Learning periodic skills for robotic manipulation: Insights on orientation and impedance

IF 4.3 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Robotics and Autonomous Systems Pub Date : 2024-07-26 DOI:10.1016/j.robot.2024.104763
Fares Abu-Dakka , Matteo Saveriano , Luka Peternel
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Abstract

Many daily tasks exhibit a periodic nature, necessitating that robots possess the ability to execute them either alone or in collaboration with humans. A widely used approach to encode and learn such periodic patterns from human demonstrations is through periodic Dynamic Movement Primitives (DMPs). Periodic DMPs encode cyclic data independently across multiple dimensions of multi-degree of freedom systems. This method is effective for simple data, like Cartesian or joint position trajectories. However, it cannot account for various geometric constraints imposed by more complex data, such as orientation and stiffness. To bridge this gap, we propose a novel periodic DMP formulation that enables the encoding of periodic orientation trajectories and varying stiffness matrices while considering their geometric constraints. Our geometry-aware approach exploits the properties of the Riemannian manifold and Lie group to directly encode such periodic data while respecting its inherent geometric constraints. We initially employed simulation to validate the technical aspects of the proposed method thoroughly. Subsequently, we conducted experiments with two different real-world robots performing daily tasks involving periodic changes in orientation and/or stiffness, i.e., operating a drilling machine using a rotary handle and facilitating collaborative human–robot sawing.

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学习机器人操作的周期性技能:对方向和阻抗的见解
许多日常任务都具有周期性,因此机器人必须具备单独或与人类合作执行这些任务的能力。从人类演示中编码和学习这种周期性模式的一种广泛应用的方法是周期性动态运动原语(DMP)。周期性 DMPs 可在多自由度系统的多个维度上对循环数据进行独立编码。这种方法对简单数据(如笛卡尔轨迹或联合位置轨迹)很有效。然而,它无法解释更复杂的数据(如方向和刚度)所带来的各种几何约束。为了弥补这一缺陷,我们提出了一种新颖的周期性 DMP 方案,它能对周期性方向轨迹和变化的刚度矩阵进行编码,同时考虑到它们的几何约束。我们的几何感知方法利用了黎曼流形和李群的特性,在尊重其固有几何约束的同时,直接对这些周期性数据进行编码。我们最初采用了仿真技术,对所提方法的技术方面进行了全面验证。随后,我们用两个不同的真实世界机器人进行了实验,它们在执行涉及方向和/或刚度周期性变化的日常任务时,即使用旋转手柄操作钻孔机和促进人机协作锯切。
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来源期刊
Robotics and Autonomous Systems
Robotics and Autonomous Systems 工程技术-机器人学
CiteScore
9.00
自引率
7.00%
发文量
164
审稿时长
4.5 months
期刊介绍: Robotics and Autonomous Systems will carry articles describing fundamental developments in the field of robotics, with special emphasis on autonomous systems. An important goal of this journal is to extend the state of the art in both symbolic and sensory based robot control and learning in the context of autonomous systems. Robotics and Autonomous Systems will carry articles on the theoretical, computational and experimental aspects of autonomous systems, or modules of such systems.
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