复杂对象操作的动态原语与最优反馈控制

Reza Sharif Razavian, Salah Bazzi, Rashida Nayeem, Mohsen Sadeghi, D. Sternad
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引用次数: 4

摘要

现代计算机算法在国际象棋或围棋比赛中轻松击败世界冠军,但在操纵棋子方面,最先进的机器人仍然不如两岁大的孩子,更不用说与更复杂的物体互动了。这项工作研究了人类在移动一个欠驱动物体时的行为,一个杯子里有一个滚动的球,产生了像杯子里晃动的咖啡一样的内部动力学。目标是开发一种可以复制人类行为的控制模型。在有和没有外部扰动的情况下,收集人体运动数据来运输这个杯球系统。为了完成这一具有挑战性的任务,我们重新审视了人类控制文献中的现有模型,包括最大平滑度、最小努力的最优反馈控制和带阻抗的动态原语。由于这些控制模型主要是为无约束的到达运动而开发的,因此它们可以在搬运刚性物体时复制人类的轨迹。然而,当物体由于其内部动力学而引入复杂的相互作用力时,它们就不足了。因此,本研究扩展了动态原语的框架,并使用最优控制器为阻抗算子在与物体或环境的扰动相互作用时生成最光滑的零力轨迹。考虑到机器人控制在与复杂物体交互时仍然面临的挑战,这些发现可能会为机器人操作的仿生控制器的开发提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Primitives and Optimal Feedback Control for the Manipulation of Complex Objects
Modern computer algorithms easily beat world champions in chess or Go, but state-of-the-art robots are still outperformed by two-year-old’s in manipulating the pieces, let alone interacting with more complex objects. This work studied human behavior when moving an underactuated object, a cup with a ball rolling inside creating internal dynamics like sloshing coffee in a cup. The objective was to develop a control model that could replicate human behavior. Human movement data were collected for transporting this cup-and-ball system, both with and without external perturbations. The existing models in the human control literature, including maximum smoothness, optimal feedback control with minimum effort, and dynamic primitives with impedance were revisited for this challenging task. As these control models were primarily developed for unconstrained reaching movements, they could replicate human trajectories when transporting a rigid object. However, they fell short when the object introduced complex interaction forces due to its internal dynamics. Therefore, this study extended the framework of dynamic primitives and used an optimal controller to generate a maximally smooth zero-force trajectory for the impedance operator when interacting with perturbations from the object or the environment. Given the challenges that robot control still faces when interacting with complex objects, these findings may inform the development of bio-inspired controllers for robotic manipulation.
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