一种改进的基于对偶四元数的人-机器人协作系统避障运动原语公式

Freddy Liendo, Alessandro Bozzi, Camilo Hernández, C. Galez, R. Sacile, José Jiménez
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引用次数: 0

摘要

在人机协作(HRC)作为系统中的系统(so)的背景下,运动规划和学习是一个非常重要的子系统。动态运动原语(DMP)是一种学习复杂行为并将其表示为稳定的、易于理解的动态系统的优雅而有效的方法。当考虑机器人末端执行器在笛卡尔空间中的行为进行任务编码时,通常的解决方案是使用不同但相耦合的DMP公式将姿态分别表示为位置和姿态并进行编码;导致数学和算法效率低下。对偶四元数是一种能够在统一变量中表示姿态的数学工具。鉴于其数学灵活性、效率和鲁棒性,文献显示了这种刚体运动学表示的兴趣。本文提出了基于螺旋理论的双四元数动态运动基元的现有公式。然后,我们扩展了我们提出的改进公式,该公式将避障视为在人机协作作为系统的系统的背景下对意识和智能层的贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Dual Quaternion-based Dynamic Movement Primitives Formulation for Obstacle Avoidance Kinematics in Human- Robot Collaboration System of Systems
In the context of Human-Robot Collaboration (HRC) as System of Systems (SoS), motion planning and learning are a highly important subsystem. Dynamic Movement Primitives (DMP) are an elegant and efficient method for learning complex behaviours and representing them as stable, well understood dynamical systems. When applied for encoding a task by considering the behaviour of the end-effector of a robotic manipulator in Cartesian space, the common solution is to represent and to encode the pose separately as position and orientation using different but phase-coupled DMP formulations; resulting mathematically and algorithmically inefficient. Dual Quaternions are a mathematical tool capable of representing pose in a unified variable. Literature shows the interest of such a representation for rigid body kinematics, given its mathematical flexibility, efficiency and robustness. This article presents an existing formulation for Dual Quaternion Dynamic Movement Primitives based on screw theory. Then, we expand on our proposed improved formulation which considers obstacle avoidance as a contribution for the layer of Awareness and Intelligence in the context of Human-Robot Collaboration as a System of Systems.
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