具有记忆的反应性预期机器人技能

Hakan Girgin, Julius Jankowski, S. Calinon
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引用次数: 1

摘要

近年来,机器人技术中的最优控制日益受到人们的关注,并已应用于许多涉及复杂动态系统的应用中。闭环最优控制策略包括模型预测控制(MPC)和通过iLQR优化的时变线性控制器。然而,这种反馈控制器依赖于当前状态的信息,限制了机器人应用的范围,因为机器人需要记住之前做过的事情来采取相应的行动和计划。最近提出的系统级综合(SLS)框架通过更丰富的带有存储器的控制器结构规避了这一限制。在这项工作中,我们提出通过将SLS扩展到涉及非线性系统和非二次成本函数的跟踪问题,来优化设计具有记忆的反应性预期机器人技能。我们通过两个场景展示了我们的方法,利用7轴Franka Emika机器人在模拟和真实环境中的拾取和放置任务中的任务精度和对象可视性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reactive Anticipatory Robot Skills with Memory
Optimal control in robotics has been increasingly popular in recent years and has been applied in many applications involving complex dynamical systems. Closed-loop optimal control strategies include model predictive control (MPC) and time-varying linear controllers optimized through iLQR. However, such feedback controllers rely on the information of the current state, limiting the range of robotic applications where the robot needs to remember what it has done before to act and plan accordingly. The recently proposed system level synthesis (SLS) framework circumvents this limitation via a richer controller structure with memory. In this work, we propose to optimally design reactive anticipatory robot skills with memory by extending SLS to tracking problems involving nonlinear systems and nonquadratic cost functions. We showcase our method with two scenarios exploiting task precisions and object affordances in pick-and-place tasks in a simulated and a real environment with a 7-axis Franka Emika robot.
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