Control of Flexible Manipulator Robots Based on Dynamic Confined Space of Velocities: Dynamic Programming Approach

C. P. Peña Fernández
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引用次数: 3

Abstract

Linear Parameter Varying models-based Model Predictive Control (LPV-MPC) has stood out in manipulator robots because it presents well-rejection to dynamic uncertainties in flexible joints. However, it has become too weak when the MPC's optimization problem does not include kinematic constraints-based conditions. This paper uses dynamic confined space of velocities (DCSV) to include these conditions as a recursive polytopic constraint, guaranteeing optimal dependency on a simplex scheduling parameter. To this end, the local frame's velocities and torque/force preload of joints (related to violation of kinematic constraints) are associated with different time scale dynamics such that DCSV correlates them as a polytope. So, a classical LPV-MPC will be updated using a dynamic programming approach according to the DCSV-based polytope. As a result, one lemma about DCSV-based recursive polytope and a five-step procedure for two decoupled close-loop schemes with different time scales compose the LPV-MPC proposed method. Numerical validation shows that even for relevant flexibility situations, trajectory tracking performance is improved by tuning finite horizons and optimization problem constraints regarding DCSV's behavior.
基于动态速度受限空间的柔性机械臂控制:动态规划方法
基于线性参数变化模型的模型预测控制(LPV-MPC)因其对柔性关节的动态不确定性具有良好的抑制能力而在机械臂机器人中脱颖而出。然而,当MPC的优化问题不包含基于运动约束的条件时,它就变得太弱了。本文利用动态速度受限空间(DCSV)将这些条件作为递归多边形约束,保证了对单纯形调度参数的最优依赖。为此,局部框架的速度和关节的扭矩/力预载荷(与运动学约束的违反有关)与不同的时间尺度动力学相关联,以便dccsv将它们关联为多面体。因此,经典的LPV-MPC将根据基于dcsv的多面体使用动态规划方法进行更新。结果表明,LPV-MPC方法由一个基于dcsv的递归多面体引理和两种不同时间尺度的解耦闭环方案的五步法组成。数值验证表明,即使在相关的柔性情况下,通过调整有限视界和优化DCSV行为的问题约束,也可以提高轨迹跟踪性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
6.30
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