柔性机械臂计算转矩控制逆动力学模型的在线多目标学习

Athanasios S. Polydoros, Evangelos Boukas, L. Nalpantidis
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引用次数: 13

摘要

逆动力学模型被应用于大量的机器人控制任务,如计算扭矩控制,这对轨迹执行至关重要。机械臂动力学模型的解析推导具有挑战性,并且取决于其物理特性。本文提出了一种用于逆动力学建模的机器学习方法,并提供了其在物理机器人系统上实现的信息。该算法可以实现在线多目标学习,从而可以有效地在真实机器人上实现。我们的方法已经在离线(从三个不同的机器人系统捕获的数据集)和在线(物理系统)上进行了测试。该算法在泛化能力和收敛性方面表现出最先进的性能。此外,它已在ROS中实现,用于控制百特机器人。评估结果表明,其性能与机器人内置的逆动力学模型相当。
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Online multi-target learning of inverse dynamics models for computed-torque control of compliant manipulators
Inverse dynamics models are applied to a plethora of robot control tasks such as computed-torque control, which are essential for trajectory execution. The analytical derivation of such dynamics models for robotic manipulators can be challenging and depends on their physical characteristics. This paper proposes a machine learning approach for modeling inverse dynamics and provides information about its implementation on a physical robotic system. The proposed algorithm can perform online multi-target learning, thus allowing efficient implementations on real robots. Our approach has been tested both offline, on datasets captured from three different robotic systems and online, on a physical system. The proposed algorithm exhibits state-of-the-art performance in terms of generalization ability and convergence. Furthermore, it has been implemented within ROS for controlling a Baxter robot. Evaluation results show that its performance is comparable to the built-in inverse dynamics model of the robot.
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