UAV load transportation

机译:通过学习自动机的模型预测控制设计单个无人机装载运输

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In recent years, autonomous aerial robots have been successfully used to perform the construction of structures composed by parts that have similar dimensions and inertial moments. However, these proposed control systems are not able to accurately control the UAVs during the handling and transporting loads with various weights and balance features. In this paper, we investigate a robust and innovative control strategy for UAV load transportation system that can deal with the load characteristics and disturbances such as ground effect and control noise. Taking into account the nonlinear and under-actuated features of the quadrotor, a Learning Automata (LA) methodology is applied to tune the Nonlinear Model Predictive Controllers (NMPCs) in the various contexts of operation. Specifically, it applies LA to select the weighting parameters of the objective function in order to minimize tracking error provided by the plant. Simulation results demonstrate the learned weighting parameters can be efficiently employed to obtain NMPC controllers for tracking optimized trajectories to deal with different load conditions.
机译:近年来,自动空中机器人已成功地用于执行由具有相似尺寸和惯性时刻组成的结构构建。然而,这些所提出的控制系统不能在处理和运输各种权重和平衡特征期间准确地控制无人机。在本文中,我们调查了可实现无人机负荷运输系统的强大和创新控制策略,可以处理负荷特性和诸如地面效果和控制噪声的扰动。考虑到四轮压力机的非线性和致动特征,应用了一种学习自动机(LA)方法来调整非线性模型预测控制器(NMPC)在各种操作上下文中。具体地,它应用LA以选择目标函数的加权参数,以便最小化工厂提供的跟踪误差。仿真结果证明了学习的加权参数可以有效地用于获得NMPC控制器,用于跟踪优化的轨迹以处理不同的负载条件。

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