具有不确定参数的机械臂无模型自适应预测跟踪控制

Huiying Wu, S. Jin, Chenkun Yin, Jianmin Zheng, Z. Hou
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引用次数: 2

摘要

针对具有不确定参数的机械臂,提出了一种无模型自适应预测跟踪控制方法。采用紧凑形式动态线性化方法将非线性机械臂转化为动态线性化的数据模型。然后,基于机械手数据模型,设计了无模型自适应预测跟踪控制算法。该控制方法不需要精确的系统模型信息,仅利用机械手的输入和输出数据,是一种数据驱动的控制方法。对PUMA560机械手进行了数值仿真,仿真结果验证了所设计算法的有效性。
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Model Free Adaptive Predictive Tracking Control for Robot Manipulators with Uncertain Parameters
In this paper, a model free adaptive predictive tracking control method for the robotic manipulators with uncertain parameters is proposed. The compact form dynamic linearization method is used to transform the nonlinear robotic manipulator into a dynamic linearized data model. Then, the model free adaptive predictive tracking control algorithm is designed based on the robot manipulator data model. The proposed control method does not need accurate system model information, merely uses the input and output data of the robot manipulator which is a data-driven control method. Numerical simulations are carried out for PUMA560 robotic manipulator, and the effectiveness of the designed algorithm is verified by the simulation results.
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