Robotic arm tracking control through smooth switching LPV controller based on LPV modeling and torque approximation

Ali Fazli, Mohammad Hosein Kazemi
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Abstract

Purpose

This paper aims to propose a new linear parameter varying (LPV) controller for the robot tracking control problem. Using the identification of the robot dynamics in different work space points about modeling trajectory based on the least square of error algorithm, an LPV model for the robotic arm is extracted.

Design/methodology/approach

Parameter set mapping based on parameter component analysis results in a reduced polytopic LPV model that reduces the complexity of the implementation. An approximation of the required torque is computed based on the reduced LPV models. The state-feedback gain of each zone is computed by solving some linear matrix inequalities (LMIs) to sufficiently decrease the time derivative of a Lyapunov function. A novel smoothing method is used for the proposed controller to switch properly in the borders of the zones.

Findings

The polytopic set of the resulting gains creates the smooth switching polytopic LPV (SS-LPV) controller which is applied to the trajectory tracking problem of the six-degree-of-freedom PUMA 560 robotic arm. A sufficient condition ensures that the proposed controller stabilizes the polytopic LPV system against the torque estimation error.

Practical implications

Smoothing of the switching LPV controller is performed by defining some tolerances and creating some quasi-zones in the borders of the main zones leading to the compressed main zones. The proposed torque estimation is not a model-based technique; so the model variation and other disturbances cannot destroy the performance of the suggested controller. The proposed control scheme does not have any considerable computational load, because the control gains are obtained offline by solving some LMIs, and the torque computation is done online by a simple polytopic-based equation.

Originality/value

In this paper, a new SS-LPV controller is addressed for the trajectory tracking problem of robotic arms. Robot workspace is zoned into some main zones in such a way that the number of models in each zone is almost equal. Data obtained from the modeling trajectory is used to design the state-feedback control gain.

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基于 LPV 建模和扭矩近似的平滑切换 LPV 控制器实现机械臂跟踪控制
目的 本文旨在针对机器人跟踪控制问题提出一种新的线性参数变化(LPV)控制器。通过基于最小平方误差算法对建模轨迹的不同工作空间点的机器人动力学进行识别,提取出机器人手臂的 LPV 模型。设计/方法/途径基于参数成分分析的参数集映射产生了简化的多拓扑 LPV 模型,从而降低了实现的复杂性。根据缩小的 LPV 模型计算所需扭矩的近似值。通过求解一些线性矩阵不等式(LMI)来充分降低 Lyapunov 函数的时间导数,从而计算出每个区域的状态反馈增益。研究结果所得增益的多拓扑集合创建了平滑切换多拓扑 LPV(SS-LPV)控制器,并将其应用于六自由度 PUMA 560 机械臂的轨迹跟踪问题。一个充分条件确保了所提出的控制器能稳定多点 LPV 系统,使其不受扭矩估计误差的影响。实际意义平滑切换 LPV 控制器是通过定义一些公差,并在主区边界创建一些准区,从而压缩主区来实现的。建议的扭矩估计不是基于模型的技术,因此模型变化和其他干扰不会破坏建议控制器的性能。由于控制增益是通过求解一些 LMI 来离线获得的,而扭矩计算是通过一个简单的基于多 Topic 的方程在线完成的,因此所提出的控制方案没有相当大的计算负荷。机器人工作空间被划分为几个主要区域,每个区域的模型数量几乎相等。从建模轨迹中获得的数据用于设计状态反馈控制增益。
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