基于学习滑移模型和轨迹自适应的主动滑移控制

Kiyanoush Nazari, Willow Mandil, E. AmirGhalamzan
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引用次数: 6

摘要

提出了一种新的控制方法来处理机器人操纵运动中的物体滑移问题。滑移是许多机器人抓取和操作任务失败的主要原因。现有工程增加抓地力,以避免/控制打滑。然而,当(i)机器人不能增加夹持力——最大夹持力已经施加,或者(ii)增加的力损坏了被抓取的物体,比如软水果时,这可能是不可行的。此外,机器人在物体表面形成稳定抓握时固定了抓握力,在实时操作过程中改变抓握力可能不是有效的控制策略。我们提出了一种新的防滑控制方法,包括一个学习的动作条件滑移预测器和一个约束优化器,以避免给定期望机器人动作的预测滑移。通过一系列实际机器人测试案例,验证了该方法的有效性。实验结果表明,所提出的数据驱动预测控制器可以有效地控制训练中未见对象的滑移。
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Proactive slip control by learned slip model and trajectory adaptation
This paper presents a novel control approach to dealing with object slip during robotic manipulative movements. Slip is a major cause of failure in many robotic grasping and manipulation tasks. Existing works increase grip force to avoid/control slip. However, this may not be feasible when (i) the robot cannot increase the gripping force -- the max gripping force is already applied or (ii) increased force damages the grasped object, such as soft fruit. Moreover, the robot fixes the gripping force when it forms a stable grasp on the surface of an object, and changing the gripping force during real-time manipulation may not be an effective control policy. We propose a novel control approach to slip avoidance including a learned action-conditioned slip predictor and a constrained optimiser avoiding a predicted slip given a desired robot action. We show the effectiveness of the proposed trajectory adaptation method with receding horizon controller with a series of real-robot test cases. Our experimental results show our proposed data-driven predictive controller can control slip for objects unseen in training.
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