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Disturbance-Observer-Based Model Predictive Control of Underwater Vehicle Manipulator Systems ?

机译:基于干扰观测器的水下车辆操纵系统的模型预测控制

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This paper presents a disturbance-observer-based Model Predictive Control (MPC) for Underwater-Vehicle Manipulators Systems (UVMSs). First, the nominal MPC is formulated considering the lumped uncertainties representation for unknown terms and external disturbances. Then, a second-order Sliding Mode Disturbance Observer (SMDO) is developed to estimate the lumped disturbances, which are used by the MPC to produce unbiased predictions. The MPC-SMDO is tested through numerical simulations, considering a 5-DoF planar UVMS composed of the classical Twin-Burger autonomous vehicle presented in Ishitsuka et al. (2005) endowed with a 2-link robotic manipulator. To obtain realistic results, sensor noises, the dynamics of thrusters, and the stochasticity of ocean current are considered in the simulations. The results show good performance for the MPC-SMDO in terms of robustness, constraints meeting, and tracking errors minimization compared to two other controllers, based on the Computed Torque Control (CTC) technique and on the Super-Twisting Algorithm (STA).
机译:本文介绍了一种基于扰动观察者的模型预测控制(MPC),用于水下车辆机械手系统(UVMS)。首先,考虑到未知术语和外部干扰的集成不确定性表示,标称MMC制定。然后,开发了二阶滑动模式干扰观察者(SMDO)以估计由MPC使用以产生非偏见的预测的集总干扰。考虑到由Ishitsuka等人提供的经典双汉堡自主车辆组成的5-DOF平面UVMS,通过数值模拟测试MPC-SMDO。 (2005)赋予了一个2连杆机器人操纵器。为了获得现实的结果,在模拟中考虑传感器噪声,推进器的动态和海洋电流的随机性。结果对于鲁棒性,约束会议和跟踪误差基于计算的扭矩控制(CTC)技术以及超扭曲算法(STA)相比,该结果对MPC-SMDO的良好性能最小化。

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